1. Introduction
We consider anisotropic mean curvature flow, a geometric evolution equation used to model microstructure in complex materials. The prototypical application is in multiphase grain growth for polycrystals. As noted in [Reference Garcke, Nestler and Stoth28], isotropic models, such as mean curvature flow, fail to capture phenomenological features such as the dendritic growth of phases (see also [Reference Chen15]). In chemical kinetics, phase separation experiences anisotropy due to the underlying lattice orientation of the solid host material [Reference Bazant5]. Similarly, many materials even display anisotropic surface tensions which are not smooth with respect to the interface orientation (see also [Reference Angenent and Gurtin3, Reference Taylor53, Reference Taylor, Cahn and Handwerker54]): here, one can even consider the household setting of salt (NaCl) and air. At the same time, the study of interface evolutions poses serious numerical and mathematical challenges and a large amount of insight has been gained by modeling such systems in terms of phase-field models, where one replaces interfaces by continuous order parameters (see, e.g., [Reference Chen15]).
In this paper, we prove convergence of solutions of the anisotropic scalar Allen–Cahn equation, a phase-field model, to anisotropic mean curvature flow using variational methods. This may be considered as a first step to proving convergence in the physically relevant vectorial setting. Our approach generally sheds light onto anisotropic mean curvature flow and further enables us to prove a weak–strong uniqueness result for the interface evolution.
 Anisotropic mean curvature flow prescribes the evolution of an oriented hypersurface with the surface velocity determined by a weighted mean curvature. Fixing a surface tension 
 $\sigma \;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 and a mobility
$\sigma \;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 and a mobility 
 $\mu \;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 (where one can think of extending from the sphere by one-homogeneity), we say that a time-parametrized collection of sets
$\mu \;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 (where one can think of extending from the sphere by one-homogeneity), we say that a time-parametrized collection of sets 
 $\{A(t)\}_{t\in [0,T]}$
 evolves by anisotropic mean curvature flow if the boundary
$\{A(t)\}_{t\in [0,T]}$
 evolves by anisotropic mean curvature flow if the boundary 
 $\Gamma (t)\;:\!=\; \partial A(t)$
 is smooth and satisfies
$\Gamma (t)\;:\!=\; \partial A(t)$
 is smooth and satisfies
 \begin{equation} V = -\mu (\nu )H_{\sigma } \qquad \text{on } \bigcup _{t \in [0,T]}\left (\Gamma (t)\times \{t\}\right ), \end{equation}
\begin{equation} V = -\mu (\nu )H_{\sigma } \qquad \text{on } \bigcup _{t \in [0,T]}\left (\Gamma (t)\times \{t\}\right ), \end{equation}
where 
 $\nu$
 is the outer unit normal of
$\nu$
 is the outer unit normal of 
 $A$
,
$A$
, 
 $V$
 is the surface normal velocity, and
$V$
 is the surface normal velocity, and 
 $H_{\sigma }\;:\!=\; \mathrm{div}_{\Gamma (t)}(D\sigma (\nu ))$
 is the anisotropic mean curvature with respect to
$H_{\sigma }\;:\!=\; \mathrm{div}_{\Gamma (t)}(D\sigma (\nu ))$
 is the anisotropic mean curvature with respect to 
 $\sigma$
. We note that
$\sigma$
. We note that 
 $D\sigma (\nu )$
 is typically referred to as the Cahn–Hoffman vector field, a generalization of the surface normal. In the case that
$D\sigma (\nu )$
 is typically referred to as the Cahn–Hoffman vector field, a generalization of the surface normal. In the case that 
 $\sigma = \mu = |\cdot |$
 are given by the Euclidean norm, one recovers the usual (isotropic) mean curvature flow
$\sigma = \mu = |\cdot |$
 are given by the Euclidean norm, one recovers the usual (isotropic) mean curvature flow 
 $V=-H$
.
$V=-H$
.
 Following the approach of Luckhaus and Sturzenhecker [Reference Luckhaus and Sturzenhecker47], one way to encode the motion (1.1) is through the characteristic functions 
 $\chi (t) \;:\!=\; \chi _{A(t)}$
. Here
$\chi (t) \;:\!=\; \chi _{A(t)}$
. Here 
 $A(t)$
 are naturally given by sets of finite perimeter instead of smooth open sets, allowing for distributional (or
$A(t)$
 are naturally given by sets of finite perimeter instead of smooth open sets, allowing for distributional (or 
 $BV$
) weak solutions to (1.1). In the isotropic setting, solutions were derived via a minimizing movements scheme (see also [Reference Almgren, Taylor and Wang1]) for the perimeter functional. This was a natural approach as mean curvature flow can formally be viewed as the gradient flow of the perimeter functional with an appropriate metric [Reference Hensel and Laux36, Reference Serfaty51].
$BV$
) weak solutions to (1.1). In the isotropic setting, solutions were derived via a minimizing movements scheme (see also [Reference Almgren, Taylor and Wang1]) for the perimeter functional. This was a natural approach as mean curvature flow can formally be viewed as the gradient flow of the perimeter functional with an appropriate metric [Reference Hensel and Laux36, Reference Serfaty51].
 To carry this analogy to our setting, the curvature flow (1.1) seeks to minimize an anisotropic surface energy 
 $E\;:\; L_{\mathrm{loc}}^{2}(\Omega )\to [0,\infty ]$
 defined by
$E\;:\; L_{\mathrm{loc}}^{2}(\Omega )\to [0,\infty ]$
 defined by
 \begin{equation} E[u]\;:\!=\;\begin{cases}{c_{0}}\int _{\Omega }\sigma (\nu ){\big |\nabla \chi \big |} &\text{if }u =\chi \in BV_{\mathrm{loc}}(\Omega ;\;\{0,1\}),\\[5pt] \infty &\text{otherwise.} \end{cases} \end{equation}
\begin{equation} E[u]\;:\!=\;\begin{cases}{c_{0}}\int _{\Omega }\sigma (\nu ){\big |\nabla \chi \big |} &\text{if }u =\chi \in BV_{\mathrm{loc}}(\Omega ;\;\{0,1\}),\\[5pt] \infty &\text{otherwise.} \end{cases} \end{equation}
Here, 
 $\nu =-\frac{\nabla \chi }{|\nabla \chi |}$
 is the measure-theoretic outer unit normal, and
$\nu =-\frac{\nabla \chi }{|\nabla \chi |}$
 is the measure-theoretic outer unit normal, and 
 $c_{0}$
 is a positive constant quantifying surface energy. Formally speaking (see Subsection 2.2), anisotropic mean curvature flow is a gradient flow of the anisotropic perimeter
$c_{0}$
 is a positive constant quantifying surface energy. Formally speaking (see Subsection 2.2), anisotropic mean curvature flow is a gradient flow of the anisotropic perimeter 
 $E$
 with respect to the weighted
$E$
 with respect to the weighted 
 $L^2$
-surface metric
$L^2$
-surface metric
 \begin{equation} \left (V,W\right )_{\Gamma }\;:\!=\;{c_{0}}\int _{\Gamma }\frac{1}{\mu (\nu )}V W d{\mathcal{H}^{d-1}}. \end{equation}
\begin{equation} \left (V,W\right )_{\Gamma }\;:\!=\;{c_{0}}\int _{\Gamma }\frac{1}{\mu (\nu )}V W d{\mathcal{H}^{d-1}}. \end{equation}
 To construct solutions of interface evolutions, such as (1.1), one can approximate via diffuse-interface models. The idea is that the sharp interface 
 $\Gamma (t)$
, which captures a jump discontinuity of
$\Gamma (t)$
, which captures a jump discontinuity of 
 $u =\chi$
, is replaced by a diffuse interface
$u =\chi$
, is replaced by a diffuse interface 
 $u_{\varepsilon }$
 forming a continuous transition between values close to
$u_{\varepsilon }$
 forming a continuous transition between values close to 
 $1$
 and values close to
$1$
 and values close to 
 $0$
. Diffuse-interface or phase-field models are often used in practice and especially for numerics, where tracking of the interface is reduced to a reaction-diffusion equation. Herein, we consider a phase-field approximation of the curvature flow (1.1) given by the anisotropic Allen–Cahn equation
$0$
. Diffuse-interface or phase-field models are often used in practice and especially for numerics, where tracking of the interface is reduced to a reaction-diffusion equation. Herein, we consider a phase-field approximation of the curvature flow (1.1) given by the anisotropic Allen–Cahn equation
 \begin{equation} \left . \begin{aligned} 2g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }&=-\mathrm{div}\left (D f(\!-\!\nabla u_{\varepsilon })\right )-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })& \qquad \text{in } \Omega \times (0,T),\\[5pt] u_{\varepsilon }(\cdot, 0)&=u_{\varepsilon,0}&\qquad \text{in } \Omega, \end{aligned} \right . \end{equation}
\begin{equation} \left . \begin{aligned} 2g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }&=-\mathrm{div}\left (D f(\!-\!\nabla u_{\varepsilon })\right )-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })& \qquad \text{in } \Omega \times (0,T),\\[5pt] u_{\varepsilon }(\cdot, 0)&=u_{\varepsilon,0}&\qquad \text{in } \Omega, \end{aligned} \right . \end{equation}
where 
 $\Omega$
 is the
$\Omega$
 is the 
 $d$
-dimensional torus, the function
$d$
-dimensional torus, the function 
 $W\;:\;{\mathbb{R}} \to{\mathbb{R}}_{\geq 0}$
 is a double-well potential with its wells at
$W\;:\;{\mathbb{R}} \to{\mathbb{R}}_{\geq 0}$
 is a double-well potential with its wells at 
 $0$
 and
$0$
 and 
 $1$
, and the anisotropic surface tension and mobility are encoded by the functions
$1$
, and the anisotropic surface tension and mobility are encoded by the functions
 \begin{equation} f\;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}, \qquad f(p)=\sigma ^{2}(p) \end{equation}
\begin{equation} f\;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}, \qquad f(p)=\sigma ^{2}(p) \end{equation}
and
 \begin{equation} g\;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\gt 0}, \qquad g(p)=\frac{\sigma (p)+1}{\mu (p)+1}. \end{equation}
\begin{equation} g\;:\; {\mathbb{R}}^{d}\to{\mathbb{R}}_{\gt 0}, \qquad g(p)=\frac{\sigma (p)+1}{\mu (p)+1}. \end{equation}
For the isotropic case 
 $\sigma = \mu = |\cdot |$
, we simply obtain
$\sigma = \mu = |\cdot |$
, we simply obtain 
 $f=|\cdot |^{2}$
 and
$f=|\cdot |^{2}$
 and 
 $g \equiv 1$
.
$g \equiv 1$
.
 In contrast to the approach taken in [Reference Elliott and Schätzle21], we have introduced a regularization (1.6) of the mobility 
 $\mu$
 allowing us to take advantage of the gradient flow structure for the anisotropic Allen–Cahn equation. We define the anisotropic Cahn–Hilliard energy
$\mu$
 allowing us to take advantage of the gradient flow structure for the anisotropic Allen–Cahn equation. We define the anisotropic Cahn–Hilliard energy 
 $E_{\varepsilon }\;:\; L^{2}(\Omega )\to [0,\infty ]$
 by
$E_{\varepsilon }\;:\; L^{2}(\Omega )\to [0,\infty ]$
 by
 \begin{equation} E_{\varepsilon }[u]\;:\!=\;\begin{cases} \frac{1}{2}\int _{\Omega }\left (\varepsilon f(\!-\!\nabla u)+\frac{1}{\varepsilon }W(u)\right )dx& \text{if } u \in H^{1}(\Omega ) \text{ and }W \circ u \in L^{1}(\Omega ),\\[5pt] \infty & \text{otherwise}, \end{cases} \end{equation}
\begin{equation} E_{\varepsilon }[u]\;:\!=\;\begin{cases} \frac{1}{2}\int _{\Omega }\left (\varepsilon f(\!-\!\nabla u)+\frac{1}{\varepsilon }W(u)\right )dx& \text{if } u \in H^{1}(\Omega ) \text{ and }W \circ u \in L^{1}(\Omega ),\\[5pt] \infty & \text{otherwise}, \end{cases} \end{equation}
and introduce a weighted 
 $L^{2}$
-metric given by
$L^{2}$
-metric given by
 \begin{equation} (v,w)_{u}\;:\!=\;\int _{\Omega }\varepsilon g(\!-\!\nabla u)vwdx \end{equation}
\begin{equation} (v,w)_{u}\;:\!=\;\int _{\Omega }\varepsilon g(\!-\!\nabla u)vwdx \end{equation}
for a given point 
 $u\in \mathrm{dom}(E_{\varepsilon })$
. Note that we omit the dependence on
$u\in \mathrm{dom}(E_{\varepsilon })$
. Note that we omit the dependence on 
 $\varepsilon$
 in the notation
$\varepsilon$
 in the notation 
 $(\cdot,\cdot )_{u}$
 for convenience. A formal calculation shows that the Allen–Cahn equation (1.4) is equivalent to
$(\cdot,\cdot )_{u}$
 for convenience. A formal calculation shows that the Allen–Cahn equation (1.4) is equivalent to
 \begin{equation*} \partial _{t}u_{\varepsilon }(t) = -\nabla _{u_{\varepsilon }(t)}E_{\varepsilon }[u_{\varepsilon }(t)], \qquad t\in [0,T], \end{equation*}
\begin{equation*} \partial _{t}u_{\varepsilon }(t) = -\nabla _{u_{\varepsilon }(t)}E_{\varepsilon }[u_{\varepsilon }(t)], \qquad t\in [0,T], \end{equation*}
where 
 $\nabla _{u_{\varepsilon }(t)}$
 is the gradient on
$\nabla _{u_{\varepsilon }(t)}$
 is the gradient on 
 $\left (L^{2}(\Omega ), (\cdot,\cdot )_{u_{\varepsilon }(t)}\right )$
. The above equation encapsulates (1.4) as a gradient flow, and this structure will be exploited for the construction of solutions to (1.4) in Section 3 as well as for the sharp-interface limit in Section 4.
$\left (L^{2}(\Omega ), (\cdot,\cdot )_{u_{\varepsilon }(t)}\right )$
. The above equation encapsulates (1.4) as a gradient flow, and this structure will be exploited for the construction of solutions to (1.4) in Section 3 as well as for the sharp-interface limit in Section 4.
 A first indication that (1.4) approximates (1.1) is the 
 $\Gamma$
-convergence of the associated energies (see [Reference Braides10, Reference Maso19]). With
$\Gamma$
-convergence of the associated energies (see [Reference Braides10, Reference Maso19]). With
 \begin{equation} c_{0}\;:\!=\;\int _{0}^{1}\sqrt{W(s)}ds, \end{equation}
\begin{equation} c_{0}\;:\!=\;\int _{0}^{1}\sqrt{W(s)}ds, \end{equation}
it was shown by Bouchitté [Reference Bouchitté9] that 
 $E_{\varepsilon }\overset{\Gamma }{\longrightarrow }E$
 as
$E_{\varepsilon }\overset{\Gamma }{\longrightarrow }E$
 as 
 $\varepsilon \searrow 0$
 with respect to the strong
$\varepsilon \searrow 0$
 with respect to the strong 
 $L^{1}$
-topology on the underlying space. Likewise in the spirit of Luckhaus and Modica [Reference Luckhaus and Modica46], Cicalese et al. [Reference Cicalese, Nagase and Pisante18] verified an anisotropic Gibbs–Thomson relation for the energies connecting the first variation of (1.7) to the limiting minimal surface’s anisotropic curvature.
$L^{1}$
-topology on the underlying space. Likewise in the spirit of Luckhaus and Modica [Reference Luckhaus and Modica46], Cicalese et al. [Reference Cicalese, Nagase and Pisante18] verified an anisotropic Gibbs–Thomson relation for the energies connecting the first variation of (1.7) to the limiting minimal surface’s anisotropic curvature.
 Early results on anisotropic mean curvature flow in the special case 
 $\mu =\sigma$
 are due to Chen, Giga, and Goto [Reference Chen, Giga and Goto17], who proved the existence and uniqueness of viscosity solutions (up to fattening) for smooth surface tensions
$\mu =\sigma$
 are due to Chen, Giga, and Goto [Reference Chen, Giga and Goto17], who proved the existence and uniqueness of viscosity solutions (up to fattening) for smooth surface tensions 
 $\sigma$
. Almgren, Taylor, and Wang [Reference Almgren, Taylor and Wang1] introduced a time discretization in the form of a minimizing movements scheme including crystalline surface tensions, yielding the so-called flat-flow solutions for anisotropic mean curvature flow. They also proved a short-time existence result for strong solutions if the surface tension
$\sigma$
. Almgren, Taylor, and Wang [Reference Almgren, Taylor and Wang1] introduced a time discretization in the form of a minimizing movements scheme including crystalline surface tensions, yielding the so-called flat-flow solutions for anisotropic mean curvature flow. They also proved a short-time existence result for strong solutions if the surface tension 
 $\sigma$
 is smooth. Bellettini and Paolini [Reference Bellettini and Paolini7] provide a thorough introduction of the anisotropic mean curvature flow equation for a Finsler metric
$\sigma$
 is smooth. Bellettini and Paolini [Reference Bellettini and Paolini7] provide a thorough introduction of the anisotropic mean curvature flow equation for a Finsler metric 
 $\sigma$
, i.e., with the surface tension possibly depending on the position in space, and argue formally that the time discretization, the level-set equation proposed in [Reference Chen, Giga and Goto17], and the anisotropic Allen–Cahn equation lead to solutions to anisotropic mean curvature flow.
$\sigma$
, i.e., with the surface tension possibly depending on the position in space, and argue formally that the time discretization, the level-set equation proposed in [Reference Chen, Giga and Goto17], and the anisotropic Allen–Cahn equation lead to solutions to anisotropic mean curvature flow.
 Allowing for sufficiently regular convex surface tensions 
 $\sigma$
 and arbitrary mobilities
$\sigma$
 and arbitrary mobilities 
 $\mu$
, Elliott and Schätzle [Reference Elliott and Schätzle21] proved that, in the sharp-interface limit, solutions to the anisotropic Allen–Cahn equation converge to anisotropic mean curvature flow in the sense of the viscosity formulation. Unlike in the present work, Elliott and Schätzle used a discontinuous, nonregularized version of
$\mu$
, Elliott and Schätzle [Reference Elliott and Schätzle21] proved that, in the sharp-interface limit, solutions to the anisotropic Allen–Cahn equation converge to anisotropic mean curvature flow in the sense of the viscosity formulation. Unlike in the present work, Elliott and Schätzle used a discontinuous, nonregularized version of 
 $g$
 and, therefore, resorted to viscosity solutions of the phase-field equation. In [Reference Chambolle and Novaga14], Chambolle and Novaga prove consistency of the minimizing movements scheme [Reference Almgren, Taylor and Wang1] and the MBO thresholding scheme for the energy (1.2) with anisotropic mean curvature flow using viscosity solutions. Similarly, using viscosity solutions and distributional solutions with an energy convergence hypothesis, Chambolle et al. [Reference Chambolle, De Gennaro and Morini11] prove convergence of the minimizing movements scheme [Reference Almgren, Taylor and Wang1] for a translationally dependent energy to inhomogeneous anisotropic mean curvature flow.
$g$
 and, therefore, resorted to viscosity solutions of the phase-field equation. In [Reference Chambolle and Novaga14], Chambolle and Novaga prove consistency of the minimizing movements scheme [Reference Almgren, Taylor and Wang1] and the MBO thresholding scheme for the energy (1.2) with anisotropic mean curvature flow using viscosity solutions. Similarly, using viscosity solutions and distributional solutions with an energy convergence hypothesis, Chambolle et al. [Reference Chambolle, De Gennaro and Morini11] prove convergence of the minimizing movements scheme [Reference Almgren, Taylor and Wang1] for a translationally dependent energy to inhomogeneous anisotropic mean curvature flow.
 In the case of non-smooth (or crystalline) surface tensions, the Cahn–Hoffman vector field is effectively described in terms of a differential inclusion 
 $\nu _{\sigma } \in \partial \sigma (\nu )$
 and selection of the appropriate curvature can make the problem nonlocal. Recently, a variety of work has been invested in understanding crystalline curvature flow. Giga and Giga were among the first to develop a robust solution concept in the planar setting [Reference Giga and Giga29]. For crystalline surface tensions, existence and uniqueness was proven in dimension
$\nu _{\sigma } \in \partial \sigma (\nu )$
 and selection of the appropriate curvature can make the problem nonlocal. Recently, a variety of work has been invested in understanding crystalline curvature flow. Giga and Giga were among the first to develop a robust solution concept in the planar setting [Reference Giga and Giga29]. For crystalline surface tensions, existence and uniqueness was proven in dimension 
 $d=3$
 by Giga and Požár in [Reference Giga and Požár32], and the result was ultimately extended to arbitrary dimension in [Reference Giga and Požár33] by the same authors. Chambolle, Morini, and Ponsiglione [Reference Chambolle, Morini and Ponsiglione13] introduced a novel definition of supersolutions, subsolutions, and weak solutions to anisotropic mean curvature flow that is also based on level set techniques and is particularly useful for crystalline surface tensions. They presented an existence and uniqueness result up to fattening and a comparison principle. The same authors together with Novaga [Reference Chambolle, Morini, Novaga and Ponsiglione12] extended this result from the special case
$d=3$
 by Giga and Požár in [Reference Giga and Požár32], and the result was ultimately extended to arbitrary dimension in [Reference Giga and Požár33] by the same authors. Chambolle, Morini, and Ponsiglione [Reference Chambolle, Morini and Ponsiglione13] introduced a novel definition of supersolutions, subsolutions, and weak solutions to anisotropic mean curvature flow that is also based on level set techniques and is particularly useful for crystalline surface tensions. They presented an existence and uniqueness result up to fattening and a comparison principle. The same authors together with Novaga [Reference Chambolle, Morini, Novaga and Ponsiglione12] extended this result from the special case 
 $\mu =\sigma$
 to arbitrary mobilities
$\mu =\sigma$
 to arbitrary mobilities 
 $\mu$
.
$\mu$
.
Many of the above results are qualitative, but in the spirit of Chen [Reference Chen16], given the power of viscosity methods, quantitative rates of convergence have been derived and we refer the interested reader to [Reference Bellettini and Novaga6, Reference Giga, Ohtsuka and Schätzle31] and references therein.
In contrast to the above approaches, we will apply relative entropy methods to identify the limit of (1.4). A related approach regarding a localized energy excess was introduced by the first author with Otto in [Reference Laux and Otto41] where they proved convergence of the MBO thresholding scheme to multi-phase mean curvature flow. A nontrivial modification of this idea – based on controlling the tilt excess of the sharp or diffuse interface with regard to a smooth approximation – has been used to prove convergence of the vectorial Allen–Cahn equation to multiphase mean curvature flow [Reference Laux and Simon42] and derive an associated rate of convergence [Reference Fischer and Marveggio25] along with optimal quantitative convergence rates for the Allen–Cahn equation to mean curvature flow in the two-phase setting [Reference Fischer, Laux and Simon24]. A key feature of viscosity type solutions is the associated comparison principle, which automatically provides uniqueness of solutions up to the issue of fattening. However, in the multiphase case, fundamentally different tools are needed to address uniqueness: The relative entropy method [Reference Fischer, Hensel, Laux and Simon23] has been used to prove weak–strong uniqueness results for a variety of geometric evolution equations including planar multiphase flows (see, e.g., [Reference Fischer and Hensel22, Reference Hensel and Laux35, Reference Hensel and Laux36, Reference Laux40]).
 In this paper, we prove convergence of the anisotropic Allen–Cahn equation (1.4) to anisotropic mean curvature flow (1.1) for arbitrary Lipschitz mobilities 
 $\mu$
 and
$\mu$
 and 
 $C^2$
 surface tensions
$C^2$
 surface tensions 
 $\sigma$
 under an energy convergence hypothesis, as is often used in application [Reference Kim, Mellet and Wu38, Reference Laux and Otto41, Reference Laux and Stinson43, Reference Luckhaus and Sturzenhecker47]. This result provides a complete proof for the result first announced in [Reference Laux39]. Further, we prove weak–strong uniqueness of the associated distributional solution concept for anisotropic mean curvature flow: If a smooth solution (which we will endow with the structure of a calibrated evolution) and a
$\sigma$
 under an energy convergence hypothesis, as is often used in application [Reference Kim, Mellet and Wu38, Reference Laux and Otto41, Reference Laux and Stinson43, Reference Luckhaus and Sturzenhecker47]. This result provides a complete proof for the result first announced in [Reference Laux39]. Further, we prove weak–strong uniqueness of the associated distributional solution concept for anisotropic mean curvature flow: If a smooth solution (which we will endow with the structure of a calibrated evolution) and a 
 $BV$
 solution share the same initial data, it follows that both solutions coincide for all times in their common interval of existence. We summarize these results here and refer to Theorems 4.1 and 5.2 for precise details.
$BV$
 solution share the same initial data, it follows that both solutions coincide for all times in their common interval of existence. We summarize these results here and refer to Theorems 4.1 and 5.2 for precise details.
Theorem 1.1. 
Let 
 $\mu$
 be a Lipschitz mobility,
$\mu$
 be a Lipschitz mobility, 
 $\sigma$
 a
$\sigma$
 a 
 $C^{2}$
 uniformly convex surface tension, and
$C^{2}$
 uniformly convex surface tension, and 
 $\Omega$
 the
$\Omega$
 the 
 $d$
-dimensional torus. Then the following holds:
$d$
-dimensional torus. Then the following holds:
- 
• Any sequence of weak solutions  $u_\varepsilon$
 of the anisotropic Allen–Cahn equation (
1.4
) with well-prepared initial conditions has a subsequence converging to some limit $u_\varepsilon$
 of the anisotropic Allen–Cahn equation (
1.4
) with well-prepared initial conditions has a subsequence converging to some limit $u=\chi$
 with $u=\chi$
 with $\chi \;:\;\Omega \times (0,T)\to \{0,1\}$
 as $\chi \;:\;\Omega \times (0,T)\to \{0,1\}$
 as $\varepsilon \to 0.$
 Under an energy convergence hypothesis, $\varepsilon \to 0.$
 Under an energy convergence hypothesis, $u$
 is a weak solution of anisotropic mean curvature flow. $u$
 is a weak solution of anisotropic mean curvature flow.
- 
• Let  $\sigma$
 and $\sigma$
 and $\mu$
 be smooth. If $\mu$
 be smooth. If ${\mathscr{A}(t)}_{t \in [0,T]}$
 is a strong solution of anisotropic mean curvature flow (
1.1
) and ${\mathscr{A}(t)}_{t \in [0,T]}$
 is a strong solution of anisotropic mean curvature flow (
1.1
) and $ \chi \;:\;\Omega \times (0,T)\to \{0,1\}$
 is a distributional solution of anisotropic mean curvature flow with the same initial condition, i.e., $ \chi \;:\;\Omega \times (0,T)\to \{0,1\}$
 is a distributional solution of anisotropic mean curvature flow with the same initial condition, i.e., $\chi (\cdot, 0) = \chi _{\mathscr{A}(0)},$
 then $\chi (\cdot, 0) = \chi _{\mathscr{A}(0)},$
 then $\chi \equiv \chi _{\mathscr{A}}$
 for all $\chi \equiv \chi _{\mathscr{A}}$
 for all $t \in [0,T].$ $t \in [0,T].$
We remark that convergence of the anisotropic Allen–Cahn equation is well-studied, but as far as the authors are aware, this has exclusively been done from the perspective of viscosity solutions. Our result considers this from the distributional setting and may ultimately be amenable to tackling the multiphase setting that is most relevant to physical applications. Further, our uniqueness result for distributional solutions shows that it may be possible to obtain quantitative convergence rates in the spirit of Fischer et al. [Reference Fischer, Laux and Simon24] for the anisotropic Allen–Cahn equation.
The structure of the paper is as follows: In Section 2, we introduce the admissible class of anisotropies and, based on the closely connected notions of anisotropic surface energy and anisotropic mean curvature, derive the anisotropic mean curvature flow equation as a formal gradient flow. Here, we further introduce our notion of a distributional solution to anisotropic mean curvature flow. As a preparation for the convergence result, Section 3 discusses the anisotropic Allen–Cahn equation (1.4) and establishes the existence – via a time discretization – and regularity of weak solutions. Section 4 is devoted to the proof of the conditional convergence theorem. Finally, Section 5 covers the weak–strong uniqueness theorem.
Notation
 Throughout the paper, let 
 $d\geq 2$
 be the ambient dimension. We consider the equations with periodic boundary conditions, i.e., for the domain we will always choose the flat torus
$d\geq 2$
 be the ambient dimension. We consider the equations with periodic boundary conditions, i.e., for the domain we will always choose the flat torus 
 $\Omega \;:\!=\;{\mathbb{R}}^{d}/\mathbb{Z}^{d}$
.
$\Omega \;:\!=\;{\mathbb{R}}^{d}/\mathbb{Z}^{d}$
.
 The 
 $i$
-th unit vector will be denoted by
$i$
-th unit vector will be denoted by 
 $e_{i}$
, and the identity matrix in dimension
$e_{i}$
, and the identity matrix in dimension 
 $d$
 will be written as
$d$
 will be written as 
 $I_{d}\in{\mathbb{R}}^{d\times d}$
. For the scalar products of vectors
$I_{d}\in{\mathbb{R}}^{d\times d}$
. For the scalar products of vectors 
 $a, b \in{\mathbb{R}}^{d}$
 and of matrices
$a, b \in{\mathbb{R}}^{d}$
 and of matrices 
 $A, B \in{\mathbb{R}}^{d \times d}$
, we write
$A, B \in{\mathbb{R}}^{d \times d}$
, we write 
 $a \cdot b \;:\!=\; \sum _{i=1}^{d}a_{i}b_{i}$
 and
$a \cdot b \;:\!=\; \sum _{i=1}^{d}a_{i}b_{i}$
 and 
 $A\;:\;B\;:\!=\; \sum _{i,j=1}^{d}(A)_{ij}(B)_{ij}$
, respectively. The tensor product of
$A\;:\;B\;:\!=\; \sum _{i,j=1}^{d}(A)_{ij}(B)_{ij}$
, respectively. The tensor product of 
 $a, b \in{\mathbb{R}}^{d}$
 is a matrix
$a, b \in{\mathbb{R}}^{d}$
 is a matrix 
 $a \otimes b \in{\mathbb{R}}^{d \times d}$
, which is given by
$a \otimes b \in{\mathbb{R}}^{d \times d}$
, which is given by 
 $(a\otimes b)_{ij}=a_{i}b_{j}$
.
$(a\otimes b)_{ij}=a_{i}b_{j}$
.
 The symbol 
 $\nabla$
 is reserved for derivatives with respect to the space variable
$\nabla$
 is reserved for derivatives with respect to the space variable 
 $x \in \Omega$
. For a vector field
$x \in \Omega$
. For a vector field 
 $X\;:\; \Omega \to{\mathbb{R}}^{d}$
, the derivative
$X\;:\; \Omega \to{\mathbb{R}}^{d}$
, the derivative 
 $\nabla X$
 is a
$\nabla X$
 is a 
 $(d\times d)$
-matrix defined by
$(d\times d)$
-matrix defined by 
 $(\nabla X)_{ij}=\partial _{j}X_{i}$
. Derivatives with respect to variables
$(\nabla X)_{ij}=\partial _{j}X_{i}$
. Derivatives with respect to variables 
 $p \in{\mathbb{R}}^{d}$
 will be denoted by
$p \in{\mathbb{R}}^{d}$
 will be denoted by 
 $D = D_{p}$
. In contrast to
$D = D_{p}$
. In contrast to 
 $\nabla$
,
$\nabla$
, 
 $D\sigma (\nu )$
 will denote the column vector.
$D\sigma (\nu )$
 will denote the column vector.
 For a set 
 $A \subset \mathbb{R}^d$
,
$A \subset \mathbb{R}^d$
, 
 $\chi _A$
 is the characteristic function taking the value
$\chi _A$
 is the characteristic function taking the value 
 $1$
 on
$1$
 on 
 $A$
 and
$A$
 and 
 $0$
 in the complement.
$0$
 in the complement.
 By a standard abuse of notation, we refer to the distributional derivative in space of a function 
 $\chi \in BV(\Omega ;\;\{0,1\})$
 by
$\chi \in BV(\Omega ;\;\{0,1\})$
 by 
 $\nabla \chi$
. In the case that
$\nabla \chi$
. In the case that 
 $\chi \in L^1((0,T);\;BV(\Omega ))$
, we write
$\chi \in L^1((0,T);\;BV(\Omega ))$
, we write 
 $\nabla \chi \;:\!=\; \nabla \chi (\cdot,t )\otimes \mathcal{L}^1_{(0,T)}$
 in the notation of Young measures.
$\nabla \chi \;:\!=\; \nabla \chi (\cdot,t )\otimes \mathcal{L}^1_{(0,T)}$
 in the notation of Young measures.
 The divergence of a vector field 
 $X\;:\; \Omega \to{\mathbb{R}}^{d}$
 is
$X\;:\; \Omega \to{\mathbb{R}}^{d}$
 is 
 $\mathrm{div} X = \sum _{i=1}^{d} \partial _{i}X_{i}$
. The divergence of a matrix field
$\mathrm{div} X = \sum _{i=1}^{d} \partial _{i}X_{i}$
. The divergence of a matrix field 
 $A\;:\; \Omega \to{\mathbb{R}}^{d \times d}$
 is vector-valued,
$A\;:\; \Omega \to{\mathbb{R}}^{d \times d}$
 is vector-valued, 
 $(\mathrm{div} A)_{i}=\sum _{j=1}^{d}\partial _{j}(A)_{ij}$
.
$(\mathrm{div} A)_{i}=\sum _{j=1}^{d}\partial _{j}(A)_{ij}$
.
 For a vector 
 $a \in{\mathbb{R}}^{d}$
 we define the differential operator
$a \in{\mathbb{R}}^{d}$
 we define the differential operator 
 $a \cdot \nabla \;:\!=\;\sum _{i=1}^{d}a_{i}\partial _{i}$
. In particular, for a vector field
$a \cdot \nabla \;:\!=\;\sum _{i=1}^{d}a_{i}\partial _{i}$
. In particular, for a vector field 
 $X$
, we have
$X$
, we have 
 $(a\cdot \nabla )X=(\nabla X)a$
.
$(a\cdot \nabla )X=(\nabla X)a$
.
2. Anisotropies and anisotropic mean curvature
In this section, we develop the necessary mathematical preliminaries for the rest of the paper. We introduce the notion of admissible anisotropies in Subsection 2.1 and provide a calculation clarifying the formal view of anisotropic mean curvature flow as gradient flow in Subsection 2.2. Finally, we show in the smooth setting how the anisotropic curvature can be reinterpreted via integration by parts, allowing us to introduce a distributional solution for anisotropic mean curvature flow in Subsection 2.3.
2.1 Admissible anisotropies
In this subsection, we introduce a suitable class of anisotropic surface tensions and mobilities and discuss some elementary facts about admissible anisotropic surface tensions.
Definition 2.1. An admissible pair of anisotropies 
 $(\sigma, \mu )$
 is comprised of an admissible surface tension
$(\sigma, \mu )$
 is comprised of an admissible surface tension 
 $\sigma \;:\; {\mathbb{R}}^{d} \to{\mathbb{R}}_{\geq 0}$
 that satisfies
$\sigma \;:\; {\mathbb{R}}^{d} \to{\mathbb{R}}_{\geq 0}$
 that satisfies
- 
(S1) positive  $1$
-homogeneity, i.e., $1$
-homogeneity, i.e., $\sigma (\lambda p)=\lambda \sigma (p)$
 for all $\sigma (\lambda p)=\lambda \sigma (p)$
 for all $p\in{\mathbb{R}}^{d}$
, $p\in{\mathbb{R}}^{d}$
, $\lambda \gt 0$
, $\lambda \gt 0$
,
- 
(S2) positive definiteness, i.e.,  $\sigma (p)=0$
 if and only if $\sigma (p)=0$
 if and only if $p=0$
, $p=0$
,
- 
(S3) smoothness, i.e.,  $\sigma \in C^{2}({\mathbb{R}}^{d}\setminus \{0\})$
, $\sigma \in C^{2}({\mathbb{R}}^{d}\setminus \{0\})$
,
- 
(S4) uniform convexity, i.e.,  $\sigma ^{2}\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 is strongly convex in the sense that there exists a constant $\sigma ^{2}\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}$
 is strongly convex in the sense that there exists a constant $c\gt 0$
 satisfyingfor all $c\gt 0$
 satisfyingfor all \begin{equation*} \sigma ^{2}((1-t)p+tq)\leq (1-t)\sigma ^{2}(p)+t\sigma ^{2}(q)-c\frac {t(1-t)}{2}|p-q|^{2} \end{equation*} \begin{equation*} \sigma ^{2}((1-t)p+tq)\leq (1-t)\sigma ^{2}(p)+t\sigma ^{2}(q)-c\frac {t(1-t)}{2}|p-q|^{2} \end{equation*} $p, q \in{\mathbb{R}}^{d}$
, $p, q \in{\mathbb{R}}^{d}$
, $t \in (0,1)$
, $t \in (0,1)$
,
 and an admissible mobility 
 $\mu \;:\;{\mathbb{R}}^{d} \to{\mathbb{R}}_{\geq 0}$
 that satisfies
$\mu \;:\;{\mathbb{R}}^{d} \to{\mathbb{R}}_{\geq 0}$
 that satisfies
- 
(M1) positive  $1$
-homogeneity, i.e., $1$
-homogeneity, i.e., $\mu (\lambda p)=\lambda \mu (p)$
 for all $\mu (\lambda p)=\lambda \mu (p)$
 for all $p\in{\mathbb{R}}^{d}$
, $p\in{\mathbb{R}}^{d}$
, $\lambda \gt 0$
, $\lambda \gt 0$
,
- 
(M2) positive definiteness, i.e.,  $\mu (p)=0$
 if and only if $\mu (p)=0$
 if and only if $p=0$
, $p=0$
,
- 
(M3) regularity, i.e.,  $\mu \in C^{0,1}({\mathbb{R}}^{d})$
. $\mu \in C^{0,1}({\mathbb{R}}^{d})$
.
 The polar norm of 
 $\sigma$
 is
$\sigma$
 is
 \begin{equation} \sigma{^{\circ }}\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}, \qquad \sigma{^{\circ }}(q)=\sup _{p:\, \sigma (p)\leq 1}p\cdot q. \end{equation}
\begin{equation} \sigma{^{\circ }}\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\geq 0}, \qquad \sigma{^{\circ }}(q)=\sup _{p:\, \sigma (p)\leq 1}p\cdot q. \end{equation}
Example 2.2. A useful class of admissible surface tensions, which is suitable to approximate arbitrary norms, is introduced by Barrett, Garcke, and N FC;rnberg in [Reference Barrett, Garcke and Nürnberg4, (1.12)] as follows: Let 
 $q \in [1, \infty )$
,
$q \in [1, \infty )$
, 
 $L \in{\mathbb{N}}$
, and let
$L \in{\mathbb{N}}$
, and let 
 $G_{1}, G_{2}, \ldots, G_{L} \in{\mathbb{R}}^{d \times d}$
 be symmetric and positive definite. We define
$G_{1}, G_{2}, \ldots, G_{L} \in{\mathbb{R}}^{d \times d}$
 be symmetric and positive definite. We define
 \begin{equation*} \sigma (p)\;:\!=\; \left (\sum _{l=1}^{L}\sigma _{l}(p)^{q}\right )^{\frac {1}{q}}, \qquad \sigma _{l}(p)\;:\!=\;\sqrt {p \cdot G_{l}p}. \end{equation*}
\begin{equation*} \sigma (p)\;:\!=\; \left (\sum _{l=1}^{L}\sigma _{l}(p)^{q}\right )^{\frac {1}{q}}, \qquad \sigma _{l}(p)\;:\!=\;\sqrt {p \cdot G_{l}p}. \end{equation*}
One can show that 
 $\sigma$
 is an admissible surface tension in the above sense (see also [Reference Giga30, Remark 1.7.5] and [Reference Bellettini and Paolini7, Example 4.6]).
$\sigma$
 is an admissible surface tension in the above sense (see also [Reference Giga30, Remark 1.7.5] and [Reference Bellettini and Paolini7, Example 4.6]).
For convenience, let us collect several useful properties of surface tensions.
Lemma 2.3. 
Let 
 $\sigma$
 be an admissible surface tension as in Definition 2.1
. Then
$\sigma$
 be an admissible surface tension as in Definition 2.1
. Then
- 
(i)  $\sigma{^{\circ }}$
 is an admissible surface tension and $\sigma{^{\circ }}$
 is an admissible surface tension and $\sigma ^{\circ \circ }=\sigma$
, $\sigma ^{\circ \circ }=\sigma$
,
- 
(ii)  $p\cdot q \leq \sigma (p)\sigma{^{\circ }}(q)$
 for all $p\cdot q \leq \sigma (p)\sigma{^{\circ }}(q)$
 for all $p, q \in{\mathbb{R}}^{d}$
, $p, q \in{\mathbb{R}}^{d}$
,
- 
(iii) we have  $0 \lt \min _{S^{d-1}}\sigma \leq \max _{S^{d-1}}\sigma \lt \infty$
, and $0 \lt \min _{S^{d-1}}\sigma \leq \max _{S^{d-1}}\sigma \lt \infty$
, and \begin{equation*} (\!\min _{S^{d-1}}\sigma )|p| \leq \sigma (p)\leq (\!\max _{S^{d-1}}\sigma )|p| \qquad \text {for all } p \in {\mathbb {R}}^{d}, \end{equation*} \begin{equation*} (\!\min _{S^{d-1}}\sigma )|p| \leq \sigma (p)\leq (\!\max _{S^{d-1}}\sigma )|p| \qquad \text {for all } p \in {\mathbb {R}}^{d}, \end{equation*}
- 
(iv)  $D\sigma$
 is positively $D\sigma$
 is positively $0$
-homogeneous and $0$
-homogeneous and $D^{2}\sigma$
 is positively $D^{2}\sigma$
 is positively $(\!-\!1)$
-homogeneous, i.e., $(\!-\!1)$
-homogeneous, i.e., \begin{equation*} D\sigma (\lambda p) = D\sigma (p) \qquad \text {and} \qquad D^{2}\sigma (\lambda p)=\frac {1}{\lambda }D^{2}\sigma (p) \qquad \text {for all }\lambda \gt 0,\, p \in {\mathbb {R}}^{d}\setminus \{0\}, \end{equation*} \begin{equation*} D\sigma (\lambda p) = D\sigma (p) \qquad \text {and} \qquad D^{2}\sigma (\lambda p)=\frac {1}{\lambda }D^{2}\sigma (p) \qquad \text {for all }\lambda \gt 0,\, p \in {\mathbb {R}}^{d}\setminus \{0\}, \end{equation*}
- 
(v)  $p\cdot D\sigma (p)=\sigma (p)$
 for all $p\cdot D\sigma (p)=\sigma (p)$
 for all $p \in{\mathbb{R}}^{d}\setminus \{0\}$
, $p \in{\mathbb{R}}^{d}\setminus \{0\}$
,
- 
(vi)  $\sigma{^{\circ }}(D\sigma (p))=1$
 for all $\sigma{^{\circ }}(D\sigma (p))=1$
 for all $p \in{\mathbb{R}}^{d}\setminus \{0\}$
, $p \in{\mathbb{R}}^{d}\setminus \{0\}$
,
- 
(vii)  $\sigma{^{\circ }}(q)D\sigma\!\left (D\sigma{^{\circ }}(q)\right )=q$
 for all $\sigma{^{\circ }}(q)D\sigma\!\left (D\sigma{^{\circ }}(q)\right )=q$
 for all $q \in{\mathbb{R}}^{d}\setminus \{0\}$
. $q \in{\mathbb{R}}^{d}\setminus \{0\}$
.
Proof. (ii) can be shown directly from the definition of 
 $\sigma{^{\circ }}$
 and the positive
$\sigma{^{\circ }}$
 and the positive 
 $1$
-homogeneity of
$1$
-homogeneity of 
 $\sigma$
.
$\sigma$
.
 (iii) and (iv) follow from the positive 
 $1$
-homogeneity and continuity resp. smoothness of
$1$
-homogeneity and continuity resp. smoothness of 
 $\sigma$
.
$\sigma$
.
(v) is a result of (iv) and the fundamental theorem of calculus, cf. [Reference Giga30, Section 1.7.2]:
 \begin{equation*} \sigma (p)=\int _{0}^{1}\frac {d}{d\lambda }\sigma (\lambda p)\,d\lambda =\int _{0}^{1}D\sigma (\lambda p)\cdot p \,d\lambda =D\sigma (p)\cdot p. \end{equation*}
\begin{equation*} \sigma (p)=\int _{0}^{1}\frac {d}{d\lambda }\sigma (\lambda p)\,d\lambda =\int _{0}^{1}D\sigma (\lambda p)\cdot p \,d\lambda =D\sigma (p)\cdot p. \end{equation*}
 Giga [Reference Giga30, Section 1.7.2] also provides the proofs for (vi), (vii), and (i) except the uniform convexity of 
 $\sigma{^{\circ }}$
 and the duality statement
$\sigma{^{\circ }}$
 and the duality statement 
 $\sigma ^{\circ \circ }=\sigma$
. A proof for
$\sigma ^{\circ \circ }=\sigma$
. A proof for 
 $\sigma ^{\circ \circ }=\sigma$
 can be found in [Reference Rockafellar50, Theorem 15.1 and Corollary 15.1.1]. The uniform convexity of
$\sigma ^{\circ \circ }=\sigma$
 can be found in [Reference Rockafellar50, Theorem 15.1 and Corollary 15.1.1]. The uniform convexity of 
 $\sigma ^{\circ }$
 can be proved in a similar way to [Reference Lindenstrauss and Tzafriri45, Proposition 1.e.2].
$\sigma ^{\circ }$
 can be proved in a similar way to [Reference Lindenstrauss and Tzafriri45, Proposition 1.e.2].
 A useful trick with regard to the Euclidean metric 
 $|\cdot |$
 is to control quadratic errors for unit vectors via the inequality
$|\cdot |$
 is to control quadratic errors for unit vectors via the inequality
 \begin{equation*} \left |p-p^{\prime }\right |^{2}=1+|p^{\prime }|^{2}-2\,p\cdot p^{\prime }\leq 2\left (1-p\cdot p^{\prime }\right ) \qquad \text {whenever } |p|=1 \text { and } \left |p^{\prime }\right |\leq 1, \end{equation*}
\begin{equation*} \left |p-p^{\prime }\right |^{2}=1+|p^{\prime }|^{2}-2\,p\cdot p^{\prime }\leq 2\left (1-p\cdot p^{\prime }\right ) \qquad \text {whenever } |p|=1 \text { and } \left |p^{\prime }\right |\leq 1, \end{equation*}
with equality if and only if 
 $|p^{\prime }|=1$
. In order to introduce a tilt excess functional for anisotropic mean curvature flow, we are interested in an anisotropic counterpart to the above inequality.
$|p^{\prime }|=1$
. In order to introduce a tilt excess functional for anisotropic mean curvature flow, we are interested in an anisotropic counterpart to the above inequality.
 The suitable anisotropic inequality bounds squared distances 
 $|p-p^{\prime }|^{2}$
 by a term of the form
$|p-p^{\prime }|^{2}$
 by a term of the form 
 $\sigma (p)-|p^{\prime }|D\sigma (p^{\prime })\cdot p$
. However, since the mapping
$\sigma (p)-|p^{\prime }|D\sigma (p^{\prime })\cdot p$
. However, since the mapping 
 $p^{\prime } \mapsto |p^{\prime }|D\sigma (p^{\prime })$
 is, in general, not continuously differentiable at
$p^{\prime } \mapsto |p^{\prime }|D\sigma (p^{\prime })$
 is, in general, not continuously differentiable at 
 $p^{\prime }=0$
, we will use a truncated version instead. To this end, we fix a cutoff function
$p^{\prime }=0$
, we will use a truncated version instead. To this end, we fix a cutoff function 
 $\psi \in C^{\infty }([0,\infty ))$
 satisfying
$\psi \in C^{\infty }([0,\infty ))$
 satisfying
 \begin{equation} \psi (r)=0\quad \text{for all }r\leq \frac{1}{4},\qquad \psi (r)=1\quad \text{for all }r \geq \frac{1}{2}, \qquad \text{and }\psi ^{\prime }\geq 0. \end{equation}
\begin{equation} \psi (r)=0\quad \text{for all }r\leq \frac{1}{4},\qquad \psi (r)=1\quad \text{for all }r \geq \frac{1}{2}, \qquad \text{and }\psi ^{\prime }\geq 0. \end{equation}
The following lemma contains two estimates featuring the truncated version.
Lemma 2.4. 
Let 
 $\sigma$
 be an admissible surface tension. There exist constants
$\sigma$
 be an admissible surface tension. There exist constants 
 $c_{\sigma }, C_{\sigma }\gt 0$
 depending only on
$c_{\sigma }, C_{\sigma }\gt 0$
 depending only on 
 $\sigma$
 such that
$\sigma$
 such that
- 
(i) we have (2.3)for all \begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p \geq c_{\sigma }\left |p-p^{\prime }\right |^{2} \end{equation} \begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p \geq c_{\sigma }\left |p-p^{\prime }\right |^{2} \end{equation} $p, p^{\prime } \in{\mathbb{R}}^{d}$
 such that $p, p^{\prime } \in{\mathbb{R}}^{d}$
 such that $|p|=1$
 and $|p|=1$
 and $\left |p^{\prime }\right |\leq 1$
, and $\left |p^{\prime }\right |\leq 1$
, and
- 
(ii) we have (2.4)for all \begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p\leq C_{\sigma }\left (\left |p-p^{\prime }\right |^{2}+\left (1-\left |p^{\prime }\right |\right )\right ) \end{equation} \begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p\leq C_{\sigma }\left (\left |p-p^{\prime }\right |^{2}+\left (1-\left |p^{\prime }\right |\right )\right ) \end{equation} $p, p^{\prime } \in{\mathbb{R}}^{d}$
 such that $p, p^{\prime } \in{\mathbb{R}}^{d}$
 such that $|p|=1$
 and $|p|=1$
 and $\left |p^{\prime }\right |\leq 1$
. $\left |p^{\prime }\right |\leq 1$
.
Proof. Variants of (i) and (ii) were provided by Dziuk [Reference Dziuk20, Proposition 2.2] and Laux [Reference Laux39, Lemma 3.3 and Section 4.2], respectively. The proof is included here for the reader’s convenience.
 For inequality (i), we consider two cases with respect to 
 $p^{\prime }$
: First, if
$p^{\prime }$
: First, if 
 $D\sigma (p^{\prime })\cdot p\lt \frac{\sigma (p)}{2}$
 or
$D\sigma (p^{\prime })\cdot p\lt \frac{\sigma (p)}{2}$
 or 
 $p^{\prime }=0$
, we use the estimate
$p^{\prime }=0$
, we use the estimate 
 $|p-p^{\prime }|^{2}\leq 4$
 to obtain
$|p-p^{\prime }|^{2}\leq 4$
 to obtain
 \begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p&\geq \sigma (p)\left (1-\frac{1}{2}|p^{\prime }|\psi (|p^{\prime }|)\right )\nonumber \\[5pt] &\geq \frac{1}{2}\sigma (p)\nonumber \\[5pt] &\geq \frac{1}{8}(\!\min _{S^{d-1}}\sigma )|p-p^{\prime }|^{2}. \end{align}
\begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p&\geq \sigma (p)\left (1-\frac{1}{2}|p^{\prime }|\psi (|p^{\prime }|)\right )\nonumber \\[5pt] &\geq \frac{1}{2}\sigma (p)\nonumber \\[5pt] &\geq \frac{1}{8}(\!\min _{S^{d-1}}\sigma )|p-p^{\prime }|^{2}. \end{align}
 Second, if 
 $p^{\prime }\neq 0$
 and
$p^{\prime }\neq 0$
 and 
 $D\sigma (p^{\prime })\cdot p\geq \frac{\sigma (p)}{2}$
, we have
$D\sigma (p^{\prime })\cdot p\geq \frac{\sigma (p)}{2}$
, we have 
 $\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |\geq \frac{\min _{S^{d-1}}\sigma }{\max _{S^{d-1}}|D\sigma |}\gt 0$
 since
$\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |\geq \frac{\min _{S^{d-1}}\sigma }{\max _{S^{d-1}}|D\sigma |}\gt 0$
 since
 \begin{align*} 0\leq D\sigma (p^{\prime })\cdot p & \leq D\sigma (p^{\prime })\cdot \left (-\frac{p^{\prime }}{|p^{\prime }|}\right )+ (\!\max _{S^{d-1}}|D\sigma |)\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right | \\[5pt] & \leq - (\!\min _{S^{d-1}}\sigma ) + (\!\max _{S^{d-1}}|D\sigma |)\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |. \end{align*}
\begin{align*} 0\leq D\sigma (p^{\prime })\cdot p & \leq D\sigma (p^{\prime })\cdot \left (-\frac{p^{\prime }}{|p^{\prime }|}\right )+ (\!\max _{S^{d-1}}|D\sigma |)\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right | \\[5pt] & \leq - (\!\min _{S^{d-1}}\sigma ) + (\!\max _{S^{d-1}}|D\sigma |)\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |. \end{align*}
The uniform convexity assumption (S4) can equivalently be stated as follows (see [Reference Giga30, Remark 1.7.5]): There exists a constant 
 $\underline{\sigma }\gt 0$
 such that
$\underline{\sigma }\gt 0$
 such that
 \begin{equation} D^{2}\sigma (p^{*})\geq \frac{\underline{\sigma }}{|p^{*}|} \qquad \text{on } \{p^{*}\}^{\perp } \end{equation}
\begin{equation} D^{2}\sigma (p^{*})\geq \frac{\underline{\sigma }}{|p^{*}|} \qquad \text{on } \{p^{*}\}^{\perp } \end{equation}
for all 
 $p^{*}\neq 0$
. We use a second-order Taylor expansion around
$p^{*}\neq 0$
. We use a second-order Taylor expansion around 
 $\frac{p^{\prime }}{|p^{\prime }|}$
 and write the remainder in terms of an intermediate point
$\frac{p^{\prime }}{|p^{\prime }|}$
 and write the remainder in terms of an intermediate point 
 $p^{*}=(1-t)p+t\frac{p^{\prime }}{|p^{\prime }|}$
 with
$p^{*}=(1-t)p+t\frac{p^{\prime }}{|p^{\prime }|}$
 with 
 $t \in [0,1]$
. Together with the convexity property (2.6), it follows that
$t \in [0,1]$
. Together with the convexity property (2.6), it follows that
 \begin{align*} \sigma (p)-D\sigma (p^{\prime })\cdot p &= \sigma (p)- \sigma\!\left(\frac{p^{\prime }}{|p^{\prime }|}\right)-D\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\nonumber \\[5pt] &= \frac{1}{2}\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot D^{2}\sigma (p^{*})\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\nonumber \\[5pt] &\geq \frac{\underline{\sigma }}{2|p^{*}|}{\left |\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right ) - \left (\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \frac{p^{*}}{|p^{*}|}\right )\frac{p^{*}}{|p^{*}|}\right |}^{2} \\&\geq \frac{\underline{\sigma }}{8}\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}\nonumber \\[5pt] &\geq \frac{\underline{\sigma }}{8}\frac{(\!\min _{S^{d-1}}\sigma )^{2}}{(\!\max _{S^{d-1}}|D\sigma |)^{2}}\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}.\end{align*}
\begin{align*} \sigma (p)-D\sigma (p^{\prime })\cdot p &= \sigma (p)- \sigma\!\left(\frac{p^{\prime }}{|p^{\prime }|}\right)-D\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\nonumber \\[5pt] &= \frac{1}{2}\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot D^{2}\sigma (p^{*})\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\nonumber \\[5pt] &\geq \frac{\underline{\sigma }}{2|p^{*}|}{\left |\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right ) - \left (\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \frac{p^{*}}{|p^{*}|}\right )\frac{p^{*}}{|p^{*}|}\right |}^{2} \\&\geq \frac{\underline{\sigma }}{8}\left |p+\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}\nonumber \\[5pt] &\geq \frac{\underline{\sigma }}{8}\frac{(\!\min _{S^{d-1}}\sigma )^{2}}{(\!\max _{S^{d-1}}|D\sigma |)^{2}}\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}.\end{align*}
Furthermore, the assumption 
 $D\sigma (p^{\prime })\cdot p \geq \frac{\sigma (p)}{2}$
 allows us to compute
$D\sigma (p^{\prime })\cdot p \geq \frac{\sigma (p)}{2}$
 allows us to compute
 \begin{equation} \left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p \geq \left (1-|p^{\prime }|\right )\frac{\sigma (p)}{2}\geq \frac{\min _{S^{d-1}}\sigma }{2}{\left |\frac{p^{\prime }}{|p^{\prime }|}-p^{\prime }\right |}^{2}. \end{equation}
\begin{equation} \left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p \geq \left (1-|p^{\prime }|\right )\frac{\sigma (p)}{2}\geq \frac{\min _{S^{d-1}}\sigma }{2}{\left |\frac{p^{\prime }}{|p^{\prime }|}-p^{\prime }\right |}^{2}. \end{equation}
Finally, a combination of (2.7) and (2.8) together with an application of Young’s inequality yields
 \begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p &= \sigma (p)-D\sigma (p^{\prime })\cdot p + \left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p\nonumber \\[5pt] &\geq 2c_{\sigma }\left (\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}+ \left |\frac{p^{\prime }}{|p^{\prime }|}-p^{\prime }\right |^{2}\right )\nonumber \\[5pt] &\geq c_{\sigma }\left |p-p^{\prime }\right |^{2}, \end{align}
\begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p &= \sigma (p)-D\sigma (p^{\prime })\cdot p + \left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p\nonumber \\[5pt] &\geq 2c_{\sigma }\left (\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}+ \left |\frac{p^{\prime }}{|p^{\prime }|}-p^{\prime }\right |^{2}\right )\nonumber \\[5pt] &\geq c_{\sigma }\left |p-p^{\prime }\right |^{2}, \end{align}
which completes the proof of (i) in the second case.
 For inequality (ii), we distinguish two cases again. First, in the easier case 
 $\left |p-p^{\prime }\right |\geq 1$
, we can estimate
$\left |p-p^{\prime }\right |\geq 1$
, we can estimate
 \begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p \leq \max _{S^{d-1}}\sigma +\max _{S^{d-1}}|D\sigma | \leq \left (\!\max _{S^{d-1}}\sigma +\max _{S^{d-1}}|D\sigma |\right ) \left |p-p^{\prime }\right |^{2}. \end{equation}
\begin{equation} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p \leq \max _{S^{d-1}}\sigma +\max _{S^{d-1}}|D\sigma | \leq \left (\!\max _{S^{d-1}}\sigma +\max _{S^{d-1}}|D\sigma |\right ) \left |p-p^{\prime }\right |^{2}. \end{equation}
 Second, if 
 $|p-p^{\prime }|\lt 1$
, then
$|p-p^{\prime }|\lt 1$
, then
 \begin{equation*} {\left |p-\frac {p^{\prime }}{|p^{\prime }|} \right |}^{2}= 2 - 2 p \cdot \frac {p^{\prime }}{|p^{\prime }|}\leq 2+\frac {1}{|p^{\prime }|}\left (|p-p^{\prime }|^{2}-1\right )\lt 2 \end{equation*}
\begin{equation*} {\left |p-\frac {p^{\prime }}{|p^{\prime }|} \right |}^{2}= 2 - 2 p \cdot \frac {p^{\prime }}{|p^{\prime }|}\leq 2+\frac {1}{|p^{\prime }|}\left (|p-p^{\prime }|^{2}-1\right )\lt 2 \end{equation*}
and, therefore,
 \begin{equation*} {\left |(1-t)p+t\frac {p^{\prime }}{|p^{\prime }|}\right |}^{2} = 1-\left (t-t^{2}\right )\left |p-\frac {p^{\prime }}{|p^{\prime }|}\right |^{2}\geq 1-\frac {1}{4}{\left |p-\frac {p^{\prime }}{|p^{\prime }|}\right |}^{2}\gt \frac {1}{2} \end{equation*}
\begin{equation*} {\left |(1-t)p+t\frac {p^{\prime }}{|p^{\prime }|}\right |}^{2} = 1-\left (t-t^{2}\right )\left |p-\frac {p^{\prime }}{|p^{\prime }|}\right |^{2}\geq 1-\frac {1}{4}{\left |p-\frac {p^{\prime }}{|p^{\prime }|}\right |}^{2}\gt \frac {1}{2} \end{equation*}
for all 
 $t \in [0,1]$
. As in the proof of inequality (i) above, we introduce a second-order Taylor expansion around
$t \in [0,1]$
. As in the proof of inequality (i) above, we introduce a second-order Taylor expansion around 
 $\frac{p^{\prime }}{|p^{\prime }|}$
 with an intermediate point
$\frac{p^{\prime }}{|p^{\prime }|}$
 with an intermediate point 
 $p^{*}=(1-t)p+t\frac{p^{\prime }}{|p^{\prime }|}$
, where
$p^{*}=(1-t)p+t\frac{p^{\prime }}{|p^{\prime }|}$
, where 
 $t \in [0,1]$
. Using this expansion, Lemma 2.3(ii), (vi), and Young’s inequality, we obtain
$t \in [0,1]$
. Using this expansion, Lemma 2.3(ii), (vi), and Young’s inequality, we obtain
 \begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p &= \sigma (p)-\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )-D\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \left(p-\frac{p^{\prime }}{|p^{\prime }|}\right)\nonumber \\[5pt] &\quad +\left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p\nonumber \\[5pt] &\leq \frac{1}{2}\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot D^{2}\sigma (p^{*})\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right ) +\left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )\sigma (p)\nonumber \\[5pt] &\leq \frac{\sqrt{2}}{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}+2 (\!\max _{S^{d-1}}\sigma )\left (1-|p^{\prime }|\right )\nonumber \\[5pt] &\leq \sqrt{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)|p-p^{\prime }|^{2} \nonumber \\[5pt] &\quad + \left (\sqrt{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)+2 (\!\max _{S^{d-1}}\sigma )\right )\left (1-|p^{\prime }|\right ), \end{align}
\begin{align} \sigma (p)-|p^{\prime }|\psi (|p^{\prime }|)D\sigma (p^{\prime })\cdot p &= \sigma (p)-\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )-D\sigma\!\left (\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot \left(p-\frac{p^{\prime }}{|p^{\prime }|}\right)\nonumber \\[5pt] &\quad +\left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )D\sigma (p^{\prime })\cdot p\nonumber \\[5pt] &\leq \frac{1}{2}\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right )\cdot D^{2}\sigma (p^{*})\left (p-\frac{p^{\prime }}{|p^{\prime }|}\right ) +\left (1-|p^{\prime }|\psi (|p^{\prime }|)\right )\sigma (p)\nonumber \\[5pt] &\leq \frac{\sqrt{2}}{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)\left |p-\frac{p^{\prime }}{|p^{\prime }|}\right |^{2}+2 (\!\max _{S^{d-1}}\sigma )\left (1-|p^{\prime }|\right )\nonumber \\[5pt] &\leq \sqrt{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)|p-p^{\prime }|^{2} \nonumber \\[5pt] &\quad + \left (\sqrt{2}(\!\max _{S^{d-1}}|D^{2}\sigma |)+2 (\!\max _{S^{d-1}}\sigma )\right )\left (1-|p^{\prime }|\right ), \end{align}
from which (ii) follows in the case 
 $|p-p^{\prime }|\lt 1$
.
$|p-p^{\prime }|\lt 1$
.
 The following fact on the duality of 
 $\sigma$
 and
$\sigma$
 and 
 $\sigma{^{\circ }}$
 will be used at a later point.
$\sigma{^{\circ }}$
 will be used at a later point.
Lemma 2.5. 
Let 
 $B \in L^{1}(\Omega )^d$
, and let
$B \in L^{1}(\Omega )^d$
, and let 
 $\sigma$
 be an admissible surface tension. Then
$\sigma$
 be an admissible surface tension. Then
 \begin{equation*} \int _{\Omega }\sigma (B)dx=\sup _{\eta }\int _{\Omega }B\cdot \eta \, dx, \end{equation*}
\begin{equation*} \int _{\Omega }\sigma (B)dx=\sup _{\eta }\int _{\Omega }B\cdot \eta \, dx, \end{equation*}
where the supremum is taken over all 
 $\eta \in C^{1}(\Omega )^{d}$
 such that
$\eta \in C^{1}(\Omega )^{d}$
 such that 
 $\sigma{^{\circ }}(\eta )\leq 1$
.
$\sigma{^{\circ }}(\eta )\leq 1$
.
Proof. For 
 $\eta \in C^{1}(\Omega )^{d}$
 such that
$\eta \in C^{1}(\Omega )^{d}$
 such that 
 $\sigma{^{\circ }}(\eta )\leq 1$
, we have that
$\sigma{^{\circ }}(\eta )\leq 1$
, we have that
 \begin{equation*}\int _\Omega \sigma (B) \, dx \geq \int _{\Omega }\sigma (B) \sigma {^{\circ }}(\eta ) \, dx \geq \int _{\Omega }B\cdot \eta \, dx\end{equation*}
\begin{equation*}\int _\Omega \sigma (B) \, dx \geq \int _{\Omega }\sigma (B) \sigma {^{\circ }}(\eta ) \, dx \geq \int _{\Omega }B\cdot \eta \, dx\end{equation*}
by Lemma 2.3. To see the other bound, whenever 
 $B \neq 0$
 note that
$B \neq 0$
 note that 
 $\sigma (B) = B\cdot D\sigma (B)$
 and that
$\sigma (B) = B\cdot D\sigma (B)$
 and that 
 $\sigma{^{\circ }}(D\sigma (B)) = 1$
 by Lemma 2.3. As
$\sigma{^{\circ }}(D\sigma (B)) = 1$
 by Lemma 2.3. As 
 $\{\nu \;:\; \sigma ^{\circ }(\nu )\leq 1\}$
 is a convex set, if
$\{\nu \;:\; \sigma ^{\circ }(\nu )\leq 1\}$
 is a convex set, if 
 $\eta$
 is given by a smooth mollification of
$\eta$
 is given by a smooth mollification of 
 $D\sigma (B)$
, the inequality
$D\sigma (B)$
, the inequality 
 $\sigma ^{\circ }(\eta )\leq 1$
 still holds. Approximating
$\sigma ^{\circ }(\eta )\leq 1$
 still holds. Approximating 
 $D\sigma (B)$
 by such
$D\sigma (B)$
 by such 
 $\eta$
 shows that
$\eta$
 shows that 
 $\int _{\Omega }\sigma (B)dx\leq \sup _{\eta }\int _{\Omega }B\cdot \eta \, dx$
, concluding the proof.
$\int _{\Omega }\sigma (B)dx\leq \sup _{\eta }\int _{\Omega }B\cdot \eta \, dx$
, concluding the proof.
2.2 Anisotropic mean curvature and surface energy
 In the remainder of this section, we assume that 
 $(\sigma,\mu )$
 is an admissible pair of anisotropies according to Definition 2.1.
$(\sigma,\mu )$
 is an admissible pair of anisotropies according to Definition 2.1.
 Similarly to [Reference Bellettini and Paolini7], we introduce the 
 $\sigma$
-mean curvature of a hypersurface
$\sigma$
-mean curvature of a hypersurface 
 $\Gamma$
 as the surface divergence of the Cahn–Hoffman vector of the outer unit normal
$\Gamma$
 as the surface divergence of the Cahn–Hoffman vector of the outer unit normal 
 $\nu$
, i.e.,
$\nu$
, i.e., 
 $H_{\sigma }=\mathrm{div}_{\Gamma }(D\sigma (\nu ))$
. For the notion of the Cahn–Hoffman vector, see [Reference Giga30, Section 1.3]. The surface divergence is given by
$H_{\sigma }=\mathrm{div}_{\Gamma }(D\sigma (\nu ))$
. For the notion of the Cahn–Hoffman vector, see [Reference Giga30, Section 1.3]. The surface divergence is given by 
 $\mathrm{div}_{\Gamma }X \;:\!=\; \mathrm{div} X - \nu \cdot \nabla X\, \nu$
. Observe that, for every
$\mathrm{div}_{\Gamma }X \;:\!=\; \mathrm{div} X - \nu \cdot \nabla X\, \nu$
. Observe that, for every 
 $C^{1}$
-extension of the normal
$C^{1}$
-extension of the normal 
 $\nu$
 to the whole space and every
$\nu$
 to the whole space and every 
 $x \in \Gamma$
, we have
$x \in \Gamma$
, we have
 \begin{align*} H_{\sigma }(x)&=\mathrm{div}_{\Gamma }(D\sigma (\nu ))(x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x)-\nu (x) \cdot \nabla (D\sigma (\nu ))(x)\nu (x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x)-\nu (x) \cdot D^{2}\sigma (\nu (x))(\nabla \nu (x))\nu (x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x), \end{align*}
\begin{align*} H_{\sigma }(x)&=\mathrm{div}_{\Gamma }(D\sigma (\nu ))(x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x)-\nu (x) \cdot \nabla (D\sigma (\nu ))(x)\nu (x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x)-\nu (x) \cdot D^{2}\sigma (\nu (x))(\nabla \nu (x))\nu (x)\\[5pt] &=\mathrm{div}(D\sigma (\nu ))(x), \end{align*}
where the last step uses the fact that 
 $D^{2}\sigma (p)p=\frac{d}{ds}\Big |_{s=0}D\sigma (\mathrm{e}^{s}p)=\frac{d}{ds}\Big |_{s=0}D\sigma (p)=0$
 for all
$D^{2}\sigma (p)p=\frac{d}{ds}\Big |_{s=0}D\sigma (\mathrm{e}^{s}p)=\frac{d}{ds}\Big |_{s=0}D\sigma (p)=0$
 for all 
 $p \in{\mathbb{R}}^{d}\setminus \{0\}$
 by the positive
$p \in{\mathbb{R}}^{d}\setminus \{0\}$
 by the positive 
 $0$
-homogeneity of
$0$
-homogeneity of 
 $D\sigma$
, Lemma 2.3(iv).
$D\sigma$
, Lemma 2.3(iv).
 Furthermore, we define the anisotropic surface energy 
 $E$
 as in (1.2). The relation between the anisotropic mean curvature and anisotropic surface energy becomes clear from the following theorem, which deals with the first variation and direction of steepest descent of the functional
$E$
 as in (1.2). The relation between the anisotropic mean curvature and anisotropic surface energy becomes clear from the following theorem, which deals with the first variation and direction of steepest descent of the functional 
 $E$
:
$E$
:
Theorem 2.6. 
Let 
 $A \subset{\mathbb{R}}^{d}$
 be a bounded open set with
$A \subset{\mathbb{R}}^{d}$
 be a bounded open set with 
 $C^{2}$
-boundary, and let
$C^{2}$
-boundary, and let 
 $\nu$
 denote the outer unit normal on
$\nu$
 denote the outer unit normal on 
 $\partial A$
. Given a compactly supported vector field
$\partial A$
. Given a compactly supported vector field 
 $B \in C_{c}^{1}({\mathbb{R}}^{d})^{d}$
, we define a one-parameter family of diffeomorphisms
$B \in C_{c}^{1}({\mathbb{R}}^{d})^{d}$
, we define a one-parameter family of diffeomorphisms
 \begin{equation*}\Psi \;:\; {\mathbb {R}}^{d}\times \left (-\|\nabla B\|_{L^{\infty }}^{-1},\|\nabla B\|_{L^{\infty }}^{-1}\right )\to {\mathbb {R}}^{d}, \qquad \Psi _{t}(x)=x+tB(x). \end{equation*}
\begin{equation*}\Psi \;:\; {\mathbb {R}}^{d}\times \left (-\|\nabla B\|_{L^{\infty }}^{-1},\|\nabla B\|_{L^{\infty }}^{-1}\right )\to {\mathbb {R}}^{d}, \qquad \Psi _{t}(x)=x+tB(x). \end{equation*}
For 
 $|t| \lt \|\nabla B\|_{L^{\infty }}^{-1}$
, let
$|t| \lt \|\nabla B\|_{L^{\infty }}^{-1}$
, let 
 $A(t)\;:\!=\; \Psi _{t}(A)$
 and
$A(t)\;:\!=\; \Psi _{t}(A)$
 and 
 $u(x,t)\;:\!=\;\chi _{\Omega (t)}(x)$
. Then
$u(x,t)\;:\!=\;\chi _{\Omega (t)}(x)$
. Then
 \begin{equation} \frac{d}{dt}E[u(\cdot,t)]\Big |_{t=0}={c_{0}} \int _{\partial A}H_{\sigma }\nu \cdot B d{\mathcal{H}^{d-1}}. \end{equation}
\begin{equation} \frac{d}{dt}E[u(\cdot,t)]\Big |_{t=0}={c_{0}} \int _{\partial A}H_{\sigma }\nu \cdot B d{\mathcal{H}^{d-1}}. \end{equation}
Moreover, we define 
 $\|B\|_{*}\;:\!=\;\left ({c_{0}}\int _{\partial A}\sigma{^{\circ }}(\!-\!{\mathrm{sgn}}(H_{\sigma })B)^{2}\frac{\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal{H}^{d-1}} \right )^{\frac{1}{2}}$
, so that
$\|B\|_{*}\;:\!=\;\left ({c_{0}}\int _{\partial A}\sigma{^{\circ }}(\!-\!{\mathrm{sgn}}(H_{\sigma })B)^{2}\frac{\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal{H}^{d-1}} \right )^{\frac{1}{2}}$
, so that 
 $\|\cdot \|_{*}$
 is bounded from below and above by the
$\|\cdot \|_{*}$
 is bounded from below and above by the 
 $L^{2}$
-norm for vector-valued functions
$L^{2}$
-norm for vector-valued functions 
 $\partial A \to{\mathbb{R}}^{d}$
. If we denote the right-hand side of (
2.12
) by the dual pairing
$\partial A \to{\mathbb{R}}^{d}$
. If we denote the right-hand side of (
2.12
) by the dual pairing 
 $(dE, B)$
, then a solution of the minimization problem
$(dE, B)$
, then a solution of the minimization problem
 \begin{equation} \min \left \{(dE,B)\big | \|B\|_{*}\leq 1 \right \} \end{equation}
\begin{equation} \min \left \{(dE,B)\big | \|B\|_{*}\leq 1 \right \} \end{equation}
is given by a positive multiple of 
 $-H_{\sigma }\frac{\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )$
.
$-H_{\sigma }\frac{\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )$
.
Proof. The identity for the first variation (2.12) was stated by Almgren, Taylor, and Wang [Reference Almgren, Taylor and Wang1, Section 2.2] and proved by Bellettini and Paolini in the more general context of Finsler geometry [Reference Bellettini and Paolini7, Theorem 5.1]. The proof of the steepest descent statement follows the idea of [Reference Bellettini and Paolini7, Proposition 5.1] but incorporates the (arbitrary) mobility 
 $\mu$
:
$\mu$
:
 Let 
 $B\in L^{2}(\partial A)^{d}$
, then by Lemma 2.3(ii) and the Cauchy–Schwarz inequality it follows that
$B\in L^{2}(\partial A)^{d}$
, then by Lemma 2.3(ii) and the Cauchy–Schwarz inequality it follows that
 \begin{align*} (dE, B)&={c_{0}} \int _{\partial A}H_{\sigma }\nu \cdot B d{\mathcal{H}^{d-1}}\\[5pt] &=-{c_{0}} \int _{\partial A}|H_{\sigma }|\nu \cdot \left (-{\mathrm{sgn}}(H_{\sigma })B\right ) d{\mathcal{H}^{d-1}}\\[5pt] &\geq -{c_{0}} \int _{\partial A}|H_{\sigma }|\sigma (\nu )\,\sigma ^{\circ }(\!-\!{\mathrm{sgn}}(H_{\sigma })B)\, d{\mathcal{H}^{d-1}}\\[5pt] &\geq -{c_{0}} \left (\int _{\partial A}|H_{\sigma }|^{2}\mu (\nu )\,d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}} \left (\int _{\partial A}\sigma ^{\circ }(\!-\!{\mathrm{sgn}}(H_{\sigma })B)^{2}\frac{\sigma (\nu )^{2}}{\mu (\nu )} d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}}\\[5pt] &=-\sqrt{{c_{0}}} \left (\int _{\partial A}|H_{\sigma }|^{2}\mu (\nu )\,d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}} \|B\|_{*}, \end{align*}
\begin{align*} (dE, B)&={c_{0}} \int _{\partial A}H_{\sigma }\nu \cdot B d{\mathcal{H}^{d-1}}\\[5pt] &=-{c_{0}} \int _{\partial A}|H_{\sigma }|\nu \cdot \left (-{\mathrm{sgn}}(H_{\sigma })B\right ) d{\mathcal{H}^{d-1}}\\[5pt] &\geq -{c_{0}} \int _{\partial A}|H_{\sigma }|\sigma (\nu )\,\sigma ^{\circ }(\!-\!{\mathrm{sgn}}(H_{\sigma })B)\, d{\mathcal{H}^{d-1}}\\[5pt] &\geq -{c_{0}} \left (\int _{\partial A}|H_{\sigma }|^{2}\mu (\nu )\,d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}} \left (\int _{\partial A}\sigma ^{\circ }(\!-\!{\mathrm{sgn}}(H_{\sigma })B)^{2}\frac{\sigma (\nu )^{2}}{\mu (\nu )} d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}}\\[5pt] &=-\sqrt{{c_{0}}} \left (\int _{\partial A}|H_{\sigma }|^{2}\mu (\nu )\,d{\mathcal{H}^{d-1}}\right )^{\frac{1}{2}} \|B\|_{*}, \end{align*}
and Lemma 2.3(v), (vi) yield that the first inequality is an equality if 
 $B=-\lambda{\mathrm{sgn}}(H_{\sigma })D\sigma (\nu )$
 for some nonnegative function
$B=-\lambda{\mathrm{sgn}}(H_{\sigma })D\sigma (\nu )$
 for some nonnegative function 
 $\lambda \;:\; \partial A \to{\mathbb{R}}_{\geq 0}$
. Therefore, if
$\lambda \;:\; \partial A \to{\mathbb{R}}_{\geq 0}$
. Therefore, if 
 $B$
 is a constant positive multiple of
$B$
 is a constant positive multiple of 
 $-H_{\sigma }\frac{\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )$
, then both inequalities are equalities. The statement follows by the positive
$-H_{\sigma }\frac{\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )$
, then both inequalities are equalities. The statement follows by the positive 
 $1$
-homogeneity of
$1$
-homogeneity of 
 $\|\cdot \|_{*}$
.
$\|\cdot \|_{*}$
.
 This theorem helps us to justify the gradient flow structure for anisotropic mean curvature flow as introduced earlier via (1.2) and (1.3): Considering that tangential components of the velocity 
 $B$
 do not contribute to the variation of
$B$
 do not contribute to the variation of 
 $A$
, let us restrict ourselves to velocities of the form
$A$
, let us restrict ourselves to velocities of the form 
 $B =-\lambda{\mathrm{sgn}}(H_{\sigma })D\sigma (\nu )$
, where
$B =-\lambda{\mathrm{sgn}}(H_{\sigma })D\sigma (\nu )$
, where 
 $\lambda \in C(\partial A;\;{\mathbb{R}}_{\geq 0})$
. The normal component of such a vector field
$\lambda \in C(\partial A;\;{\mathbb{R}}_{\geq 0})$
. The normal component of such a vector field 
 $B$
 is
$B$
 is 
 $V=B\cdot \nu = -\lambda{\mathrm{sgn}}(H_{\sigma })\sigma (\nu )$
, and the metric term becomes
$V=B\cdot \nu = -\lambda{\mathrm{sgn}}(H_{\sigma })\sigma (\nu )$
, and the metric term becomes
 \begin{equation*} \|B\|_{*}^{2}={c_{0}}\int _{\partial A}\sigma {^{\circ }}(\lambda D\sigma (\nu ))^{2}\frac {\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal {H}^{d-1}} = {c_{0}}\int _{\partial A}\lambda ^{2}\frac {\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal {H}^{d-1}}={c_{0}} \int _{\partial A}\frac {1}{\mu (\nu )}V^{2}d{\mathcal {H}^{d-1}}, \end{equation*}
\begin{equation*} \|B\|_{*}^{2}={c_{0}}\int _{\partial A}\sigma {^{\circ }}(\lambda D\sigma (\nu ))^{2}\frac {\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal {H}^{d-1}} = {c_{0}}\int _{\partial A}\lambda ^{2}\frac {\sigma (\nu )^{2}}{\mu (\nu )}d{\mathcal {H}^{d-1}}={c_{0}} \int _{\partial A}\frac {1}{\mu (\nu )}V^{2}d{\mathcal {H}^{d-1}}, \end{equation*}
which is in accordance with (1.3). The velocity of steepest descent which was given in Theorem 2.6 satisfies
 \begin{equation*} V=-H_{\sigma }\frac {\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )\cdot \nu = -\mu (\nu )H_{\sigma } \end{equation*}
\begin{equation*} V=-H_{\sigma }\frac {\mu (\nu )}{\sigma (\nu )}D\sigma (\nu )\cdot \nu = -\mu (\nu )H_{\sigma } \end{equation*}
by Lemma 2.3(v), which (formally) verifies the gradient flow structure of (1.1).
2.3 Distributional solutions to anisotropic mean curvature flow
 We introduce a distributional formulation for (1.1) that was proposed in [Reference Laux39]. The idea behind this formulation is to encode the 
 $\sigma$
-mean curvature by a
$\sigma$
-mean curvature by a 
 $(d\times d)$
-matrix via an integration by parts as follows:
$(d\times d)$
-matrix via an integration by parts as follows:
Remark 2.7. Let 
 $A \subset{\mathbb{R}}^{d}$
 be a bounded open set with
$A \subset{\mathbb{R}}^{d}$
 be a bounded open set with 
 $C^{2}$
-boundary. For every vector field
$C^{2}$
-boundary. For every vector field 
 $B\in C^{1}({\mathbb{R}}^{d})^{d}$
, we have
$B\in C^{1}({\mathbb{R}}^{d})^{d}$
, we have
 \begin{equation} \int _{\partial A}\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\;\nabla B\, d{\mathcal{H}^{d-1}} = \int _{\partial A} H_{\sigma }\,B\cdot \nu \, d{\mathcal{H}^{d-1}}. \end{equation}
\begin{equation} \int _{\partial A}\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\;\nabla B\, d{\mathcal{H}^{d-1}} = \int _{\partial A} H_{\sigma }\,B\cdot \nu \, d{\mathcal{H}^{d-1}}. \end{equation}
 To see this, we extend the normal 
 $\nu$
 to a vector field
$\nu$
 to a vector field 
 $\nu \in C^{1}({\mathbb{R}}^{d})^{d}$
, e.g., as a truncation of the normalized gradient
$\nu \in C^{1}({\mathbb{R}}^{d})^{d}$
, e.g., as a truncation of the normalized gradient 
 $\frac{\nabla \mathrm{sdist}}{|\nabla \mathrm{sdist}|}$
 of the signed distance function. There exists an open neighborhood
$\frac{\nabla \mathrm{sdist}}{|\nabla \mathrm{sdist}|}$
 of the signed distance function. There exists an open neighborhood 
 $U$
 of
$U$
 of 
 $\partial A$
 where
$\partial A$
 where 
 $\nu \neq 0$
, and in this neighborhood we can decompose the vector field
$\nu \neq 0$
, and in this neighborhood we can decompose the vector field 
 $B$
 as
$B$
 as
 \begin{align*} B&= \left (B-\frac{1}{\sigma (\nu )}(B\cdot \nu )D\sigma (\nu )\right ) + \frac{1}{\sigma (\nu )}(B\cdot \nu )D\sigma (\nu )\\[5pt] &\;=\!:\; B_{1}+B_{2}. \end{align*}
\begin{align*} B&= \left (B-\frac{1}{\sigma (\nu )}(B\cdot \nu )D\sigma (\nu )\right ) + \frac{1}{\sigma (\nu )}(B\cdot \nu )D\sigma (\nu )\\[5pt] &\;=\!:\; B_{1}+B_{2}. \end{align*}
 The restriction of 
 $B_{1}$
 to
$B_{1}$
 to 
 $\partial A$
 is tangential since, by Lemma 2.3(v), we have
$\partial A$
 is tangential since, by Lemma 2.3(v), we have 
 $B_{1}\cdot \nu = 0$
. By the divergence theorem on the closed surface
$B_{1}\cdot \nu = 0$
. By the divergence theorem on the closed surface 
 $\partial A$
, we obtain
$\partial A$
, we obtain
 \begin{align} 0&= \int _{\partial A}\mathrm{div}_{\partial A}\left (\sigma (\nu )B_{1}\right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )\mathrm{div} B_{1}+ D\sigma (\nu )\cdot \nabla \nu B_{1}-\sigma (\nu )\nu \cdot \nabla B_{1}\nu \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}+\vphantom{\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right )} \right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}}+\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right ) \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{1}+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}+\vphantom{\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right )} \right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}}-B_{1} \cdot \nabla \nu \left (D\sigma (\nu )-\sigma (\nu )\nu \right ) \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{1}\,d{\mathcal{H}^{d-1}}. \end{align}
\begin{align} 0&= \int _{\partial A}\mathrm{div}_{\partial A}\left (\sigma (\nu )B_{1}\right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )\mathrm{div} B_{1}+ D\sigma (\nu )\cdot \nabla \nu B_{1}-\sigma (\nu )\nu \cdot \nabla B_{1}\nu \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}+\vphantom{\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right )} \right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}}+\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right ) \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{1}+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}+\vphantom{\nu \cdot \nabla B_{1}\left (D\sigma (\nu )-\sigma (\nu )\nu \right )} \right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{\sigma (\nu )\mathrm{div} B_{1}- \nu \cdot \nabla B_{1}D\sigma (\nu )+ \left (D\sigma (\nu )-\sigma (\nu )\nu \right )\cdot \nabla \nu B_{1}}-B_{1} \cdot \nabla \nu \left (D\sigma (\nu )-\sigma (\nu )\nu \right ) \right )d{\mathcal{H}^{d-1}}\nonumber \\[5pt] &= \int _{\partial A}\left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{1}\,d{\mathcal{H}^{d-1}}. \end{align}
In this computation, the third equality follows by adding zero and using that 
 $\nu \cdot \nabla \nu \,B_{1} =B_{1}\cdot \nabla \left (\frac{1}{2}|\nu |^{2}\right )=0$
. For the fourth equality observe that
$\nu \cdot \nabla \nu \,B_{1} =B_{1}\cdot \nabla \left (\frac{1}{2}|\nu |^{2}\right )=0$
. For the fourth equality observe that 
 $(\nabla B_{1}){^{T}} \nu + B_{1}){^{T}} \nu + (\nabla \nu ){^{T}} B_{1}=\nabla (B_{1}\cdot \nu )=0$
 since
$(\nabla B_{1}){^{T}} \nu + B_{1}){^{T}} \nu + (\nabla \nu ){^{T}} B_{1}=\nabla (B_{1}\cdot \nu )=0$
 since 
 $B_{1}$
 is tangential. holds true because the second fundamental form
$B_{1}$
 is tangential. holds true because the second fundamental form
 \begin{equation*} \mathrm {I\!I}_{x}\;:\;T_{x}\partial A \times T_{x}\partial A \to {\mathbb {R}}, \qquad \mathrm {I\!I}_{x}(v,w)\;:\!=\;w\cdot (v\cdot \nabla )\nu (x) \end{equation*}
\begin{equation*} \mathrm {I\!I}_{x}\;:\;T_{x}\partial A \times T_{x}\partial A \to {\mathbb {R}}, \qquad \mathrm {I\!I}_{x}(v,w)\;:\!=\;w\cdot (v\cdot \nabla )\nu (x) \end{equation*}
is symmetric for all 
 $x \in \partial A$
 (see [Reference Giga30, Section 1.3]).
$x \in \partial A$
 (see [Reference Giga30, Section 1.3]).
On the other hand, we have
 \begin{align*} \nabla B_{2}&=-\frac{1}{\sigma ^{2}(\nu )}(B\cdot \nu )D\sigma (\nu )\otimes (\nabla \nu ){^{T}} D\sigma (\nu )+\frac{1}{\sigma (\nu )}D\sigma (\nu )\otimes (\nabla \nu ){^{T}} B \\[5pt] &\quad +\frac{1}{\sigma (\nu )}D\sigma (\nu )\otimes (\nabla B){^{T}} \nu +\frac{1}{\sigma (\nu )}(B\cdot \nu )D^{2}\sigma (\nu )\nabla \nu, \end{align*}
\begin{align*} \nabla B_{2}&=-\frac{1}{\sigma ^{2}(\nu )}(B\cdot \nu )D\sigma (\nu )\otimes (\nabla \nu ){^{T}} D\sigma (\nu )+\frac{1}{\sigma (\nu )}D\sigma (\nu )\otimes (\nabla \nu ){^{T}} B \\[5pt] &\quad +\frac{1}{\sigma (\nu )}D\sigma (\nu )\otimes (\nabla B){^{T}} \nu +\frac{1}{\sigma (\nu )}(B\cdot \nu )D^{2}\sigma (\nu )\nabla \nu, \end{align*}
which yields
 \begin{equation} \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{2}= \mathrm{div}(D\sigma (\nu ))B\cdot \nu = H_{\sigma }B\cdot \nu . \end{equation}
\begin{equation} \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ):\nabla B_{2}= \mathrm{div}(D\sigma (\nu ))B\cdot \nu = H_{\sigma }B\cdot \nu . \end{equation}
From (2.15) and (2.16) we obtain (2.14).
 Using the integration by parts (2.14), we arrive at a distributional formulation for anisotropic mean curvature which resembles the isotropic version due to Luckhaus and Sturzenhecker [Reference Luckhaus and Sturzenhecker47]. Following [Reference Laux39], our definition for 
 $BV$
 solutions to anisotropic mean curvature flow also includes an optimal energy dissipation inequality, which alludes to the gradient flow structure of the problem.
$BV$
 solutions to anisotropic mean curvature flow also includes an optimal energy dissipation inequality, which alludes to the gradient flow structure of the problem.
Definition 2.8 (Distributional solutions to anisotropic mean curvature flow). Let 
 $\chi _{0} \in BV(\Omega ;\;\{0,1\})$
. A distributional (or
$\chi _{0} \in BV(\Omega ;\;\{0,1\})$
. A distributional (or 
 $BV$
) solution to
$BV$
) solution to 
 $V=-\mu (\nu ) H_{\sigma }$
 with initial condition
$V=-\mu (\nu ) H_{\sigma }$
 with initial condition 
 $\chi _{0}$
 is a function
$\chi _{0}$
 is a function 
 $\chi \in BV\left (\Omega \times (0,T);\left \{0,1\right \}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
 such that
$\chi \in BV\left (\Omega \times (0,T);\left \{0,1\right \}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
 such that
- 
(i) there exists a  $\big |\nabla \chi \big |$
-measurable function $\big |\nabla \chi \big |$
-measurable function $V\;:\; \Omega \times (0,T) \to{\mathbb{R}}$
 such that(2.17)which is the normal velocity in the sense that for all $V\;:\; \Omega \times (0,T) \to{\mathbb{R}}$
 such that(2.17)which is the normal velocity in the sense that for all \begin{equation} {\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |} \lt \infty, \end{equation} \begin{equation} {\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |} \lt \infty, \end{equation} $\zeta \in C^{1}(\Omega \times [0,T])$
 and $\zeta \in C^{1}(\Omega \times [0,T])$
 and ${T^{\prime }}{T^{\prime }} \in (0,T]$
:(2.18) ${T^{\prime }}{T^{\prime }} \in (0,T]$
:(2.18) \begin{align} \int _{\Omega } \zeta (x,{T^{\prime }})\chi (x,{T^{\prime }})dx&-\int _{\Omega } \zeta (x,0)\chi _{0}(x)dx \nonumber \\[5pt] &=\int _{0}^{{T^{\prime }}}\int _{\Omega } \partial _{t}\zeta (x,t)\chi (x,t)dx dt + \int _{0}^{{T^{\prime }}}\int _{\Omega } \zeta (x,t)V(x,t){\big |\nabla \chi \big |}, \end{align} \begin{align} \int _{\Omega } \zeta (x,{T^{\prime }})\chi (x,{T^{\prime }})dx&-\int _{\Omega } \zeta (x,0)\chi _{0}(x)dx \nonumber \\[5pt] &=\int _{0}^{{T^{\prime }}}\int _{\Omega } \partial _{t}\zeta (x,t)\chi (x,t)dx dt + \int _{0}^{{T^{\prime }}}\int _{\Omega } \zeta (x,t)V(x,t){\big |\nabla \chi \big |}, \end{align}
- 
(ii) the relation  $V=-\mu (\nu ) H_{\sigma }$
 is satisfied in a distributional sense, i.e., for all $V=-\mu (\nu ) H_{\sigma }$
 is satisfied in a distributional sense, i.e., for all $B \in C^{1}(\Omega \times [0,T])^{d}$
, we have(2.19)and $B \in C^{1}(\Omega \times [0,T])^{d}$
, we have(2.19)and \begin{equation} -{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |} ={\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right ){\big |\nabla \chi \big |}, \end{equation} \begin{equation} -{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |} ={\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right ){\big |\nabla \chi \big |}, \end{equation}
- 
(iii) the function  $\chi$
 satisfies the optimal energy dissipation inequality(2.20)for every $\chi$
 satisfies the optimal energy dissipation inequality(2.20)for every \begin{equation} \int _{\Omega }\sigma (\nu )|\nabla \chi ({T^{\prime }})|+\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |} \leq \int _{\Omega }\sigma (\nu )|\nabla \chi _0| \end{equation} \begin{equation} \int _{\Omega }\sigma (\nu )|\nabla \chi ({T^{\prime }})|+\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |} \leq \int _{\Omega }\sigma (\nu )|\nabla \chi _0| \end{equation} ${T^{\prime }} \in [0,T]$
. ${T^{\prime }} \in [0,T]$
.
A prime example of anisotropic mean curvature flow is the following self-similar solution, which generalizes the evolution of shrinking spheres by (isotropic) mean curvature flow. This example of motion by anisotropic mean curvature flow is derived in [Reference Giga30, Section 1.7.2].
Example 2.9 (The Wulff shape). Let 
 $\sigma$
 be an admissible surface tension, and suppose that
$\sigma$
 be an admissible surface tension, and suppose that 
 $\mu =\sigma$
. The Wulff shape associated with
$\mu =\sigma$
. The Wulff shape associated with 
 $\sigma$
 is the set
$\sigma$
 is the set
 \begin{equation} \mathscr{W}_{\sigma }\;:\!=\;\left \{x \in{\mathbb{R}}^{d}\Big | \sigma{^{\circ }}(x)\leq 1 \right \}. \end{equation}
\begin{equation} \mathscr{W}_{\sigma }\;:\!=\;\left \{x \in{\mathbb{R}}^{d}\Big | \sigma{^{\circ }}(x)\leq 1 \right \}. \end{equation}
Then
- 
• the  $\sigma$
-mean curvature of $\sigma$
-mean curvature of $\partial \mathscr{W}_{\sigma }$
 is $\partial \mathscr{W}_{\sigma }$
 is $H_{\sigma }\equiv d-1$
, and $H_{\sigma }\equiv d-1$
, and
- 
• the family  $\{\Gamma (t) \}_{t\in [0,\frac{1}{2(d-1)})}$
 defined by $\{\Gamma (t) \}_{t\in [0,\frac{1}{2(d-1)})}$
 defined by $\Gamma (t)=\sqrt{1-2(d-1)t}\ \partial \mathscr{W}_{\sigma }$
 evolves by anisotropic mean curvature flow $\Gamma (t)=\sqrt{1-2(d-1)t}\ \partial \mathscr{W}_{\sigma }$
 evolves by anisotropic mean curvature flow $V=-\sigma (\nu )H_{\sigma }$
. $V=-\sigma (\nu )H_{\sigma }$
.
In Theorem 4.1, we will prove convergence of the anisotropic Allen–Cahn equation (1.4) to a distributional solution of anisotropic mean curvature flow in the sense of Definition 2.8, but first we must introduce an appropriate notion of solution for (1.4).
3. The anisotropic Allen–Cahn equation
 The goal of this chapter is to construct solutions to the anisotropic Allen–Cahn equation (1.4) and to establish spatial 
 $H^{2}$
-regularity for these solutions.
$H^{2}$
-regularity for these solutions.
 From now on, our assumptions on the double-well potential 
 $W$
 are
$W$
 are
- 
(W1)  $W(0)=W(1)=0$
 and $W(0)=W(1)=0$
 and $W(s)\gt 0$
 for all $W(s)\gt 0$
 for all $s \in{\mathbb{R}}\setminus \{0, 1\}$
, $s \in{\mathbb{R}}\setminus \{0, 1\}$
,
- 
(W2)  $W \in C^{1}({\mathbb{R}})$
, $W \in C^{1}({\mathbb{R}})$
,
- 
(W3)  $W$
 is twice differentiable at $W$
 is twice differentiable at $0$
 and $0$
 and $1$
, with $1$
, with $W^{\prime \prime }(0),\, W^{\prime \prime }(1)\gt 0$
, $W^{\prime \prime }(0),\, W^{\prime \prime }(1)\gt 0$
,
- 
(W4) there exists  $\lambda \gt 0$
 such that $\lambda \gt 0$
 such that $W$
 is $W$
 is $\lambda$
-convex (see Remark 3.1), and $\lambda$
-convex (see Remark 3.1), and
- 
(W5)  $W$
 is nonincreasing on $W$
 is nonincreasing on $(\!-\!\infty, 0]$
 and nondecreasing on $(\!-\!\infty, 0]$
 and nondecreasing on $[1,\infty )$
. $[1,\infty )$
.
While (W1) and (W2) are common assumptions on double-well potentials, (W3) is motivated by the desirable property of exponential convergence of solutions to (1.4) to the wells far away from the diffuse interface and is not necessary for the main results of existence and sharp-interface limit. This assumption was used in a similar way by Sternberg [Reference Sternberg52]. A reference which makes use of the exponential convergence is [Reference Fischer, Laux and Simon24], where Fischer, Simon, and the first author derive a convergence rate for the sharp-interface limit in the isotropic case.
 Assumption (W4) is needed in the proof of existence of solutions to guarantee the convergence of the approximate energies. Assumption (W5) is dispensable if one only considers solutions 
 $u_{\varepsilon }$
 to (1.4) that satisfy
$u_{\varepsilon }$
 to (1.4) that satisfy 
 $0\leq u_{\varepsilon }\leq 1$
 almost everywhere.
$0\leq u_{\varepsilon }\leq 1$
 almost everywhere.
 Up to a linear scaling, a possible choice for 
 $W$
 is the standard double-well potential
$W$
 is the standard double-well potential 
 $W(s)=\frac{9}{16}\left (1-s^{2}\right )^{2}$
. Here, the prefactor
$W(s)=\frac{9}{16}\left (1-s^{2}\right )^{2}$
. Here, the prefactor 
 $\frac{9}{16}$
 is chosen such that
$\frac{9}{16}$
 is chosen such that 
 ${c_{0}}\;:\!=\;\int _{-1}^{1}\sqrt{W(s)}ds=1$
.
${c_{0}}\;:\!=\;\int _{-1}^{1}\sqrt{W(s)}ds=1$
.
Remark 3.1. Let 
 $\mathcal{X}$
 be a Hilbert space and
$\mathcal{X}$
 be a Hilbert space and 
 $\lambda \gt 0$
. A function
$\lambda \gt 0$
. A function 
 $F\;:\;\mathcal{X}\to [0,\infty ]$
 is called
$F\;:\;\mathcal{X}\to [0,\infty ]$
 is called 
 $\lambda$
-convex if the following equivalent conditions are satisfied:
$\lambda$
-convex if the following equivalent conditions are satisfied:
- 
(i) For all  $x_{0}\in \mathcal{X}$
, the mapping $x_{0}\in \mathcal{X}$
, the mapping $x \mapsto F(x)+\frac{\lambda }{2}\left \|x-x_{0}\right \|_{\mathcal{X}}^{2}$
 is convex, $x \mapsto F(x)+\frac{\lambda }{2}\left \|x-x_{0}\right \|_{\mathcal{X}}^{2}$
 is convex,
- 
(ii) for all  $x, y \in \mathcal{X}$
 and $x, y \in \mathcal{X}$
 and $\mu \in (0,1)$
, we have $\mu \in (0,1)$
, we have \begin{equation*} F\left ((1-\mu )x+\mu y\right )\leq (1-\mu )F(x)+\mu F(y) + \frac {\lambda }{2}\mu (1-\mu )\left \|y-x\right \|_{\mathcal {X}}^{2}. \end{equation*} \begin{equation*} F\left ((1-\mu )x+\mu y\right )\leq (1-\mu )F(x)+\mu F(y) + \frac {\lambda }{2}\mu (1-\mu )\left \|y-x\right \|_{\mathcal {X}}^{2}. \end{equation*}
 Furthermore, we will always assume that 
 $(\sigma, \mu )$
 is an admissible pair of anisotropies in accordance with Definition 2.1. The information on the surface tension
$(\sigma, \mu )$
 is an admissible pair of anisotropies in accordance with Definition 2.1. The information on the surface tension 
 $\sigma$
 and mobility
$\sigma$
 and mobility 
 $\mu$
 is contained in the functions
$\mu$
 is contained in the functions 
 $f$
,
$f$
, 
 $g$
 as defined in (1.5) and (1.6), respectively. We remark that there is some freedom with regard to the choice of
$g$
 as defined in (1.5) and (1.6), respectively. We remark that there is some freedom with regard to the choice of 
 $g$
: Since
$g$
: Since 
 $\frac{\sigma (p)}{\mu (p)}$
 is not defined for
$\frac{\sigma (p)}{\mu (p)}$
 is not defined for 
 $p=0$
, adding
$p=0$
, adding 
 $+1$
 in the numerator as well as the denominator (cf. (1.6)) is a means of avoiding a singularity at
$+1$
 in the numerator as well as the denominator (cf. (1.6)) is a means of avoiding a singularity at 
 $0$
. Our existence and conditional convergence statements rely merely on the following properties of
$0$
. Our existence and conditional convergence statements rely merely on the following properties of 
 $g$
:
$g$
:
Lemma 3.2. 
Letting 
 $g$
 be as in (
1.6
), the following holds:
$g$
 be as in (
1.6
), the following holds:
- 
(i) The function  $g\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\gt 0}$
 is continuous, $g\;:\;{\mathbb{R}}^{d}\to{\mathbb{R}}_{\gt 0}$
 is continuous,
- 
(ii) we have  $c_{g}\;:\!=\;\inf _{{\mathbb{R}}^{d}}g \gt 0$
, and $c_{g}\;:\!=\;\inf _{{\mathbb{R}}^{d}}g \gt 0$
, and
- 
(iii) (3.1) \begin{equation} \lim _{|p|\to \infty }\left |g(p)- \frac{\sigma (p)}{\mu (p)} \right |=0. \end{equation} \begin{equation} \lim _{|p|\to \infty }\left |g(p)- \frac{\sigma (p)}{\mu (p)} \right |=0. \end{equation}
 The following weak solution concept for the anisotropic Allen–Cahn equation combines an integration by parts in space (ii) with an optimal energy dissipation identity (iii), which hints at the gradient flow structure of (1.4). Prescribing the initial data as in (i) is possible because 
 $u_{\varepsilon }(0)$
 is well-defined via the embedding
$u_{\varepsilon }(0)$
 is well-defined via the embedding 
 $H^{1}(\Omega \times (0,T))\subset C^{0,\frac{1}{2}}\left ([0,T];\;L^{2}(\Omega )\right )$
.
$H^{1}(\Omega \times (0,T))\subset C^{0,\frac{1}{2}}\left ([0,T];\;L^{2}(\Omega )\right )$
.
Definition 3.3 (Solutions to the anisotropic Allen–Cahn equation). Let 
 $\varepsilon \gt 0$
 and
$\varepsilon \gt 0$
 and 
 $u_{\varepsilon,0} \in \mathrm{dom}(E_{\varepsilon })$
. A function
$u_{\varepsilon,0} \in \mathrm{dom}(E_{\varepsilon })$
. A function
 \begin{equation*}u_{\varepsilon } \in H^{1}(\Omega \times (0,T)) \cap L^{\infty }(\Omega \times (0,T)) \end{equation*}
\begin{equation*}u_{\varepsilon } \in H^{1}(\Omega \times (0,T)) \cap L^{\infty }(\Omega \times (0,T)) \end{equation*}
is a solution to the anisotropic Allen–Cahn equation with initial data 
 $u_{\varepsilon,0}$
 if
$u_{\varepsilon,0}$
 if
- 
(i) (3.2) \begin{equation} u_{\varepsilon }(0) = u_{\varepsilon,0}, \end{equation} \begin{equation} u_{\varepsilon }(0) = u_{\varepsilon,0}, \end{equation}
- 
(ii) (3.3) \begin{equation} {\int _{0}^{T}\int _{\Omega }} g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }\varphi \, dx dt ={\int _{0}^{T}\int _{\Omega }} \frac{1}{2}\left (D f(\!-\!\nabla u_{\varepsilon }))\cdot \nabla \varphi -\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon }) \varphi \right ) dx dt \end{equation} \begin{equation} {\int _{0}^{T}\int _{\Omega }} g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }\varphi \, dx dt ={\int _{0}^{T}\int _{\Omega }} \frac{1}{2}\left (D f(\!-\!\nabla u_{\varepsilon }))\cdot \nabla \varphi -\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon }) \varphi \right ) dx dt \end{equation}for all  $\varphi \in C^{1}(\Omega \times [0,T])$
, and $\varphi \in C^{1}(\Omega \times [0,T])$
, and
- 
(iii) (3.4) \begin{equation} E_{\varepsilon }[u_{\varepsilon }({T^{\prime }})] + \int _{0}^{T^{\prime }}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dx dt = E_{\varepsilon }[u_{\varepsilon,0}] \end{equation} \begin{equation} E_{\varepsilon }[u_{\varepsilon }({T^{\prime }})] + \int _{0}^{T^{\prime }}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dx dt = E_{\varepsilon }[u_{\varepsilon,0}] \end{equation}for all  ${T^{\prime }} \in (0,T]$
. ${T^{\prime }} \in (0,T]$
.
We comment on the typical behavior of the anisotropic Allen–Cahn equation (1.4).
Remark 3.4. The reaction term 
 $-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })$
 forces the solution
$-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })$
 forces the solution 
 $u_{\varepsilon }$
 towards the wells of
$u_{\varepsilon }$
 towards the wells of 
 $W$
, i.e., towards the set
$W$
, i.e., towards the set 
 $\{0, 1\}$
. The interplay of the reaction term with the anisotropic diffusion term
$\{0, 1\}$
. The interplay of the reaction term with the anisotropic diffusion term 
 $-\mathrm{div}\left (Df(\!-\!\nabla u_{\varepsilon })\right )$
 results in a transition layer of width
$-\mathrm{div}\left (Df(\!-\!\nabla u_{\varepsilon })\right )$
 results in a transition layer of width 
 $\mathcal{O}(\varepsilon )$
 whose shape also depends on the direction of the approximate outer normal
$\mathcal{O}(\varepsilon )$
 whose shape also depends on the direction of the approximate outer normal 
 $-\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}$
. More precisely, the typical width of the transition layer is
$-\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}$
. More precisely, the typical width of the transition layer is 
 $\varepsilon \sigma\!\left (-\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}\right )$
.
$\varepsilon \sigma\!\left (-\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}\right )$
.
 To see this, one can choose the 
 $1$
-dimensional stationary ansatz
$1$
-dimensional stationary ansatz
 \begin{equation} u_{\varepsilon }\;:\;{\mathbb{R}}^{d}\times{\mathbb{R}}_{\geq 0}\to{\mathbb{R}}, \qquad u_{\varepsilon }(x,t)=U_{\varepsilon }(x\cdot \nu ), \end{equation}
\begin{equation} u_{\varepsilon }\;:\;{\mathbb{R}}^{d}\times{\mathbb{R}}_{\geq 0}\to{\mathbb{R}}, \qquad u_{\varepsilon }(x,t)=U_{\varepsilon }(x\cdot \nu ), \end{equation}
with 
 $\nu \in S^{d-1}$
 being a fixed unit-length vector. Together with a monotonicity assumption on the transition, this admits the solution
$\nu \in S^{d-1}$
 being a fixed unit-length vector. Together with a monotonicity assumption on the transition, this admits the solution
 \begin{equation} u_{\varepsilon }(x,t)=\Theta \left (-\frac{x\cdot \nu }{\varepsilon \sigma (\nu )}\right ), \end{equation}
\begin{equation} u_{\varepsilon }(x,t)=\Theta \left (-\frac{x\cdot \nu }{\varepsilon \sigma (\nu )}\right ), \end{equation}
where 
 $\Theta$
 is the unique solution to
$\Theta$
 is the unique solution to
 \begin{equation} \Theta ^{\prime }=\sqrt{W(\Theta )}, \qquad \Theta (0)=1/2. \end{equation}
\begin{equation} \Theta ^{\prime }=\sqrt{W(\Theta )}, \qquad \Theta (0)=1/2. \end{equation}
 With this in mind, we note that the weighted 
 $L^{2}$
-metric (1.8) depends on
$L^{2}$
-metric (1.8) depends on 
 $\sigma$
 and
$\sigma$
 and 
 $\mu$
, whereas anisotropic mean curvature is a gradient flow with respect to the metric (1.3), which depends only on
$\mu$
, whereas anisotropic mean curvature is a gradient flow with respect to the metric (1.3), which depends only on 
 $\mu$
. This can be explained by the idea that, in the anisotropic Allen–Cahn equation, the metric (1.8) has to compensate for the typical width of the transition layer varying with the orientation of the normal.
$\mu$
. This can be explained by the idea that, in the anisotropic Allen–Cahn equation, the metric (1.8) has to compensate for the typical width of the transition layer varying with the orientation of the normal.
3.1 Existence of weak solutions
Theorem 3.5 (Existence). Let 
 $\varepsilon \gt 0$
 and
$\varepsilon \gt 0$
 and 
 $u_{0} \in \mathrm{dom}(E_{\varepsilon })\cap L^{\infty }(\Omega )$
. For any finite time horizon
$u_{0} \in \mathrm{dom}(E_{\varepsilon })\cap L^{\infty }(\Omega )$
. For any finite time horizon 
 $T \in (0,\infty )$
, there exists a solution
$T \in (0,\infty )$
, there exists a solution 
 $u$
 to the anisotropic Allen–Cahn equation in the sense of Definition 3.3 with initial data
$u$
 to the anisotropic Allen–Cahn equation in the sense of Definition 3.3 with initial data 
 $u_{0}$
. Furthermore,
$u_{0}$
. Furthermore, 
 $u$
 satisfies
$u$
 satisfies
 \begin{equation} \|u-1/2\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\|u_{0}-1/2\|_{L^{\infty }(\Omega )},1/2 \right \}. \end{equation}
\begin{equation} \|u-1/2\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\|u_{0}-1/2\|_{L^{\infty }(\Omega )},1/2 \right \}. \end{equation}
 To prove this existence theorem, we exploit the gradient-flow structure of the equation and construct solutions via a minimizing movements scheme. To this end, we consider an approximation of the PDE (1.4) that replaces the time derivative by difference quotients: Given a time-step size 
 $h\gt 0$
, let us look for functions
$h\gt 0$
, let us look for functions 
 $\{u_{h}^{n}\}_{n\in{\mathbb{N}}_{0}}$
 that solve
$\{u_{h}^{n}\}_{n\in{\mathbb{N}}_{0}}$
 that solve
 \begin{align} 2g(\!-\!\nabla{u_{h}^{n-1}})\frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}&=-\mathrm{div}(Df(\!-\!\nabla{u_{h}^{n}})) -\frac{1}{\varepsilon ^{2}}W^{\prime }({u_{h}^{n}}), \qquad n\in{\mathbb{N}}, \end{align}
\begin{align} 2g(\!-\!\nabla{u_{h}^{n-1}})\frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}&=-\mathrm{div}(Df(\!-\!\nabla{u_{h}^{n}})) -\frac{1}{\varepsilon ^{2}}W^{\prime }({u_{h}^{n}}), \qquad n\in{\mathbb{N}}, \end{align}
 \begin{align} u_{h}^{0}&=u_{0}. \end{align}
\begin{align} u_{h}^{0}&=u_{0}. \end{align}
In fact, equation (3.9) is the strong Euler–Lagrange equation of the variational problem
 \begin{equation} {u_{h}^{n}}\in \underset{u \in L^{2}(\Omega )}{\arg \min }\left \{E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \right \}, \qquad n \in{\mathbb{N}}, \end{equation}
\begin{equation} {u_{h}^{n}}\in \underset{u \in L^{2}(\Omega )}{\arg \min }\left \{E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \right \}, \qquad n \in{\mathbb{N}}, \end{equation}
where we recall the energy (1.7) and the inner-product (1.8) for which we use the notation
 \begin{equation*} \|v\|_{u}\;:\!=\;{(v,v)_{u}}^{\frac {1}{2}}, \end{equation*}
\begin{equation*} \|v\|_{u}\;:\!=\;{(v,v)_{u}}^{\frac {1}{2}}, \end{equation*}
in which the dependence on 
 $\varepsilon$
 is suppressed again.
$\varepsilon$
 is suppressed again.
 Equation (3.9) does not precisely resemble an implicit Euler scheme as it features the explicit term 
 $g(\!-\!\nabla{u_{h}^{n-1}})$
 rather than the implicit term
$g(\!-\!\nabla{u_{h}^{n-1}})$
 rather than the implicit term 
 $g(\!-\!\nabla{u_{h}^{n}})$
. Instead (3.9) can be viewed an implicit-explicit splitting discretization scheme of (1.4). This is mirrored in the minimization problem (3.11) by the occurrence of the metric
$g(\!-\!\nabla{u_{h}^{n}})$
. Instead (3.9) can be viewed an implicit-explicit splitting discretization scheme of (1.4). This is mirrored in the minimization problem (3.11) by the occurrence of the metric 
 $(\cdot,\cdot )_{{u_{h}^{n-1}}}$
, which is taken with respect to the constant point
$(\cdot,\cdot )_{{u_{h}^{n-1}}}$
, which is taken with respect to the constant point 
 $u_{h}^{n-1}$
 and therefore does not depend on
$u_{h}^{n-1}$
 and therefore does not depend on 
 $u$
. Thanks to this choice, one can immediately prove that (3.11) admits a unique solution as soon as
$u$
. Thanks to this choice, one can immediately prove that (3.11) admits a unique solution as soon as 
 $h$
 is small enough, using the direct method in the calculus of variations:
$h$
 is small enough, using the direct method in the calculus of variations:
Lemma 3.6. 
Let 
 $E_\varepsilon$
 be defined as in (
1.7
) and assumptions 
(W1)
–
(W5)
 hold. It follows that:
$E_\varepsilon$
 be defined as in (
1.7
) and assumptions 
(W1)
–
(W5)
 hold. It follows that:
- 
(i) The energy  $E_{\varepsilon }$
 is $E_{\varepsilon }$
 is $\frac{\lambda }{2\varepsilon }$
-convex on $\frac{\lambda }{2\varepsilon }$
-convex on $L^{2}(\Omega )$
, $L^{2}(\Omega )$
,
- 
(ii) if  $h \lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
, then $h \lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
, then $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 is strongly convex, $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 is strongly convex,
- 
(iii) for all  $h \gt 0$
, the mapping $h \gt 0$
, the mapping $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 is lower semicontinuous on $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 is lower semicontinuous on $L^{2}(\Omega )$
, $L^{2}(\Omega )$
,
- 
(iii) for  $h \lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
 and $h \lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
 and ${u_{h}^{n-1}} \in \mathrm{dom}(E_{\varepsilon })$
, there exists a unique minimizer ${u_{h}^{n-1}} \in \mathrm{dom}(E_{\varepsilon })$
, there exists a unique minimizer ${u_{h}^{n}} \in \mathrm{dom}(E_{\varepsilon })$
 for (
3.11
), and ${u_{h}^{n}} \in \mathrm{dom}(E_{\varepsilon })$
 for (
3.11
), and $\|{u_{h}^{n}}\|_{L^{\infty }}\leq \max \left \{\|{u_{h}^{n-1}}\|_{L^{\infty }},1 \right \}$
. $\|{u_{h}^{n}}\|_{L^{\infty }}\leq \max \left \{\|{u_{h}^{n-1}}\|_{L^{\infty }},1 \right \}$
.
Proof.
- 
(i) Let  $u, v \in L^{2}(\Omega )$
 and $u, v \in L^{2}(\Omega )$
 and $\mu \in [0,1]$
. We will use the equivalent formulation (ii) in Remark 3.1, so that we have to show thatfor all $\mu \in [0,1]$
. We will use the equivalent formulation (ii) in Remark 3.1, so that we have to show thatfor all \begin{equation*} E_{\varepsilon }[(1-\mu )u+\mu v] \leq (1-\mu ) E_{\varepsilon }[u]+ \mu E_{\varepsilon }[v]+\frac {\lambda }{4\varepsilon }\mu (1-\mu )\|v-u\|_{L^{2}}^{2} \end{equation*} \begin{equation*} E_{\varepsilon }[(1-\mu )u+\mu v] \leq (1-\mu ) E_{\varepsilon }[u]+ \mu E_{\varepsilon }[v]+\frac {\lambda }{4\varepsilon }\mu (1-\mu )\|v-u\|_{L^{2}}^{2} \end{equation*} $u,v \in L^{2}(\Omega )$
 and $u,v \in L^{2}(\Omega )$
 and $\mu \in (0,1)$
. We can assume without loss of generality that $\mu \in (0,1)$
. We can assume without loss of generality that $u, v \in \mathrm{dom}(E_{\varepsilon })$
. Exploiting the convexity of $u, v \in \mathrm{dom}(E_{\varepsilon })$
. Exploiting the convexity of $f$
 as well as the $f$
 as well as the $\lambda$
-convexity of $\lambda$
-convexity of $W$
 (W4), we obtain(3.12) $W$
 (W4), we obtain(3.12) \begin{align} E_{\varepsilon }[(1-\mu )u+\mu v] &= \frac{1}{2}\int _{\Omega }\left (\varepsilon f(\!-(1-\mu )\nabla u - \mu \nabla v)+\frac{1}{\varepsilon }W((1-\mu )u+\mu v)\right )dx \nonumber \\[5pt] &\leq \frac{1}{2}\int _{\Omega }\left (\varepsilon (1-\mu ) f(\!-\!\nabla u) +\varepsilon \mu f(\!-\!\nabla v) \right )dx \nonumber \\[5pt] &\quad + \frac{1}{2}\int _{\Omega }\left (\frac{1-\mu }{\varepsilon }W(u)+\frac{\mu }{\varepsilon }W(v)+\frac{\lambda }{2\varepsilon }\mu (1-\mu )|v-u|^{2}\right )dx \nonumber \\[5pt] &\leq (1-\mu )E_{\varepsilon }[u]+\mu E_{\varepsilon }[v] + \frac{\lambda }{4\varepsilon }\mu (1-\mu )\left \|v-u\right \|_{L^{2}}^{2}. \end{align} \begin{align} E_{\varepsilon }[(1-\mu )u+\mu v] &= \frac{1}{2}\int _{\Omega }\left (\varepsilon f(\!-(1-\mu )\nabla u - \mu \nabla v)+\frac{1}{\varepsilon }W((1-\mu )u+\mu v)\right )dx \nonumber \\[5pt] &\leq \frac{1}{2}\int _{\Omega }\left (\varepsilon (1-\mu ) f(\!-\!\nabla u) +\varepsilon \mu f(\!-\!\nabla v) \right )dx \nonumber \\[5pt] &\quad + \frac{1}{2}\int _{\Omega }\left (\frac{1-\mu }{\varepsilon }W(u)+\frac{\mu }{\varepsilon }W(v)+\frac{\lambda }{2\varepsilon }\mu (1-\mu )|v-u|^{2}\right )dx \nonumber \\[5pt] &\leq (1-\mu )E_{\varepsilon }[u]+\mu E_{\varepsilon }[v] + \frac{\lambda }{4\varepsilon }\mu (1-\mu )\left \|v-u\right \|_{L^{2}}^{2}. \end{align}
- 
(ii) This follows from (i) and quantifying the strong convexity of the metric term: Given  $u, v \in L^{2}(\Omega )$
 and $u, v \in L^{2}(\Omega )$
 and $\mu \in (0,1)$
, we compute
(3.13)Combining (3.12) with (3.13) yields strong convexity for $\mu \in (0,1)$
, we compute
(3.13)Combining (3.12) with (3.13) yields strong convexity for \begin{align} \frac{1}{2h}\left \|((1-\mu )u\vphantom{+\mu v)-{u_{h}^{n-1}}}\right .& \left .\vphantom{((1-\mu )u}\hspace{-3pt}{+} \mu v)-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &= \frac{1-\mu }{2h}\|u-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}+\frac{\mu }{2h}\|v-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &\quad - \frac{\mu (1-\mu )}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}})|v-u|^{2}dx \\ &\leq \frac{1-\mu }{2h}\|u-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}+\frac{\mu }{2h}\|v-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &\quad - \frac{\varepsilon c_{g}}{2h}\mu (1-\mu )\left \|v-u\right \|_{L^{2}}^{2}. \end{align} \begin{align} \frac{1}{2h}\left \|((1-\mu )u\vphantom{+\mu v)-{u_{h}^{n-1}}}\right .& \left .\vphantom{((1-\mu )u}\hspace{-3pt}{+} \mu v)-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &= \frac{1-\mu }{2h}\|u-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}+\frac{\mu }{2h}\|v-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &\quad - \frac{\mu (1-\mu )}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}})|v-u|^{2}dx \\ &\leq \frac{1-\mu }{2h}\|u-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}+\frac{\mu }{2h}\|v-{u_{h}^{n-1}}\|_{{u_{h}^{n-1}}}^{2}\nonumber \\[5pt] &\quad - \frac{\varepsilon c_{g}}{2h}\mu (1-\mu )\left \|v-u\right \|_{L^{2}}^{2}. \end{align} $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 if $u \mapsto E_{\varepsilon }[u]+\frac{1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}$
 if $\frac{\lambda }{4\varepsilon }\lt \frac{\varepsilon c_{g}}{2h},$
 or, equivalently, if $\frac{\lambda }{4\varepsilon }\lt \frac{\varepsilon c_{g}}{2h},$
 or, equivalently, if $h\lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
. $h\lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
.
- 
(iii) This will follow from the lower semi-continuity of the individual terms. To see that the anisotropic Dirichlet energy is lower semi-continuous, we can assume without restriction that  $v_{k} \in H^{1}(\Omega )$
 for all $v_{k} \in H^{1}(\Omega )$
 for all $k \in{\mathbb{N}}$
, so that it remains to prove thatWithout loss of generality, $k \in{\mathbb{N}}$
, so that it remains to prove thatWithout loss of generality, \begin{equation*} \frac {\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla v)dx \leq \liminf _{k \to \infty }\frac {\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla v_{k})dx. \end{equation*} \begin{equation*} \frac {\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla v)dx \leq \liminf _{k \to \infty }\frac {\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla v_{k})dx. \end{equation*} $v_k$
 converge to $v_k$
 converge to $v$
 weakly in $v$
 weakly in $H^1(\Omega ),$
 and lower semi-continuous follows from convexity of $H^1(\Omega ),$
 and lower semi-continuous follows from convexity of $f$
. The lower semicontinuity of the potential term $f$
. The lower semicontinuity of the potential term $\int _{\Omega } W(u) \, dx$
 and the metric term $\int _{\Omega } W(u) \, dx$
 and the metric term $u\mapsto \frac{1}{2h}\left \|u-{u_{h}^{n-1}} \right \|_{{u_{h}^{n-1}}}^{2}$
 follow from Fatou’s lemma. $u\mapsto \frac{1}{2h}\left \|u-{u_{h}^{n-1}} \right \|_{{u_{h}^{n-1}}}^{2}$
 follow from Fatou’s lemma.
- 
(iv) The functional to be minimized is proper. Let  $\left \{v_{k}\right \}_{k \in{\mathbb{N}}}$
 be a minimizing sequence, i.e.,Every minimizing sequence is bounded in $\left \{v_{k}\right \}_{k \in{\mathbb{N}}}$
 be a minimizing sequence, i.e.,Every minimizing sequence is bounded in \begin{equation*} \lim _{k \to \infty } \left (E_{\varepsilon }[v_{k}]+\frac {1}{2h}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right ) =\inf _{u \in L^{2}(\Omega )}\left \{E_{\varepsilon }[u]+\frac {1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right \}. \end{equation*} \begin{equation*} \lim _{k \to \infty } \left (E_{\varepsilon }[v_{k}]+\frac {1}{2h}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right ) =\inf _{u \in L^{2}(\Omega )}\left \{E_{\varepsilon }[u]+\frac {1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right \}. \end{equation*} $H^{1}(\Omega )$
 since(3.14)By Rellich’s theorem, there exists a subsequence converging in $H^{1}(\Omega )$
 since(3.14)By Rellich’s theorem, there exists a subsequence converging in \begin{align} \left \|v_{k}\right \|_{H^{1}}^{2}&\leq 2\left \|v_{k}-{u_{h}^{n-1}}\right \|_{L^{2}}^{2} + 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+ \left \|\nabla v_{k}\right \|_{L^{2}}^{2}\nonumber \\[5pt] &\leq \frac{2}{\varepsilon c_{g}}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} + 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+ \frac{1}{(\!\min _{S^{d-1}}\sigma )^{2}}\int _{\Omega }f(\!-\!\nabla v_{k})dx\nonumber \\[5pt] &\leq 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+\left (\frac{4h}{\varepsilon c_{g}}+\frac{2}{\varepsilon (\!\min _{S^{d-1}}\sigma )^{2}} \right )\left (E_{\varepsilon }[v_{k}]+\frac{1}{2h}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right ). \end{align} \begin{align} \left \|v_{k}\right \|_{H^{1}}^{2}&\leq 2\left \|v_{k}-{u_{h}^{n-1}}\right \|_{L^{2}}^{2} + 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+ \left \|\nabla v_{k}\right \|_{L^{2}}^{2}\nonumber \\[5pt] &\leq \frac{2}{\varepsilon c_{g}}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} + 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+ \frac{1}{(\!\min _{S^{d-1}}\sigma )^{2}}\int _{\Omega }f(\!-\!\nabla v_{k})dx\nonumber \\[5pt] &\leq 2 \left \|{u_{h}^{n-1}}\right \|_{L^{2}}^{2}+\left (\frac{4h}{\varepsilon c_{g}}+\frac{2}{\varepsilon (\!\min _{S^{d-1}}\sigma )^{2}} \right )\left (E_{\varepsilon }[v_{k}]+\frac{1}{2h}\left \|v_{k}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right ). \end{align} $L^{2}(\Omega )$
 to a limit function $L^{2}(\Omega )$
 to a limit function $v \in L^{2}(\Omega )$
. The lower semicontinuity (iii) then shows thatThe minimizer $v \in L^{2}(\Omega )$
. The lower semicontinuity (iii) then shows thatThe minimizer \begin{equation*} v \in \underset {u \in L^{2}(\Omega )}{\arg \min }\left \{E_{\varepsilon }[u]+ \frac {1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \right \}. \end{equation*} \begin{equation*} v \in \underset {u \in L^{2}(\Omega )}{\arg \min }\left \{E_{\varepsilon }[u]+ \frac {1}{2h}\left \|u-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \right \}. \end{equation*} $v$
 is unique due to the strong convexity (ii). For the $v$
 is unique due to the strong convexity (ii). For the $L^{\infty }$
-bound, we define a truncated version of $L^{\infty }$
-bound, we define a truncated version of $u_{h}^{n}$
 bywhere $u_{h}^{n}$
 bywhere \begin{equation*} v(x)\;:\!=\;\begin {cases} -\alpha ^{n-1}+\tfrac 12 &\text {if } {u_{h}^{n}}(x)\lt -\alpha ^{n-1}+\tfrac 12,\\[5pt] {u_{h}^{n}}(x)&\text {if } |{u_{h}^{n}}(x)-\tfrac 12|\leq \alpha ^{n-1},\\[5pt] \alpha ^{n-1}+\tfrac 12 &\text {if } {u_{h}^{n}}(x)\gt \alpha ^{n-1}+\tfrac 12, \end {cases} \end{equation*} \begin{equation*} v(x)\;:\!=\;\begin {cases} -\alpha ^{n-1}+\tfrac 12 &\text {if } {u_{h}^{n}}(x)\lt -\alpha ^{n-1}+\tfrac 12,\\[5pt] {u_{h}^{n}}(x)&\text {if } |{u_{h}^{n}}(x)-\tfrac 12|\leq \alpha ^{n-1},\\[5pt] \alpha ^{n-1}+\tfrac 12 &\text {if } {u_{h}^{n}}(x)\gt \alpha ^{n-1}+\tfrac 12, \end {cases} \end{equation*} $\alpha ^{n-1} \;:\!=\; \max \{\|{u_{h}^{n-1}}-\tfrac 12\|_{L^{\infty }},\tfrac 12\}.$
 Letting $\alpha ^{n-1} \;:\!=\; \max \{\|{u_{h}^{n-1}}-\tfrac 12\|_{L^{\infty }},\tfrac 12\}.$
 Letting $A\;:\!=\; \{x\in \Omega \,\big |\, v(x)\neq{u_{h}^{n}}(x) \}$
, it follows from $A\;:\!=\; \{x\in \Omega \,\big |\, v(x)\neq{u_{h}^{n}}(x) \}$
, it follows from ${u_{h}^{n}} \in \mathrm{dom}(E_{\varepsilon })\subseteq H^{1}(\Omega )$
 and a general fact about Sobolev spaces that ${u_{h}^{n}} \in \mathrm{dom}(E_{\varepsilon })\subseteq H^{1}(\Omega )$
 and a general fact about Sobolev spaces that $v \in H^{1}(\Omega )$
 and(3.15)Then, using (3.15), the positive definiteness of $v \in H^{1}(\Omega )$
 and(3.15)Then, using (3.15), the positive definiteness of \begin{equation} \nabla v(x) =\begin{cases} \nabla{u_{h}^{n}}(x) &\text{for almost every } x \in \Omega \setminus A,\\[5pt] 0&\text{for almost every } x\in A.\end{cases} \end{equation} \begin{equation} \nabla v(x) =\begin{cases} \nabla{u_{h}^{n}}(x) &\text{for almost every } x \in \Omega \setminus A,\\[5pt] 0&\text{for almost every } x\in A.\end{cases} \end{equation} $\sigma$
, the monotonicity assumption (W5), and the pointwise inequality $\sigma$
, the monotonicity assumption (W5), and the pointwise inequality $|v-{u_{h}^{n-1}}|\leq |{u_{h}^{n}}-{u_{h}^{n-1}}|$
, one obtainsBy the uniqueness of minimizers, this implies that $|v-{u_{h}^{n-1}}|\leq |{u_{h}^{n}}-{u_{h}^{n-1}}|$
, one obtainsBy the uniqueness of minimizers, this implies that \begin{align*} E_{\varepsilon }[v]+\frac{1}{2h}\left \|v-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}&\leq \frac{\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla{u_{h}^{n}})dx+\frac{1}{2\varepsilon }\int _{\Omega }W({u_{h}^{n}})dx\\[5pt] &\quad +\frac{\varepsilon }{2h}\int _{\Omega }g(\!-\!\nabla{u_{h}^{n-1}})|{u_{h}^{n}}-{u_{h}^{n-1}}|^{2}dx\\[5pt] &=E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}. \end{align*} \begin{align*} E_{\varepsilon }[v]+\frac{1}{2h}\left \|v-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}&\leq \frac{\varepsilon }{2}\int _{\Omega }f(\!-\!\nabla{u_{h}^{n}})dx+\frac{1}{2\varepsilon }\int _{\Omega }W({u_{h}^{n}})dx\\[5pt] &\quad +\frac{\varepsilon }{2h}\int _{\Omega }g(\!-\!\nabla{u_{h}^{n-1}})|{u_{h}^{n}}-{u_{h}^{n-1}}|^{2}dx\\[5pt] &=E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}. \end{align*} $v={u_{h}^{n}}$
 and, therefore, $v={u_{h}^{n}}$
 and, therefore, \begin{equation*} \|{u_{h}^{n}}-\tfrac 12\|_{L^{\infty }}=\|v-\tfrac 12\|_{L^{\infty }}\leq \alpha ^{n-1} = \max \left \{\|{u_{h}^{n-1}}-\tfrac 12\|_{L^{\infty }},\tfrac 12 \right \}. \end{equation*} \begin{equation*} \|{u_{h}^{n}}-\tfrac 12\|_{L^{\infty }}=\|v-\tfrac 12\|_{L^{\infty }}\leq \alpha ^{n-1} = \max \left \{\|{u_{h}^{n-1}}-\tfrac 12\|_{L^{\infty }},\tfrac 12 \right \}. \end{equation*}
 In order to pass to the limit 
 $h \searrow 0$
, we define one affine and two piecewise constant interpolations: For
$h \searrow 0$
, we define one affine and two piecewise constant interpolations: For 
 $n \in{\mathbb{N}}$
 such that
$n \in{\mathbb{N}}$
 such that 
 $t \in [(n-1)h, nh)$
 let
$t \in [(n-1)h, nh)$
 let
 \begin{align} u_{h}(t)&\;:\!=\; \frac{t-(n-1)h}{h}{u_{h}^{n}}+\frac{nh-t}{h}{u_{h}^{n-1}}, \nonumber \\[5pt] \overline{u}_{h}(t)&\;:\!=\;{u_{h}^{n}}, \nonumber \\[5pt] \underline{u}_{h}(t)&\;:\!=\;{u_{h}^{n-1}}, \end{align}
\begin{align} u_{h}(t)&\;:\!=\; \frac{t-(n-1)h}{h}{u_{h}^{n}}+\frac{nh-t}{h}{u_{h}^{n-1}}, \nonumber \\[5pt] \overline{u}_{h}(t)&\;:\!=\;{u_{h}^{n}}, \nonumber \\[5pt] \underline{u}_{h}(t)&\;:\!=\;{u_{h}^{n-1}}, \end{align}
where 
 ${u_{h}^{0}} \in \mathrm{dom}(E)$
 and
${u_{h}^{0}} \in \mathrm{dom}(E)$
 and 
 $u_{h}^{n}$
 are defined inductively via (3.11) for
$u_{h}^{n}$
 are defined inductively via (3.11) for 
 $n \in{\mathbb{N}}$
.
$n \in{\mathbb{N}}$
.
 Before we turn to the limiting function 
 $u$
, let us prove the following inequality, which is a consequence of the
$u$
, let us prove the following inequality, which is a consequence of the 
 $\frac{\lambda }{2\varepsilon }$
-convexity of
$\frac{\lambda }{2\varepsilon }$
-convexity of 
 $E_{\varepsilon }$
 and the minimizing property of the time steps
$E_{\varepsilon }$
 and the minimizing property of the time steps 
 $u_{h}^{n}$
$u_{h}^{n}$
 
 $u_{h}^{n}$
 (3.11):
$u_{h}^{n}$
 (3.11):
Lemma 3.7. 
Let 
 $h\lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
 and
$h\lt \frac{2\varepsilon ^{2}c_{g}}{\lambda }$
 and 
 $w \in L^{2}(\Omega \times (0,T))$
. Then
$w \in L^{2}(\Omega \times (0,T))$
. Then
 \begin{equation} E_{\varepsilon }[w(t)]\geq E_{\varepsilon }[\overline{u}_{h}(t)] - \int _{\Omega }\varepsilon g(\!-\!\nabla \underline{u}_{h}(t))\partial _{t}u_{h}(t)\left (w(t)-\overline{u}_{h}(t)\right )dx - \frac{\lambda }{4\varepsilon }\int _{\Omega }\left |w(t)-\overline{u}_{h}(t)\right |^{2}dx \end{equation}
\begin{equation} E_{\varepsilon }[w(t)]\geq E_{\varepsilon }[\overline{u}_{h}(t)] - \int _{\Omega }\varepsilon g(\!-\!\nabla \underline{u}_{h}(t))\partial _{t}u_{h}(t)\left (w(t)-\overline{u}_{h}(t)\right )dx - \frac{\lambda }{4\varepsilon }\int _{\Omega }\left |w(t)-\overline{u}_{h}(t)\right |^{2}dx \end{equation}
for almost every 
 $t \in (0,T)$
.
$t \in (0,T)$
.
Proof. It suffices to prove the corresponding inequality involving the time steps 
 $u_{h}^{n}$
,
$u_{h}^{n}$
, 
 $n \in{\mathbb{N}}$
: Let
$n \in{\mathbb{N}}$
: Let 
 $h\lt \frac{\varepsilon ^{2}c_{g}}{2\lambda }$
 and
$h\lt \frac{\varepsilon ^{2}c_{g}}{2\lambda }$
 and 
 $n \in{\mathbb{N}}$
. Then for all
$n \in{\mathbb{N}}$
. Then for all 
 $v \in L^{2}(\Omega )$
, we have
$v \in L^{2}(\Omega )$
, we have
 \begin{equation} E_{\varepsilon }[v]\geq E_{\varepsilon }[{u_{h}^{n}}]-\int _{\Omega } \varepsilon g(\!-\!\nabla{u_{h}^{n-1}})\frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}\left (v-{u_{h}^{n}}\right )dx - \frac{\lambda }{4\varepsilon } \int _{\Omega } \left |v-{u_{h}^{n}}\right |^{2}dx. \end{equation}
\begin{equation} E_{\varepsilon }[v]\geq E_{\varepsilon }[{u_{h}^{n}}]-\int _{\Omega } \varepsilon g(\!-\!\nabla{u_{h}^{n-1}})\frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}\left (v-{u_{h}^{n}}\right )dx - \frac{\lambda }{4\varepsilon } \int _{\Omega } \left |v-{u_{h}^{n}}\right |^{2}dx. \end{equation}
 Clearly, one can write the interpolations 
 $u_{h}$
,
$u_{h}$
, 
 $\overline{u}_{h}$
, and
$\overline{u}_{h}$
, and 
 $\underline{u}_{h}$
 on the left-hand side of (3.17) in terms of the time steps, choosing
$\underline{u}_{h}$
 on the left-hand side of (3.17) in terms of the time steps, choosing 
 $n=n(t) \in{\mathbb{N}}$
 such that
$n=n(t) \in{\mathbb{N}}$
 such that 
 $t \in [(n(t)-1)h, n(t)h)$
. We also observe that the piecewise affine interpolation
$t \in [(n(t)-1)h, n(t)h)$
. We also observe that the piecewise affine interpolation 
 $u_{h} \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 has a weak time derivative
$u_{h} \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 has a weak time derivative 
 $\partial _{t}u_{h}$
 given by
$\partial _{t}u_{h}$
 given by
 \begin{equation*} \partial _{t}u_{h}(t)=\frac {\overline {u}_{h}(t)-\underline {u}_{h}(t)}{h} = \frac {{u_{h}^{n(t)}}-{u_{h}^{n(t)-1}}}{h} \end{equation*}
\begin{equation*} \partial _{t}u_{h}(t)=\frac {\overline {u}_{h}(t)-\underline {u}_{h}(t)}{h} = \frac {{u_{h}^{n(t)}}-{u_{h}^{n(t)-1}}}{h} \end{equation*}
for almost every 
 $t \in (0,T)$
. Therefore, (3.17) follows from (3.18) by reformulating the interpolation in terms of the time steps and using
$t \in (0,T)$
. Therefore, (3.17) follows from (3.18) by reformulating the interpolation in terms of the time steps and using 
 $v=w(t)$
 for fixed
$v=w(t)$
 for fixed 
 $t \in (0,T)$
.
$t \in (0,T)$
.
 To prove (3.18), let 
 $v \in L^{2}(\Omega )$
 and
$v \in L^{2}(\Omega )$
 and 
 $\delta \in (0,1)$
. Again, we use the equivalent characterization of
$\delta \in (0,1)$
. Again, we use the equivalent characterization of 
 $\frac{\lambda }{2\varepsilon }$
-convexity in Remark 3.1(ii). For computational ease, first note, that
$\frac{\lambda }{2\varepsilon }$
-convexity in Remark 3.1(ii). For computational ease, first note, that
 \begin{equation*} |\delta v + (1-\delta )u^{n}_h - u^{n-1}_h|^2 = \delta ^2 |v - u^{n}_h|^2 + 2\delta (v-u^{n}_h)(u^n_h - u^{n-1}_h) + |u^n_h-u^{n-1}_h|^2 . \end{equation*}
\begin{equation*} |\delta v + (1-\delta )u^{n}_h - u^{n-1}_h|^2 = \delta ^2 |v - u^{n}_h|^2 + 2\delta (v-u^{n}_h)(u^n_h - u^{n-1}_h) + |u^n_h-u^{n-1}_h|^2 . \end{equation*}
Subtracting 
 $(1-\delta )|u^n-u^{n-1}|^2$
 from both sides of the above equality, we may directly compute
$(1-\delta )|u^n-u^{n-1}|^2$
 from both sides of the above equality, we may directly compute
 \begin{align} E_{\varepsilon }[v]&\geq \frac{1}{\delta }\left (E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]\right )-(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &=\frac{1}{\delta }\left (E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \vphantom{-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right )\nonumber \\[5pt] &\quad -\frac{1}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \left (2({u_{h}^{n}}-{u_{h}^{n-1}})(v-{u_{h}^{n}})+({u_{h}^{n}}-{u_{h}^{n-1}})^{2}+\delta ({u_{h}^{n}}-v)^{2}\right )dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &\geq \frac{1}{\delta }\left (E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \vphantom{-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right )\nonumber \\[5pt] &\quad -\frac{1}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \left (2({u_{h}^{n}}-{u_{h}^{n-1}})(v-{u_{h}^{n}})+({u_{h}^{n}}-{u_{h}^{n-1}})^{2}+\delta ({u_{h}^{n}}-v)^{2}\right )dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &=E_{\varepsilon }[{u_{h}^{n}}]- \int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}(v-{u_{h}^{n}})dx-\frac{\delta }{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) ({u_{h}^{n}}-v)^{2}dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx, \end{align}
\begin{align} E_{\varepsilon }[v]&\geq \frac{1}{\delta }\left (E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]\right )-(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &=\frac{1}{\delta }\left (E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \vphantom{-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right )\nonumber \\[5pt] &\quad -\frac{1}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \left (2({u_{h}^{n}}-{u_{h}^{n-1}})(v-{u_{h}^{n}})+({u_{h}^{n}}-{u_{h}^{n-1}})^{2}+\delta ({u_{h}^{n}}-v)^{2}\right )dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &\geq \frac{1}{\delta }\left (E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \vphantom{-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{E_{\varepsilon }[\delta v + (1-\delta ){u_{h}^{n}}]+\frac{1}{2h}\left \|\delta v +(1-\delta ){u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}}-(1-\delta )E_{\varepsilon }[{u_{h}^{n}}]-(1-\delta )\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2}\right )\nonumber \\[5pt] &\quad -\frac{1}{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \left (2({u_{h}^{n}}-{u_{h}^{n-1}})(v-{u_{h}^{n}})+({u_{h}^{n}}-{u_{h}^{n-1}})^{2}+\delta ({u_{h}^{n}}-v)^{2}\right )dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx \nonumber \\[5pt] &=E_{\varepsilon }[{u_{h}^{n}}]- \int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) \frac{{u_{h}^{n}}-{u_{h}^{n-1}}}{h}(v-{u_{h}^{n}})dx-\frac{\delta }{2h}\int _{\Omega }\varepsilon g(\!-\!\nabla{u_{h}^{n-1}}) ({u_{h}^{n}}-v)^{2}dx\nonumber \\[5pt] &\quad -(1-\delta )\frac{\lambda }{4\varepsilon }\int _{\Omega }|v-{u_{h}^{n}}|^{2}dx, \end{align}
where the third step is an application of (3.11), with 
 $\delta v + (1-\delta ){u_{h}^{n}}$
 acting as a contender for the minimization problem. Taking the limit
$\delta v + (1-\delta ){u_{h}^{n}}$
 acting as a contender for the minimization problem. Taking the limit 
 $\delta \searrow 0$
 finally yields (3.18).
$\delta \searrow 0$
 finally yields (3.18).
 An application of the Arzelà–Ascoli theorem, as performed in the lemma below, shows that a subsequence of 
 $\{u_{h} \}_{h}$
 converges strongly, and the derivatives in time and space will turn out to converge weakly in
$\{u_{h} \}_{h}$
 converges strongly, and the derivatives in time and space will turn out to converge weakly in 
 $L^{2}$
. However, due to the nonlinear term
$L^{2}$
. However, due to the nonlinear term 
 $g(\!-\!\nabla u)$
 in the anisotropic Allen–Cahn equation (1.4), weak convergence of the gradients is not sufficient to show that the limit function solves the equation. We will therefore use a convexity argument to also prove strong convergence of the gradients.
$g(\!-\!\nabla u)$
 in the anisotropic Allen–Cahn equation (1.4), weak convergence of the gradients is not sufficient to show that the limit function solves the equation. We will therefore use a convexity argument to also prove strong convergence of the gradients.
Lemma 3.8. 
Let 
 $\{{u_{h}^{0}}\}_{h \in (0, \frac{2\varepsilon ^{2}c_{g}}{\lambda })}\subset \mathrm{dom}(E)$
 such that
$\{{u_{h}^{0}}\}_{h \in (0, \frac{2\varepsilon ^{2}c_{g}}{\lambda })}\subset \mathrm{dom}(E)$
 such that 
 $\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}] \lt \infty$
 and
$\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}] \lt \infty$
 and 
 $\limsup _{h\searrow 0}\|{u_{h}^{0}}\|_{L^{\infty }(\Omega )}\lt \infty$
. Then there exist a sequence
$\limsup _{h\searrow 0}\|{u_{h}^{0}}\|_{L^{\infty }(\Omega )}\lt \infty$
. Then there exist a sequence 
 $h\searrow 0$
, denoted without relabeling, and a limit function
$h\searrow 0$
, denoted without relabeling, and a limit function 
 $u \in H^{1}(\Omega \times (0,T))$
 such that
$u \in H^{1}(\Omega \times (0,T))$
 such that
- 
(i)  \begin{equation*} u_{h}(t), \:\overline {u}_{h}(t), \:\underline {u}_{h}(t)\longrightarrow u(t) \qquad \text {in } L^{2}(\Omega )\text { uniformly in } t\in [0,T], \end{equation*} \begin{equation*} u_{h}(t), \:\overline {u}_{h}(t), \:\underline {u}_{h}(t)\longrightarrow u(t) \qquad \text {in } L^{2}(\Omega )\text { uniformly in } t\in [0,T], \end{equation*}
- 
(ii)  \begin{equation*}\partial _{t}u_{h}{\rightharpoonup } \partial _{t}u \qquad \text {in } L^{2}(\Omega \times (0,T)), \end{equation*} \begin{equation*}\partial _{t}u_{h}{\rightharpoonup } \partial _{t}u \qquad \text {in } L^{2}(\Omega \times (0,T)), \end{equation*}
- 
(iii)  \begin{equation*} \nabla u_{h},\: \nabla \overline {u}_{h}, \:\nabla \underline {u}_{h}\longrightarrow \nabla u \qquad \text {in } L^{2}(\Omega \times (0,T))^{d} \end{equation*} \begin{equation*} \nabla u_{h},\: \nabla \overline {u}_{h}, \:\nabla \underline {u}_{h}\longrightarrow \nabla u \qquad \text {in } L^{2}(\Omega \times (0,T))^{d} \end{equation*}
 
as 
 $h\searrow 0$
, where
$h\searrow 0$
, where 
 $u_{h}$
,
$u_{h}$
, 
 $\overline{u}_{h}$
, and
$\overline{u}_{h}$
, and 
 $\underline{u}_{h}$
 are constructed as above. Furthermore, the mapping
$\underline{u}_{h}$
 are constructed as above. Furthermore, the mapping 
 $u\;:\; [0,T]\to L^{2}(\Omega )$
 is
$u\;:\; [0,T]\to L^{2}(\Omega )$
 is 
 $\frac{1}{2}$
-Hölder continuous and satisfies the
$\frac{1}{2}$
-Hölder continuous and satisfies the 
 $L^{\infty }$
-bound
$L^{\infty }$
-bound 
 $\|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\limsup _{h\searrow 0}\|{u_{h}^{0}}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \right \}$
.
$\|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\limsup _{h\searrow 0}\|{u_{h}^{0}}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \right \}$
.
Proof.
- 
(i) The first step is to prove a  $H^{1}$
-bound for the minimizers $H^{1}$
-bound for the minimizers $u_{h}^{n}$
, $u_{h}^{n}$
, $n \in{\mathbb{N}}_{0}$
:(3.20)where the last inequality uses Lemma 3.6(iv) and (3.11) repeatedly. $n \in{\mathbb{N}}_{0}$
:(3.20)where the last inequality uses Lemma 3.6(iv) and (3.11) repeatedly. \begin{align} \left \|{u_{h}^{n}}\right \|_{H^{1}(\Omega )}^{2}&=\|{u_{h}^{n}}\|_{L^{2}(\Omega )}^{2}+\left \|\nabla{u_{h}^{n}}\right \|_{L^{2}(\Omega )}^{2}\nonumber \\[5pt] &\leq \left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2}+ \frac{1}{\min _{S^{d-1}}\sigma ^{2}}\int _{\Omega }f(\!-\!\nabla{u_{h}^{n}})dx\nonumber \\[5pt] &\leq \left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2}+ \frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}E_{\varepsilon }[{u_{h}^{n}}]\nonumber \\[5pt] &\leq \max \left \{\left \|{u_{h}^{0}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}+ \frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}E_{\varepsilon }[{u_{h}^{0}}], \end{align} \begin{align} \left \|{u_{h}^{n}}\right \|_{H^{1}(\Omega )}^{2}&=\|{u_{h}^{n}}\|_{L^{2}(\Omega )}^{2}+\left \|\nabla{u_{h}^{n}}\right \|_{L^{2}(\Omega )}^{2}\nonumber \\[5pt] &\leq \left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2}+ \frac{1}{\min _{S^{d-1}}\sigma ^{2}}\int _{\Omega }f(\!-\!\nabla{u_{h}^{n}})dx\nonumber \\[5pt] &\leq \left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2}+ \frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}E_{\varepsilon }[{u_{h}^{n}}]\nonumber \\[5pt] &\leq \max \left \{\left \|{u_{h}^{0}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}+ \frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}E_{\varepsilon }[{u_{h}^{0}}], \end{align}For any  $t \in [0,T]$
, the function $t \in [0,T]$
, the function $u_{h}(t)$
 is a convex combination of two minimizers $u_{h}(t)$
 is a convex combination of two minimizers $u_{h}^{n-1}$
, $u_{h}^{n-1}$
, $u_{h}^{n-1}$
, $u_{h}^{n-1}$
, $u_{h}^{n}$
 of (3.11). Applying the triangle inequality yields(3.21)It follows from Rellich’s compact embedding theorem that any sequence $u_{h}^{n}$
 of (3.11). Applying the triangle inequality yields(3.21)It follows from Rellich’s compact embedding theorem that any sequence \begin{align} \sup _{t\in [0,T]}\limsup _{h \searrow 0}\left \|u_{h}(t)\right \|_{H^{1}(\Omega )}&\leq \left (\!\max \left \{\limsup _{h\searrow 0}\left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}\vphantom{+\frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]}\right .\nonumber \\[5pt] &\hspace{8.5pt}{\left . \vphantom{\max \left \{\limsup _{h\searrow 0}\left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}} +\frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]\right )}^{\frac{1}{2}}\nonumber \\[5pt] &\lt \infty . \end{align} \begin{align} \sup _{t\in [0,T]}\limsup _{h \searrow 0}\left \|u_{h}(t)\right \|_{H^{1}(\Omega )}&\leq \left (\!\max \left \{\limsup _{h\searrow 0}\left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}\vphantom{+\frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]}\right .\nonumber \\[5pt] &\hspace{8.5pt}{\left . \vphantom{\max \left \{\limsup _{h\searrow 0}\left \|{u_{h}^{n}}\right \|_{L^{\infty }(\Omega )}^{2},1\right \}} +\frac{2}{\varepsilon \min _{S^{d-1}}\sigma ^{2}}\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]\right )}^{\frac{1}{2}}\nonumber \\[5pt] &\lt \infty . \end{align} $\{u_{h_{k}}(t)\}_{k \in{\mathbb{N}}}{\mathbb{N}}$
 with $\{u_{h_{k}}(t)\}_{k \in{\mathbb{N}}}{\mathbb{N}}$
 with $t \in [0,T]$
 and $t \in [0,T]$
 and $\lim _{k\to \infty }h_{k}=0$
 has a subsequence converging in $\lim _{k\to \infty }h_{k}=0$
 has a subsequence converging in $L^{2}(\Omega )$
. To prove equicontinuity in time, which is the second requirement for the Arzelà–Ascoli theorem, we will – as is standard with minimizing movement approximations – show the stronger statement that $L^{2}(\Omega )$
. To prove equicontinuity in time, which is the second requirement for the Arzelà–Ascoli theorem, we will – as is standard with minimizing movement approximations – show the stronger statement that $u_{h} \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 are $u_{h} \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 are $\frac{1}{2}$
-Hölder continuous and the Hölder constants are uniformly bounded as $\frac{1}{2}$
-Hölder continuous and the Hölder constants are uniformly bounded as $h \searrow 0$
. Indeed, for $h \searrow 0$
. Indeed, for $n \in{\mathbb{N}}$
, we use the definition of the metric $n \in{\mathbb{N}}$
, we use the definition of the metric $(\cdot,\cdot )_{{u_{h}^{n-1}}}$
 and the minimization property (3.11) to show that(3.22)Inequality (3.22) allows us to bound the $(\cdot,\cdot )_{{u_{h}^{n-1}}}$
 and the minimization property (3.11) to show that(3.22)Inequality (3.22) allows us to bound the \begin{align} \left \|{u_{h}^{n}}-{u_{h}^{n-1}} \right \|_{L^{2}(\Omega )}^{2} &\leq \frac{1}{\varepsilon c_{g}}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \nonumber \\[5pt] &= \frac{2h}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} - E_{\varepsilon }[{u_{h}^{n}}] \right ) \nonumber \\[5pt] &\leq \frac{2h}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n-1}}]-E_{\varepsilon }[{u_{h}^{n}}] \right ). \end{align} \begin{align} \left \|{u_{h}^{n}}-{u_{h}^{n-1}} \right \|_{L^{2}(\Omega )}^{2} &\leq \frac{1}{\varepsilon c_{g}}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} \nonumber \\[5pt] &= \frac{2h}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n}}]+\frac{1}{2h}\left \|{u_{h}^{n}}-{u_{h}^{n-1}}\right \|_{{u_{h}^{n-1}}}^{2} - E_{\varepsilon }[{u_{h}^{n}}] \right ) \nonumber \\[5pt] &\leq \frac{2h}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n-1}}]-E_{\varepsilon }[{u_{h}^{n}}] \right ). \end{align} $L^{2}$
-norms of the weak time derivates $L^{2}$
-norms of the weak time derivates $\partial _{t}u_{h}$
 as
(3.23)The fundamental theorem of calculus for vector-valued functions together with the Cauchy–Schwarz inequality now yields $\partial _{t}u_{h}$
 as
(3.23)The fundamental theorem of calculus for vector-valued functions together with the Cauchy–Schwarz inequality now yields \begin{align} \|\partial _{t}u_{h}\|_{L^{2}\left (0,T;\;L^{2}(\Omega )\right )}^{2}&\leq \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \int _{(n-1)h}^{nh}\|\partial _{t}u_{h}(t) \|_{L^{2}(\Omega )}^{2}dt \nonumber \\[5pt] &= \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \int _{(n-1)h}^{nh} \frac{\|{u_{h}^{n}}-{u_{h}^{n-1}}\|_{L^{2}(\Omega )}^{2}}{h^{2}}dt \\ &\leq \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \frac{2}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n-1}}]-E_{\varepsilon }[{u_{h}^{n}}] \right ) \nonumber \\[5pt] &\leq \frac{2}{\varepsilon c_{g}}E_{\varepsilon }[{u_{h}^{0}}]. \end{align}
(3.24)for all \begin{align} \|\partial _{t}u_{h}\|_{L^{2}\left (0,T;\;L^{2}(\Omega )\right )}^{2}&\leq \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \int _{(n-1)h}^{nh}\|\partial _{t}u_{h}(t) \|_{L^{2}(\Omega )}^{2}dt \nonumber \\[5pt] &= \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \int _{(n-1)h}^{nh} \frac{\|{u_{h}^{n}}-{u_{h}^{n-1}}\|_{L^{2}(\Omega )}^{2}}{h^{2}}dt \\ &\leq \sum _{n=1}^{\left \lceil \frac{T}{h} \right \rceil } \frac{2}{\varepsilon c_{g}}\left (E_{\varepsilon }[{u_{h}^{n-1}}]-E_{\varepsilon }[{u_{h}^{n}}] \right ) \nonumber \\[5pt] &\leq \frac{2}{\varepsilon c_{g}}E_{\varepsilon }[{u_{h}^{0}}]. \end{align}
(3.24)for all \begin{align} \|u_{h}(t)-u_{h}(s)\|_{L^{2}(\Omega )}&\leq \int _{(s,t)}\|\partial _{t}u_{h}(r)\|_{L^{2}(\Omega )}dr \nonumber \\[5pt] &\leq \|\partial _{t}u_{h}\|_{L^{2}\left (s,t;L^{2}(\Omega )\right )}\sqrt{|t-s|}\nonumber \\[5pt] &\leq \sqrt{\frac{2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt{|t-s|} \end{align} \begin{align} \|u_{h}(t)-u_{h}(s)\|_{L^{2}(\Omega )}&\leq \int _{(s,t)}\|\partial _{t}u_{h}(r)\|_{L^{2}(\Omega )}dr \nonumber \\[5pt] &\leq \|\partial _{t}u_{h}\|_{L^{2}\left (s,t;L^{2}(\Omega )\right )}\sqrt{|t-s|}\nonumber \\[5pt] &\leq \sqrt{\frac{2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt{|t-s|} \end{align} $s,t \in [0,T]$
. This is the one-dimensional case of Morrey’s inequality. $s,t \in [0,T]$
. This is the one-dimensional case of Morrey’s inequality.By (3.24) and the assumption on the initial data, the Hölder constants are bounded as  $h \searrow 0$
. Families of functions with bounded Hölder constants are equicontinuous. These equicontinuity and precompactness statements allow us to apply the Arzelà–Ascoli theorem, which states that there exists a subsequence $h \searrow 0$
. Families of functions with bounded Hölder constants are equicontinuous. These equicontinuity and precompactness statements allow us to apply the Arzelà–Ascoli theorem, which states that there exists a subsequence $h \searrow 0$
 and a function $h \searrow 0$
 and a function $u \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 such that $u \in C\left ([0,T];\;L^{2}(\Omega )\right )$
 such that $u_{h} \to u$
 in $u_{h} \to u$
 in $C\left ([0,T];\;L^{2}(\Omega )\right )$
. Furthermore, the Hölder continuity carries over to the limit function, i.e.,(3.25)One can extract a further subsequence $C\left ([0,T];\;L^{2}(\Omega )\right )$
. Furthermore, the Hölder continuity carries over to the limit function, i.e.,(3.25)One can extract a further subsequence \begin{equation} \|u(t)-u(s)\|_{L^{2}(\Omega )}\leq \sqrt{\frac{2\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon 0}E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}\sqrt{|t-s|} \qquad \text{for all }s,t \in [0,T]. \end{equation} \begin{equation} \|u(t)-u(s)\|_{L^{2}(\Omega )}\leq \sqrt{\frac{2\limsup _{h\searrow 0}E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon 0}E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}\sqrt{|t-s|} \qquad \text{for all }s,t \in [0,T]. \end{equation} $\{u_{h_{k}} \}_{k\in{\mathbb{N}}}$
 such that $\{u_{h_{k}} \}_{k\in{\mathbb{N}}}$
 such that $h_{k}\searrow 0$
 and $h_{k}\searrow 0$
 and $u_{h_{k}}(x,t)\to u(x,t)$
 almost everywhere in $u_{h_{k}}(x,t)\to u(x,t)$
 almost everywhere in $\Omega \times (0,T)$
. This pointwise convergence together with the triangle inequality yieldsIn a last step, we argue briefly that the piecewise constant interpolations $\Omega \times (0,T)$
. This pointwise convergence together with the triangle inequality yieldsIn a last step, we argue briefly that the piecewise constant interpolations \begin{align*} \|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}&\leq \limsup _{k\to \infty }\|u_{h_{k}}-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\\[5pt] &\leq \limsup _{h\searrow 0}\|u_{h}-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\\[5pt] &\leq \limsup _{h\searrow 0}\sup _{n\in{\mathbb{N}}}\|{u_{h}^{n}}-\tfrac 12\|_{L^{\infty }(\Omega )}\\[5pt] &\leq \max \left \{\limsup _{h\searrow 0}\|{u_{h}^{0}}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12\right \}. \end{align*} \begin{align*} \|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}&\leq \limsup _{k\to \infty }\|u_{h_{k}}-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\\[5pt] &\leq \limsup _{h\searrow 0}\|u_{h}-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\\[5pt] &\leq \limsup _{h\searrow 0}\sup _{n\in{\mathbb{N}}}\|{u_{h}^{n}}-\tfrac 12\|_{L^{\infty }(\Omega )}\\[5pt] &\leq \max \left \{\limsup _{h\searrow 0}\|{u_{h}^{0}}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12\right \}. \end{align*} $\overline{u}_{h}$
 and $\overline{u}_{h}$
 and $\underline{u}_{h}$
 converge uniformly. $\underline{u}_{h}$
 converge uniformly.Given  $t \in [0,T]$
, we find $t \in [0,T]$
, we find $n \in{\mathbb{N}}$
 such that $n \in{\mathbb{N}}$
 such that $t \in [(n-1)h,nh)$
. Thenand a similar argument shows that $t \in [(n-1)h,nh)$
. Thenand a similar argument shows that \begin{equation*} \|\overline {u}_{h}(t)-u_{h}(t)\|_{L^{2}(\Omega )}=\|u_{h}(nh)-u_{h}(t)\|_{L^{2}(\Omega )}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {nh-t}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {h}, \end{equation*}
Combining this bound with the uniform convergence \begin{equation*} \|\overline {u}_{h}(t)-u_{h}(t)\|_{L^{2}(\Omega )}=\|u_{h}(nh)-u_{h}(t)\|_{L^{2}(\Omega )}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {nh-t}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {h}, \end{equation*}
Combining this bound with the uniform convergence \begin{equation*} \|\underline {u}_{h}(t)-u_{h}(t)\|_{L^{2}(\Omega )}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {h}. \end{equation*} \begin{equation*} \|\underline {u}_{h}(t)-u_{h}(t)\|_{L^{2}(\Omega )}\leq \sqrt {\frac {2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt {h}. \end{equation*} $u_{h}\to u$
 in $u_{h}\to u$
 in $C\left ([0,T];\;L^{2}(\Omega )\right )$
, we obtain $C\left ([0,T];\;L^{2}(\Omega )\right )$
, we obtain \begin{align*} \limsup _{h\searrow 0}\sup _{t\in [0,T]}\max &\left \{\|\overline{u}_{h}(t)-u(t)\|_{L^{2}(\Omega )},\|\underline{u}_{h}(t)-u(t)\|_{L^{2}(\Omega )} \right \}\\[5pt] &\leq \limsup _{h\searrow 0}\sup _{t \in [0,T]}\|u_{h}(t)-u(t)\|_{L^{2}(\Omega )}+ \lim _{h\searrow 0}\sqrt{\frac{2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt{h} \\[5pt] &=0. \end{align*} \begin{align*} \limsup _{h\searrow 0}\sup _{t\in [0,T]}\max &\left \{\|\overline{u}_{h}(t)-u(t)\|_{L^{2}(\Omega )},\|\underline{u}_{h}(t)-u(t)\|_{L^{2}(\Omega )} \right \}\\[5pt] &\leq \limsup _{h\searrow 0}\sup _{t \in [0,T]}\|u_{h}(t)-u(t)\|_{L^{2}(\Omega )}+ \lim _{h\searrow 0}\sqrt{\frac{2E_{\varepsilon }[{u_{h}^{0}}]}{\varepsilon c_{g}}}\sqrt{h} \\[5pt] &=0. \end{align*}
- 
(ii) It follows from (i) that  $u_{h}\to u$
 as $u_{h}\to u$
 as $h \searrow 0$
 in $h \searrow 0$
 in $L^{2}\left (0,T;\;L^{2}(\Omega )\right )\cong L^{2}(\Omega \times (0,T))$
. Furthermore, by (3.23), the time derivatives $L^{2}\left (0,T;\;L^{2}(\Omega )\right )\cong L^{2}(\Omega \times (0,T))$
. Furthermore, by (3.23), the time derivatives $\{\partial _{t}u_{h} \}$
 are bounded in $\{\partial _{t}u_{h} \}$
 are bounded in $L^{2}(\Omega \times (0,T))$
 as $L^{2}(\Omega \times (0,T))$
 as $h \searrow 0$
. By, e.g., [Reference Ambrosio, Fusco and Pallara2, Prop. 2.5(b)], one concludes that $h \searrow 0$
. By, e.g., [Reference Ambrosio, Fusco and Pallara2, Prop. 2.5(b)], one concludes that $u$
 has a weak time derivative $u$
 has a weak time derivative $\partial _{t}u \in L^{2}(\Omega \times (0,T))$
, and that $\partial _{t}u \in L^{2}(\Omega \times (0,T))$
, and that $\partial _{t}u_{h}\rightharpoonup \partial _{t}u$
 in $\partial _{t}u_{h}\rightharpoonup \partial _{t}u$
 in $L^{2}(\Omega \times (0,T))$
 as $L^{2}(\Omega \times (0,T))$
 as $h \searrow 0$
. $h \searrow 0$
.
- 
(iii) We will prove the desired convergence result for the piecewise constant interpolation  $\overline{u}_{h}$
 first. Integrating (3.20) from $\overline{u}_{h}$
 first. Integrating (3.20) from $0$
 to $0$
 to $T$
 shows that the gradients $T$
 shows that the gradients $\{\nabla \overline{u}_{h} \}$
 are bounded in $\{\nabla \overline{u}_{h} \}$
 are bounded in $L^{2}(\Omega \times (0,T))^{d}$
 as $L^{2}(\Omega \times (0,T))^{d}$
 as $h \searrow 0$
. Just like in (ii), it then follows from the strong convergence $h \searrow 0$
. Just like in (ii), it then follows from the strong convergence $\overline{u}_{h}\to u$
 in $\overline{u}_{h}\to u$
 in $L^{2}(\Omega \times (0,T))$
 that the limit function $L^{2}(\Omega \times (0,T))$
 that the limit function $u$
 has a weak gradient $u$
 has a weak gradient $\nabla u \in L^{2}(\Omega \times (0,T))^{d}$
, and that $\nabla u \in L^{2}(\Omega \times (0,T))^{d}$
, and that $\nabla \overline{u}_{h}{\rightharpoonup } \nabla u$
 as $\nabla \overline{u}_{h}{\rightharpoonup } \nabla u$
 as $h \searrow 0$
 in $h \searrow 0$
 in $L^{2}(\Omega \times (0,T))^{d}$
. $L^{2}(\Omega \times (0,T))^{d}$
.The next step is to upgrade this weak convergence statement for the gradients to strong convergence in  $L^{2}$
. The key ingredient for the argument will be the energy convergence(3.26)Let us first argue how (3.26) implies strong convergence of the gradients. Since the Cahn–Hilliard energy $L^{2}$
. The key ingredient for the argument will be the energy convergence(3.26)Let us first argue how (3.26) implies strong convergence of the gradients. Since the Cahn–Hilliard energy \begin{equation} E_{\varepsilon }[\overline{u}_{h}(\!\cdot\!)]{\rightharpoonup } E_{\varepsilon }[u(\!\cdot\!)] \qquad \text{in } L^{1}(0,T). \end{equation} \begin{equation} E_{\varepsilon }[\overline{u}_{h}(\!\cdot\!)]{\rightharpoonup } E_{\varepsilon }[u(\!\cdot\!)] \qquad \text{in } L^{1}(0,T). \end{equation} $E_{\varepsilon }$
 is made up of a Dirichlet energy and a nonconvex term involving $E_{\varepsilon }$
 is made up of a Dirichlet energy and a nonconvex term involving $W$
, we will use the convergence result (3.26) for the Cahn–Hilliard energies and a liminf inequality for the nonconvex part to derive a limsup inequality for the Dirichlet energy, which will allow us to prove the strong convergence statement. $W$
, we will use the convergence result (3.26) for the Cahn–Hilliard energies and a liminf inequality for the nonconvex part to derive a limsup inequality for the Dirichlet energy, which will allow us to prove the strong convergence statement.Similarly to the proof of Lemma 3.6(iii), an application of Fatou’s lemma yields (3.27)One can now test (3.26) with a constant test function and combine this convergence statement with (3.27), which yields \begin{equation} \liminf _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} W(\overline{u}_{h})dxdt \geq{\int _{0}^{T}\int _{\Omega }} W(u)dxdt. \end{equation}
(3.28)The function \begin{equation} \liminf _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} W(\overline{u}_{h})dxdt \geq{\int _{0}^{T}\int _{\Omega }} W(u)dxdt. \end{equation}
(3.28)The function \begin{align} \limsup _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt&=\frac{2}{\varepsilon }\lim _{h\searrow 0}\int _{0}^{T}E_{\varepsilon }[\overline{u}_{h}(t)]dt-\frac{1}{\varepsilon ^{2}}\liminf _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} W(\overline{u}_{h})dxdt \nonumber \\[5pt] &\leq \frac{2}{\varepsilon }\int _{0}^{T}E_{\varepsilon }[u(t)]dt-\frac{1}{\varepsilon ^{2}}{\int _{0}^{T}\int _{\Omega }} W(u)dxdt \nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dx dt. \end{align} \begin{align} \limsup _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt&=\frac{2}{\varepsilon }\lim _{h\searrow 0}\int _{0}^{T}E_{\varepsilon }[\overline{u}_{h}(t)]dt-\frac{1}{\varepsilon ^{2}}\liminf _{h\searrow 0}{\int _{0}^{T}\int _{\Omega }} W(\overline{u}_{h})dxdt \nonumber \\[5pt] &\leq \frac{2}{\varepsilon }\int _{0}^{T}E_{\varepsilon }[u(t)]dt-\frac{1}{\varepsilon ^{2}}{\int _{0}^{T}\int _{\Omega }} W(u)dxdt \nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dx dt. \end{align} $f$
 is strongly convex, i.e., there exists a constant $f$
 is strongly convex, i.e., there exists a constant $c\gt 0$
 such that $c\gt 0$
 such that $f(p^{\prime })\geq f(p)+Df(p)\cdot (p^{\prime }-p)+\frac{c}{2}|p^{\prime }-p|^{2}$
 for all $f(p^{\prime })\geq f(p)+Df(p)\cdot (p^{\prime }-p)+\frac{c}{2}|p^{\prime }-p|^{2}$
 for all $p, p^{\prime } \in{\mathbb{R}}^{d}$
. Thus, if (3.28) holds true, then
where the last step also uses the fact that $p, p^{\prime } \in{\mathbb{R}}^{d}$
. Thus, if (3.28) holds true, then
where the last step also uses the fact that \begin{align*} \limsup _{h\searrow 0}\frac{c}{2}{\int _{0}^{T}\int _{\Omega }}& \left |\nabla \overline{u}_{h} - \nabla u\right |^{2}dx dt \\[5pt] &\leq \limsup _{h \searrow 0}\left ({\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt-{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dxdt \vphantom{-{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla u_{h}) dxdt}\right .\\[5pt] &\hspace{8.5pt}\left . \vphantom{{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u_{h})dx dt- f(\!-\!\nabla u)dxdt} -{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla \overline{u}_{h})dx dt\right ) \\ &\leq \limsup _{h \searrow 0}{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt -{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dxdt\\[5pt] &\quad -\liminf _{h \searrow 0}{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla \overline{u}_{h}) dxdt\\[5pt] &\leq 0, \end{align*} \begin{align*} \limsup _{h\searrow 0}\frac{c}{2}{\int _{0}^{T}\int _{\Omega }}& \left |\nabla \overline{u}_{h} - \nabla u\right |^{2}dx dt \\[5pt] &\leq \limsup _{h \searrow 0}\left ({\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt-{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dxdt \vphantom{-{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla u_{h}) dxdt}\right .\\[5pt] &\hspace{8.5pt}\left . \vphantom{{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u_{h})dx dt- f(\!-\!\nabla u)dxdt} -{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla \overline{u}_{h})dx dt\right ) \\ &\leq \limsup _{h \searrow 0}{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla \overline{u}_{h})dx dt -{\int _{0}^{T}\int _{\Omega }} f(\!-\!\nabla u)dxdt\\[5pt] &\quad -\liminf _{h \searrow 0}{\int _{0}^{T}\int _{\Omega }} Df(\!-\!\nabla u)\cdot (\nabla u - \nabla \overline{u}_{h}) dxdt\\[5pt] &\leq 0, \end{align*} $\nabla u_{h}{\rightharpoonup } \nabla u$
 in $\nabla u_{h}{\rightharpoonup } \nabla u$
 in $L^{2}(\Omega \times (0,T))^{d}$
. This computation implies that $L^{2}(\Omega \times (0,T))^{d}$
. This computation implies that $\nabla \overline{u}_{h}\to \nabla u$
 strongly in $\nabla \overline{u}_{h}\to \nabla u$
 strongly in $L^{2}(\Omega \times (0,T))$
. $L^{2}(\Omega \times (0,T))$
.In order to prove (3.26), it suffices to consider nonnegative test functions  $\zeta \in L^{\infty }\left (0,T;\;{\mathbb{R}}_{\geq 0}\right )$
. We will prove a liminf inequality and a limsup inequality separately. $\zeta \in L^{\infty }\left (0,T;\;{\mathbb{R}}_{\geq 0}\right )$
. We will prove a liminf inequality and a limsup inequality separately.On the one hand, by Fatou’s lemma, the lower semicontinuity of  $E_{\varepsilon }$
, and (i), we obtain(3.29)On the other hand, choosing $E_{\varepsilon }$
, and (i), we obtain(3.29)On the other hand, choosing \begin{equation} \liminf _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt\geq \int _{0}^{T}\zeta (t)\liminf _{h\searrow 0}E_{\varepsilon }[\overline{u}_{h}(t)]dt\geq \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt. \end{equation} \begin{equation} \liminf _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt\geq \int _{0}^{T}\zeta (t)\liminf _{h\searrow 0}E_{\varepsilon }[\overline{u}_{h}(t)]dt\geq \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt. \end{equation} $w(x,t)\;:\!=\;u(x,t)$
 in (3.17) and integrating against $w(x,t)\;:\!=\;u(x,t)$
 in (3.17) and integrating against $\zeta$
 yieldsIn the limit $\zeta$
 yieldsIn the limit \begin{align*} \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt& \geq \int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt\\[5pt] & \quad -\int _{0}^{T}\zeta (t)\int _{\Omega }\left (\varepsilon g(\!-\!\nabla \underline{u}_{h})\partial _{t}u_{h}(u-\overline{u}_{h}) +\frac{\lambda }{4\varepsilon }|u-\overline{u}_{h}|^{2}\right )dx dt. \end{align*} \begin{align*} \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt& \geq \int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt\\[5pt] & \quad -\int _{0}^{T}\zeta (t)\int _{\Omega }\left (\varepsilon g(\!-\!\nabla \underline{u}_{h})\partial _{t}u_{h}(u-\overline{u}_{h}) +\frac{\lambda }{4\varepsilon }|u-\overline{u}_{h}|^{2}\right )dx dt. \end{align*} $h\searrow 0$
, the second integral on the right-hand side vanishes since $h\searrow 0$
, the second integral on the right-hand side vanishes since $\overline{u}_{h}\to u$
 in $\overline{u}_{h}\to u$
 in $L^{2}(\Omega \times (0,T))$
 and $L^{2}(\Omega \times (0,T))$
 and $g$
 is bounded in $g$
 is bounded in $L^\infty$
 by Lemma 3.2. Thus,(3.30)Combining (3.29) and (3.30) yields (3.26). $L^\infty$
 by Lemma 3.2. Thus,(3.30)Combining (3.29) and (3.30) yields (3.26). \begin{equation} \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt\geq \limsup _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt. \end{equation} \begin{equation} \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt\geq \limsup _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt. \end{equation}We have shown that  $\nabla \overline{u}_{h}\to \nabla u$
 in $\nabla \overline{u}_{h}\to \nabla u$
 in $L^{2}(\Omega \times (0,T))$
 as $L^{2}(\Omega \times (0,T))$
 as $h \searrow 0$
. As for $h \searrow 0$
. As for $\nabla \underline{u}_{h}$
, one computeswhere the last integral vanishes as $\nabla \underline{u}_{h}$
, one computeswhere the last integral vanishes as \begin{align*} \|\nabla \underline{u}_{h}-&\nabla u\|_{L^{2}(\Omega \times (0,T))}^{2}\\[5pt] &=\int _{0}^{h}\int _{\Omega }|\nabla \underline{u}_{h}-\nabla u|^{2}dx dt + \int _{h}^{T}\int _{\Omega }|\nabla \underline{u}_{h}-\nabla u|^{2}dx dt \\[5pt] &=\int _{0}^{h}\int _{\Omega }|\nabla{u_{h}^{0}}-\nabla u|^{2}dx dt + \int _{h}^{T}\int _{\Omega }|\nabla \overline{u}_{h}(x,t-h)-\nabla u(x,t)|^{2}dx dt\\[5pt] &\leq 2h\int _{\Omega }|\nabla{u_{h}^{0}}|^{2}dx + 2 \int _{0}^{h}\int _{\Omega }|\nabla u|^{2}dxdt\\[5pt] &\quad +2\int _{0}^{T-h}\int _{\Omega }|\nabla \overline{u}_{h}(x,t)-\nabla u(x,t)|^{2}dx dt\\[5pt] &\quad + 2\int _{0}^{T-h}\int _{\Omega }|\nabla u(x,t)-\nabla u(x, t+h)|^{2}dx dt\\[5pt] &\longrightarrow 0 \qquad \text{as } h \searrow 0, \end{align*} \begin{align*} \|\nabla \underline{u}_{h}-&\nabla u\|_{L^{2}(\Omega \times (0,T))}^{2}\\[5pt] &=\int _{0}^{h}\int _{\Omega }|\nabla \underline{u}_{h}-\nabla u|^{2}dx dt + \int _{h}^{T}\int _{\Omega }|\nabla \underline{u}_{h}-\nabla u|^{2}dx dt \\[5pt] &=\int _{0}^{h}\int _{\Omega }|\nabla{u_{h}^{0}}-\nabla u|^{2}dx dt + \int _{h}^{T}\int _{\Omega }|\nabla \overline{u}_{h}(x,t-h)-\nabla u(x,t)|^{2}dx dt\\[5pt] &\leq 2h\int _{\Omega }|\nabla{u_{h}^{0}}|^{2}dx + 2 \int _{0}^{h}\int _{\Omega }|\nabla u|^{2}dxdt\\[5pt] &\quad +2\int _{0}^{T-h}\int _{\Omega }|\nabla \overline{u}_{h}(x,t)-\nabla u(x,t)|^{2}dx dt\\[5pt] &\quad + 2\int _{0}^{T-h}\int _{\Omega }|\nabla u(x,t)-\nabla u(x, t+h)|^{2}dx dt\\[5pt] &\longrightarrow 0 \qquad \text{as } h \searrow 0, \end{align*} $h \searrow 0$
 due to the continuity of translation. $h \searrow 0$
 due to the continuity of translation.Lastly,  $\nabla u_{h}(x,t)$
 is a convex combination of $\nabla u_{h}(x,t)$
 is a convex combination of $\nabla \overline{u}_{h}(x,t)$
 and $\nabla \overline{u}_{h}(x,t)$
 and $\nabla \underline{u}_{h}(x,t)$
 for almost all $\nabla \underline{u}_{h}(x,t)$
 for almost all $(x,t)\in \Omega \times (0,T)$
. Hence, it follows from $(x,t)\in \Omega \times (0,T)$
. Hence, it follows from $\nabla \overline{u}_{h}\to \nabla u$
 and $\nabla \overline{u}_{h}\to \nabla u$
 and $\nabla \underline{u}_{h}\to \nabla u$
 that, as $\nabla \underline{u}_{h}\to \nabla u$
 that, as $h\searrow 0$
, we have $h\searrow 0$
, we have $\nabla u_{h}\to \nabla u$
 in $\nabla u_{h}\to \nabla u$
 in $L^{2}(\Omega \times (0,T))$
 as well. $L^{2}(\Omega \times (0,T))$
 as well.
 We are now ready to pass to the limit 
 $h\searrow 0$
 in (3.17), which will eventually allow us to prove Theorem 3.5. This is the content of the following lemma:
$h\searrow 0$
 in (3.17), which will eventually allow us to prove Theorem 3.5. This is the content of the following lemma:
Lemma 3.9. 
Let 
 $w \in L^{2}(\Omega \times (0,T))$
 and
$w \in L^{2}(\Omega \times (0,T))$
 and 
 $\zeta \in L^{\infty }(0,T)$
 such that
$\zeta \in L^{\infty }(0,T)$
 such that 
 $\zeta \geq 0$
 almost everywhere. Then
$\zeta \geq 0$
 almost everywhere. Then
 \begin{equation} \int _{0}^{T}\zeta (t)\left (E_{\varepsilon }[w(t)]-E_{\varepsilon }[u(t)]+\int _{\Omega }\varepsilon g(\!-\!\nabla u)\partial _{t}u(w-u)dx + \frac{\lambda }{4\varepsilon }\int _{\Omega }|w-u|^{2}dx\right )dt\geq 0. \end{equation}
\begin{equation} \int _{0}^{T}\zeta (t)\left (E_{\varepsilon }[w(t)]-E_{\varepsilon }[u(t)]+\int _{\Omega }\varepsilon g(\!-\!\nabla u)\partial _{t}u(w-u)dx + \frac{\lambda }{4\varepsilon }\int _{\Omega }|w-u|^{2}dx\right )dt\geq 0. \end{equation}
 In other words, for every 
 $w \in L^{2}(\Omega \times (0,T))$
, the inequality
$w \in L^{2}(\Omega \times (0,T))$
, the inequality 
 $E_{\varepsilon }[w(t)]\geq E_{\varepsilon }[u(t)]-\int _{\Omega }\varepsilon g(\!-\!\nabla u)\partial _{t}u(w-u)dx - \frac{\lambda }{4\varepsilon }\int _{\Omega }|w-u|^{2}dx$
 holds true for almost every
$E_{\varepsilon }[w(t)]\geq E_{\varepsilon }[u(t)]-\int _{\Omega }\varepsilon g(\!-\!\nabla u)\partial _{t}u(w-u)dx - \frac{\lambda }{4\varepsilon }\int _{\Omega }|w-u|^{2}dx$
 holds true for almost every 
 $t \in (0,T)$
.
$t \in (0,T)$
.
Proof. First, by the weak convergence (3.26), it follows that
 \begin{equation} \lim _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt = \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt \end{equation}
\begin{equation} \lim _{h\searrow 0}\int _{0}^{T}\zeta (t)E_{\varepsilon }[\overline{u}_{h}(t)]dt = \int _{0}^{T}\zeta (t)E_{\varepsilon }[u(t)]dt \end{equation}
for any function 
 $\zeta \in L^{\infty }(0,T)$
 such that
$\zeta \in L^{\infty }(0,T)$
 such that 
 $\zeta \geq 0$
.
$\zeta \geq 0$
.
 Second, for the term involving the time derivative, we know from Lemma 3.8(ii) that 
 $\partial _{t}u_{h}{\rightharpoonup } \partial _{t}u$
 in
$\partial _{t}u_{h}{\rightharpoonup } \partial _{t}u$
 in 
 $L^{2}(\Omega \times (0,T))$
. Thus, to derive the convergence of the integrals, it suffices to show that
$L^{2}(\Omega \times (0,T))$
. Thus, to derive the convergence of the integrals, it suffices to show that 
 $g(\!-\!\nabla \underline{u}_{h})(w-\overline{u}_{h}) \to g(\!-\!\nabla u)(w-u)$
 (strongly) in
$g(\!-\!\nabla \underline{u}_{h})(w-\overline{u}_{h}) \to g(\!-\!\nabla u)(w-u)$
 (strongly) in 
 $L^{2}(\Omega \times (0,T))$
.
$L^{2}(\Omega \times (0,T))$
.
 By Lemma 3.8(iii), we know that 
 $\nabla \overline{u}_{h},\nabla \underline{u}_{h}\to \nabla u$
 in
$\nabla \overline{u}_{h},\nabla \underline{u}_{h}\to \nabla u$
 in 
 $L^{2}(\Omega \times (0,T))$
. Since
$L^{2}(\Omega \times (0,T))$
. Since 
 $g$
 is a continuous function, every subsequence of
$g$
 is a continuous function, every subsequence of 
 $g(\!-\!\nabla \underline{u}_{h})$
 as
$g(\!-\!\nabla \underline{u}_{h})$
 as 
 $h\searrow 0$
 has a further subsequence that converges pointwise almost everywhere to
$h\searrow 0$
 has a further subsequence that converges pointwise almost everywhere to 
 $g(\!-\!\nabla u)$
. By the uniform boundedness of
$g(\!-\!\nabla u)$
. By the uniform boundedness of 
 $g$
 and the dominated convergence theorem, it follows that
$g$
 and the dominated convergence theorem, it follows that
 \begin{equation*} g(\!-\!\nabla \underline {u}_{h}(t))(w(t)-\overline {u}_{h}(t)) \to g(\!-\!\nabla u(t))(w(t)-u(t)) \qquad \text {in } L^{2}(\Omega ) \text { for almost all } t\in (0,T). \end{equation*}
\begin{equation*} g(\!-\!\nabla \underline {u}_{h}(t))(w(t)-\overline {u}_{h}(t)) \to g(\!-\!\nabla u(t))(w(t)-u(t)) \qquad \text {in } L^{2}(\Omega ) \text { for almost all } t\in (0,T). \end{equation*}
 It remains to show the 
 $L^{2}$
-convergence on the product space
$L^{2}$
-convergence on the product space 
 $\Omega \times (0,T)$
. Using the generalized dominated convergence theorem with
$\Omega \times (0,T)$
. Using the generalized dominated convergence theorem with
 \begin{align*} \left \|g(\!-\!\nabla \underline{u}_{h}(t))(w(t)-\overline{u}_{h}(t)) \right \|_{L^{2}(\Omega )}&\leq (\!\sup _{{\mathbb{R}}^{d}}g) \left (\int _{\Omega }(w(t)-\overline{u}_{h}(t))^{2}dx\right )^{\frac{1}{2}} \\[5pt] &\longrightarrow (\!\sup _{{\mathbb{R}}^{d}}g) \left (\int _{\Omega }(w(t)-u(t))^{2}dx\right )^{\frac{1}{2}} \qquad \text{in } L^{2}(0,T), \end{align*}
\begin{align*} \left \|g(\!-\!\nabla \underline{u}_{h}(t))(w(t)-\overline{u}_{h}(t)) \right \|_{L^{2}(\Omega )}&\leq (\!\sup _{{\mathbb{R}}^{d}}g) \left (\int _{\Omega }(w(t)-\overline{u}_{h}(t))^{2}dx\right )^{\frac{1}{2}} \\[5pt] &\longrightarrow (\!\sup _{{\mathbb{R}}^{d}}g) \left (\int _{\Omega }(w(t)-u(t))^{2}dx\right )^{\frac{1}{2}} \qquad \text{in } L^{2}(0,T), \end{align*}
it follows that
 \begin{equation*} \int _{0}^{T}\left \|g(\!-\!\nabla \underline {u}_{h}(t))(w(t)-\overline {u}_{h}(t))-g(\!-\!\nabla u(t))(w(t)-u(t)) \right \|_{L^{2}(\Omega )}^{2}dt\longrightarrow 0, \end{equation*}
\begin{equation*} \int _{0}^{T}\left \|g(\!-\!\nabla \underline {u}_{h}(t))(w(t)-\overline {u}_{h}(t))-g(\!-\!\nabla u(t))(w(t)-u(t)) \right \|_{L^{2}(\Omega )}^{2}dt\longrightarrow 0, \end{equation*}
i.e., by Fubini’s theorem, 
 $g(\!-\!\nabla \underline{u}_{h})(w-\overline{u}_{h}) \to g(\!-\!\nabla u)(w-u)$
 in
$g(\!-\!\nabla \underline{u}_{h})(w-\overline{u}_{h}) \to g(\!-\!\nabla u)(w-u)$
 in 
 $L^{2}(\Omega \times (0,T))$
. In total, we obtain
$L^{2}(\Omega \times (0,T))$
. In total, we obtain
 \begin{align} \lim _{h\searrow 0}\int _{0}^{T}\zeta (t)&\int _{\Omega }\varepsilon g(\!-\!\nabla \underline{u}_{h}(t))\partial _{t}u_{h}(t)(w(t)-\overline{u}_{h}(t))dx dt\nonumber \\[5pt] & =\int _{0}^{T}\zeta (t)\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)(w(t)-u(t))dx dt. \end{align}
\begin{align} \lim _{h\searrow 0}\int _{0}^{T}\zeta (t)&\int _{\Omega }\varepsilon g(\!-\!\nabla \underline{u}_{h}(t))\partial _{t}u_{h}(t)(w(t)-\overline{u}_{h}(t))dx dt\nonumber \\[5pt] & =\int _{0}^{T}\zeta (t)\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)(w(t)-u(t))dx dt. \end{align}
Third, it follows from Lemma 3.8(i) that
 \begin{equation} \lim _{h\searrow 0}\frac{\lambda }{4\varepsilon }\int _{0}^{T}\zeta (t)\int _{\Omega }|w(t)-\overline{u}_{h}(t)|^{2}dxdt = \frac{\lambda }{4\varepsilon }\int _{0}^{T}\zeta (t)\int _{\Omega }|w(t)-u(t)|^{2}dxdt. \end{equation}
\begin{equation} \lim _{h\searrow 0}\frac{\lambda }{4\varepsilon }\int _{0}^{T}\zeta (t)\int _{\Omega }|w(t)-\overline{u}_{h}(t)|^{2}dxdt = \frac{\lambda }{4\varepsilon }\int _{0}^{T}\zeta (t)\int _{\Omega }|w(t)-u(t)|^{2}dxdt. \end{equation}
 Integrating (3.17) against 
 $\zeta$
, taking the limit
$\zeta$
, taking the limit 
 $h \searrow 0$
, and plugging in (3.32)–(3.34) proves the desired inequality.
$h \searrow 0$
, and plugging in (3.32)–(3.34) proves the desired inequality.
 With the help of Lemma 3.9, it can be seen that 
 $-\partial _{t}u(t)$
 lies in the
$-\partial _{t}u(t)$
 lies in the 
 $u(t)$
-subdifferential
$u(t)$
-subdifferential 
 $\partial _{u(t)} E_{\varepsilon }[u(t)]$
 for almost every
$\partial _{u(t)} E_{\varepsilon }[u(t)]$
 for almost every 
 $t \in (0,T)$
. Thus, it seems plausible that the limiting trajectory
$t \in (0,T)$
. Thus, it seems plausible that the limiting trajectory 
 $u(t)$
 is a gradient flow for
$u(t)$
 is a gradient flow for 
 $E_{\varepsilon }$
.
$E_{\varepsilon }$
.
Proof of Theorem 
3.5. Choosing 
 ${u_{h}^{0}}=u_{0}$
, one can construct the functions
${u_{h}^{0}}=u_{0}$
, one can construct the functions 
 $u_{h}$
,
$u_{h}$
, 
 $\overline{u}_{h}$
, and
$\overline{u}_{h}$
, and 
 $\underline{u}_{h}$
 by Lemma 3.6 and (3.16). Invoking Lemma 3.8 yields a subsequence
$\underline{u}_{h}$
 by Lemma 3.6 and (3.16). Invoking Lemma 3.8 yields a subsequence 
 $h \searrow 0$
 as well as a function
$h \searrow 0$
 as well as a function 
 $u \in H^{1}(\Omega \times (0,T))\cap L^{\infty }(\Omega \times (0,T))$
 such that
$u \in H^{1}(\Omega \times (0,T))\cap L^{\infty }(\Omega \times (0,T))$
 such that 
 $\|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\|u_{0}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \right \}$
, and such that the three convergence results in Lemma 3.8(i)–(iii) hold true. It remains to be shown that
$\|u-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \left \{\|u_{0}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \right \}$
, and such that the three convergence results in Lemma 3.8(i)–(iii) hold true. It remains to be shown that 
 $u$
 is a weak solution to the anisotropic Allen–Cahn equation with initial data
$u$
 is a weak solution to the anisotropic Allen–Cahn equation with initial data 
 $u_{0}$
 in the sense of Definition 3.3.
$u_{0}$
 in the sense of Definition 3.3.
 As for the initial condition, it follows from the uniform convergence in Lemma 3.8(i) and the choice 
 ${u_{h}^{0}}=u_{0}$
 that
${u_{h}^{0}}=u_{0}$
 that
 \begin{equation*} u(0)=\lim _{h\searrow 0}u_{h}(0)=\lim _{h\searrow 0}{u_{h}^{0}}=u_{0}, \end{equation*}
\begin{equation*} u(0)=\lim _{h\searrow 0}u_{h}(0)=\lim _{h\searrow 0}{u_{h}^{0}}=u_{0}, \end{equation*}
where all limits are in 
 $L^{2}(\Omega )$
.
$L^{2}(\Omega )$
.
 For the optimal energy dissipation relation (3.4) let 
 ${T^{\prime }} \in (0,T]$
 be a fixed time horizon. We define an extension of
${T^{\prime }} \in (0,T]$
 be a fixed time horizon. We define an extension of 
 $u\;:\;\Omega \times [0,{T^{\prime }}]\to{\mathbb{R}}$
 to
$u\;:\;\Omega \times [0,{T^{\prime }}]\to{\mathbb{R}}$
 to 
 $\Omega \times{\mathbb{R}}$
 by
$\Omega \times{\mathbb{R}}$
 by
 \begin{equation*} \tilde {u}(x,t)=\begin {cases} u(x,t)&\text {if } 0\leq t \leq {T^{\prime }},\\[5pt] u(x,0)&\text {if } t \lt 0,\\[5pt] u(x,{T^{\prime }})&\text {if } t\gt {T^{\prime }}. \end {cases} \end{equation*}
\begin{equation*} \tilde {u}(x,t)=\begin {cases} u(x,t)&\text {if } 0\leq t \leq {T^{\prime }},\\[5pt] u(x,0)&\text {if } t \lt 0,\\[5pt] u(x,{T^{\prime }})&\text {if } t\gt {T^{\prime }}. \end {cases} \end{equation*}
 Then 
 $\tilde{u} \in H_{\mathrm{loc}}^{1}(\Omega \times{\mathbb{R}})$
, with the weak time derivative being given by
$\tilde{u} \in H_{\mathrm{loc}}^{1}(\Omega \times{\mathbb{R}})$
, with the weak time derivative being given by 
 $\partial _{t}\tilde{u}(x,t)=\chi _{\Omega \times (0,{T^{\prime }})}\partial _{t}u(x,t)$
. Taking
$\partial _{t}\tilde{u}(x,t)=\chi _{\Omega \times (0,{T^{\prime }})}\partial _{t}u(x,t)$
. Taking 
 $a\gt 0$
,
$a\gt 0$
, 
 $\zeta \;:\!=\;\frac{1}{a}\chi _{(0,{T^{\prime }})}$
, and
$\zeta \;:\!=\;\frac{1}{a}\chi _{(0,{T^{\prime }})}$
, and 
 $w(x,t)\;:\!=\;\tilde{u}(x, t+a)$
 in (3.31) yields
$w(x,t)\;:\!=\;\tilde{u}(x, t+a)$
 in (3.31) yields
 \begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)& \frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}dx dt + a\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{\lambda }{4\varepsilon }\left (\frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}\right )^{2}dxdt\nonumber \\[5pt] &\geq -\int _{0}^{{T^{\prime }}}\frac{E_{\varepsilon }[\tilde{u}(t+a)]-E_{\varepsilon }[\tilde{u}(t)]}{a}dt\nonumber \\[5pt] &=\frac{1}{a}\int _{0}^{a}E_{\varepsilon }[\tilde{u}(t)]dt - \frac{1}{a}\int _{{T^{\prime }}}^{{T^{\prime }}+a}E_{\varepsilon }[\tilde{u}(t)]dt\nonumber \\[5pt] &=\frac{1}{a}\int _{0}^{a}E_{\varepsilon }[u(t)]dt - E_{\varepsilon }[u({T^{\prime }})], \end{align}
\begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)& \frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}dx dt + a\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{\lambda }{4\varepsilon }\left (\frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}\right )^{2}dxdt\nonumber \\[5pt] &\geq -\int _{0}^{{T^{\prime }}}\frac{E_{\varepsilon }[\tilde{u}(t+a)]-E_{\varepsilon }[\tilde{u}(t)]}{a}dt\nonumber \\[5pt] &=\frac{1}{a}\int _{0}^{a}E_{\varepsilon }[\tilde{u}(t)]dt - \frac{1}{a}\int _{{T^{\prime }}}^{{T^{\prime }}+a}E_{\varepsilon }[\tilde{u}(t)]dt\nonumber \\[5pt] &=\frac{1}{a}\int _{0}^{a}E_{\varepsilon }[u(t)]dt - E_{\varepsilon }[u({T^{\prime }})], \end{align}
where we have replaced 
 $u$
 by
$u$
 by 
 $\tilde{u}$
 on
$\tilde{u}$
 on 
 $\Omega \times (0,{T^{\prime }})$
 several times and used the definition of
$\Omega \times (0,{T^{\prime }})$
 several times and used the definition of 
 $\tilde{u}$
 in the last line.
$\tilde{u}$
 in the last line.
 Let us now take 
 $a \searrow 0$
 in the inequality above. As a consequence of the lower semicontinuity of
$a \searrow 0$
 in the inequality above. As a consequence of the lower semicontinuity of 
 $E_{\varepsilon }$
 and the
$E_{\varepsilon }$
 and the 
 $L^{2}$
-continuity of the map
$L^{2}$
-continuity of the map 
 $t\mapsto u(t)$
, we have
$t\mapsto u(t)$
, we have
 \begin{equation*}\liminf _{a \searrow 0} \frac {1}{a}\int _{0}^{a}E_{\varepsilon }[u(t)]dt \geq E_{\varepsilon }[u(0)]=E_{\varepsilon }[u_{0}]. \end{equation*}
\begin{equation*}\liminf _{a \searrow 0} \frac {1}{a}\int _{0}^{a}E_{\varepsilon }[u(t)]dt \geq E_{\varepsilon }[u(0)]=E_{\varepsilon }[u_{0}]. \end{equation*}
Furthermore, it follows from a general fact about Sobolev functions that
 \begin{equation*}\frac {\tilde {u}(\!\cdot +\, a)-\tilde {u}(\!\cdot\!)}{a}{\rightharpoonup } \partial _{t}\tilde {u}(=\partial _{t}u)\qquad \text {in } L^{2}(\Omega \times (0,T))\text { as }a \searrow 0\end{equation*}
\begin{equation*}\frac {\tilde {u}(\!\cdot +\, a)-\tilde {u}(\!\cdot\!)}{a}{\rightharpoonup } \partial _{t}\tilde {u}(=\partial _{t}u)\qquad \text {in } L^{2}(\Omega \times (0,T))\text { as }a \searrow 0\end{equation*}
(see [Reference Gilbarg and Trudinger34, Lemma 7.23 and proof of Lemma 7.24]). In particular, the integral 
 $\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{\lambda }{2\varepsilon }\left (\frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}\right )^{2}dxdt$
 is bounded as
$\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{\lambda }{2\varepsilon }\left (\frac{\tilde{u}(t+a)-\tilde{u}(t)}{a}\right )^{2}dxdt$
 is bounded as 
 $a \searrow 0$
.
$a \searrow 0$
.
 Therefore, the limiting inequality of (3.35) as 
 $a \searrow 0$
 reads
$a \searrow 0$
 reads
 \begin{equation} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))(\partial _{t}u(t))^{2}dx dt \geq E_{\varepsilon }[u_{0}]-E_{\varepsilon }[u({T^{\prime }})], \end{equation}
\begin{equation} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))(\partial _{t}u(t))^{2}dx dt \geq E_{\varepsilon }[u_{0}]-E_{\varepsilon }[u({T^{\prime }})], \end{equation}
which is one inequality in the optimal energy dissipation relation (3.4).
 For the converse inequality, we proceed analogously by taking 
 $w(x,t)\;:\!=\;\tilde{u}(x,t-a)$
 and
$w(x,t)\;:\!=\;\tilde{u}(x,t-a)$
 and 
 $a \searrow 0$
. Using first the fact that
$a \searrow 0$
. Using first the fact that 
 $\frac{\tilde{u}(\cdot -a)-\tilde{u}(\!\cdot\!)}{a}{\rightharpoonup } -\partial _{t}u$
 in
$\frac{\tilde{u}(\cdot -a)-\tilde{u}(\!\cdot\!)}{a}{\rightharpoonup } -\partial _{t}u$
 in 
 $L^{2}(\Omega \times (0,{T^{\prime }}))$
, and second the inequality
$L^{2}(\Omega \times (0,{T^{\prime }}))$
, and second the inequality 
 $\liminf _{a \searrow 0}\frac{1}{a}\int _{{T^{\prime }} - a}^{{T^{\prime }}}E_{\varepsilon }[u(t)]dt\geq E_{\varepsilon }[u({T^{\prime }})]$
, we obtain
$\liminf _{a \searrow 0}\frac{1}{a}\int _{{T^{\prime }} - a}^{{T^{\prime }}}E_{\varepsilon }[u(t)]dt\geq E_{\varepsilon }[u({T^{\prime }})]$
, we obtain
 \begin{equation} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))(\partial _{t}u(t))^{2}dx dt \leq E_{\varepsilon }[u_{0}]-E_{\varepsilon }[u({T^{\prime }})]. \end{equation}
\begin{equation} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u(t))(\partial _{t}u(t))^{2}dx dt \leq E_{\varepsilon }[u_{0}]-E_{\varepsilon }[u({T^{\prime }})]. \end{equation}
The combination of (3.36) and (3.37) is precisely the optimal energy dissipation identity (3.4).
 For the distributional formulation of the PDE (3.3) let 
 $\varphi \in C^{1}(\Omega \times [0,T])$
 and
$\varphi \in C^{1}(\Omega \times [0,T])$
 and 
 $s \gt 0$
. By plugging in
$s \gt 0$
. By plugging in 
 $\zeta \equiv 1$
 and
$\zeta \equiv 1$
 and 
 $w=u+s\varphi$
 into (3.31), we obtain
$w=u+s\varphi$
 into (3.31), we obtain
 \begin{align*} \int _{0}^{T}&\left (E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)] + \int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)s\varphi (t)dx \vphantom{ + \frac{\lambda }{4\varepsilon }\int _{\Omega }s^{2}\varphi (t)^{2}dx}\right .\\[5pt] &\qquad \left .\vphantom{ E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)] + \int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)s\varphi (t)\, dx} + \frac{\lambda }{4\varepsilon }\int _{\Omega }s^{2}\varphi (t)^{2}dx\right )dt\geq 0. \end{align*}
\begin{align*} \int _{0}^{T}&\left (E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)] + \int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)s\varphi (t)dx \vphantom{ + \frac{\lambda }{4\varepsilon }\int _{\Omega }s^{2}\varphi (t)^{2}dx}\right .\\[5pt] &\qquad \left .\vphantom{ E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)] + \int _{\Omega }\varepsilon g(\!-\!\nabla u(t))\partial _{t}u(t)s\varphi (t)\, dx} + \frac{\lambda }{4\varepsilon }\int _{\Omega }s^{2}\varphi (t)^{2}dx\right )dt\geq 0. \end{align*}
Dividing by 
 $s$
 and taking
$s$
 and taking 
 $s \searrow 0$
 leads to
$s \searrow 0$
 leads to
 \begin{align*} \int _{0}^{T}\int _{\Omega }\varepsilon g(\!-\!\nabla u)&\partial _{t}u \varphi \, dx dt \geq -\liminf _{s\searrow 0}\int _{0}^{T}\frac{E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)]}{s}dt\\[5pt] &=-\frac{1}{2}\liminf _{s \searrow 0} \left (\varepsilon \int _{0}^{T}\int _{\Omega }\frac{f(\!-\!\nabla u - s\nabla \varphi )-f(\!-\!\nabla u)}{s}dx dt\vphantom{ + \frac{1}{\varepsilon }\int _{0}^{T}\int _{\Omega }\frac{W(u+s\varphi )-W(u)}{s}dx dt}\right . \\[5pt] &\hspace{8.5pt}\left .\vphantom{\varepsilon \int _{0}^{T}\int _{\Omega }\frac{f(\!-\!\nabla u - s\nabla \varphi )-f(\!-\!\nabla u)}{s}dx dt} + \frac{1}{\varepsilon }\int _{0}^{T}\int _{\Omega }\frac{W(u+s\varphi )-W(u)}{s}dx dt\right )\\[5pt] &=\frac{\varepsilon }{2}\int _{0}^{T}\int _{\Omega }Df(\!-\!\nabla u)\cdot \nabla \varphi \, dx dt-\frac{1}{2\varepsilon }\int _{0}^{T}\int _{\Omega }W^{\prime }(u)\varphi \, dxdt, \end{align*}
\begin{align*} \int _{0}^{T}\int _{\Omega }\varepsilon g(\!-\!\nabla u)&\partial _{t}u \varphi \, dx dt \geq -\liminf _{s\searrow 0}\int _{0}^{T}\frac{E_{\varepsilon }[u(t)+s\varphi (t)]- E_{\varepsilon }[u(t)]}{s}dt\\[5pt] &=-\frac{1}{2}\liminf _{s \searrow 0} \left (\varepsilon \int _{0}^{T}\int _{\Omega }\frac{f(\!-\!\nabla u - s\nabla \varphi )-f(\!-\!\nabla u)}{s}dx dt\vphantom{ + \frac{1}{\varepsilon }\int _{0}^{T}\int _{\Omega }\frac{W(u+s\varphi )-W(u)}{s}dx dt}\right . \\[5pt] &\hspace{8.5pt}\left .\vphantom{\varepsilon \int _{0}^{T}\int _{\Omega }\frac{f(\!-\!\nabla u - s\nabla \varphi )-f(\!-\!\nabla u)}{s}dx dt} + \frac{1}{\varepsilon }\int _{0}^{T}\int _{\Omega }\frac{W(u+s\varphi )-W(u)}{s}dx dt\right )\\[5pt] &=\frac{\varepsilon }{2}\int _{0}^{T}\int _{\Omega }Df(\!-\!\nabla u)\cdot \nabla \varphi \, dx dt-\frac{1}{2\varepsilon }\int _{0}^{T}\int _{\Omega }W^{\prime }(u)\varphi \, dxdt, \end{align*}
where the limit and the integrals can be interchanged in the last step because 
 $u$
 is essentially bounded.
$u$
 is essentially bounded.
 We divide by 
 $\varepsilon$
 to obtain one inequality in (3.3). The converse inequality follows by taking
$\varepsilon$
 to obtain one inequality in (3.3). The converse inequality follows by taking 
 $s \lt 0$
,
$s \lt 0$
, 
 $s \nearrow 0$
.
$s \nearrow 0$
.
3.2 Regularity of weak solutions
 The remainder of this section is devoted to proving a regularity result which states that solutions to the anisotropic Allen–Cahn equation have weak second derivatives in space. We apply a difference quotient method for elliptic regularity. The idea for this proof is taken from [Reference Fonseca and Leoni26]. The fact that 
 $f$
 is, in general, not twice continuously differentiable on
$f$
 is, in general, not twice continuously differentiable on 
 ${\mathbb{R}}^{d}$
 due to a singularity at
${\mathbb{R}}^{d}$
 due to a singularity at 
 $0$
 will not pose a problem when proving the existence of second derivatives, but it prevents us from deriving an additional PDE for the second derivatives.
$0$
 will not pose a problem when proving the existence of second derivatives, but it prevents us from deriving an additional PDE for the second derivatives.
Theorem 3.10 (Spatial regularity of distributional solutions). Let 
 $\varepsilon \gt 0$
. If
$\varepsilon \gt 0$
. If 
 $u$
 is a solution to (
1.4
) in the sense of Definition 3.3
, then
$u$
 is a solution to (
1.4
) in the sense of Definition 3.3
, then 
 $u \in L^{2}\left (0,T;\;H^{2}(\Omega )\right )$
.
$u \in L^{2}\left (0,T;\;H^{2}(\Omega )\right )$
.
It suffices to prove the following
Claim 1. 
Let 
 $u \in H^{1}(\Omega )$
, and suppose that
$u \in H^{1}(\Omega )$
, and suppose that 
 $u$
 is a weak solution to
$u$
 is a weak solution to 
 $-\mathrm{div}(Df(\!-\!\nabla u))=h$
 for some function
$-\mathrm{div}(Df(\!-\!\nabla u))=h$
 for some function 
 $h \in L^{2}(\Omega )$
. More precisely, we assume that
$h \in L^{2}(\Omega )$
. More precisely, we assume that
 \begin{equation*} {\int _{\Omega }} Df(\!-\!\nabla u)\cdot \nabla w \,dx = {\int _{\Omega }} h w\, dx \end{equation*}
\begin{equation*} {\int _{\Omega }} Df(\!-\!\nabla u)\cdot \nabla w \,dx = {\int _{\Omega }} h w\, dx \end{equation*}
for all 
 $w \in H^{1}(\Omega )$
. Then
$w \in H^{1}(\Omega )$
. Then 
 $u$
 has a weak second derivative in space
$u$
 has a weak second derivative in space 
 $\nabla ^{2}u \in L^{2}(\Omega )^{d\times d}$
 and
$\nabla ^{2}u \in L^{2}(\Omega )^{d\times d}$
 and 
 $\|\nabla ^2 u\|_{L^2(\Omega )} \leq C \|h\|_{L^2(\Omega )}$
.
$\|\nabla ^2 u\|_{L^2(\Omega )} \leq C \|h\|_{L^2(\Omega )}$
.
 Theorem 3.10 follows from this claim by choosing 
 $h=2g(\!-\!\nabla u)\partial _{t}u+\frac{1}{\varepsilon ^{2}}W^{\prime }(u)$
 and slicing in time. Then we have
$h=2g(\!-\!\nabla u)\partial _{t}u+\frac{1}{\varepsilon ^{2}}W^{\prime }(u)$
 and slicing in time. Then we have 
 $h(\cdot,t) \in L^{2}(\Omega )$
 for almost every
$h(\cdot,t) \in L^{2}(\Omega )$
 for almost every 
 $t \in (0,T)$
 since
$t \in (0,T)$
 since 
 $\partial _{t}u \in L^{2}(\Omega \times (0,T))$
,
$\partial _{t}u \in L^{2}(\Omega \times (0,T))$
, 
 $u\in L^{\infty }(\Omega \times (0,T))$
, and
$u\in L^{\infty }(\Omega \times (0,T))$
, and 
 $W \in C^{1}({\mathbb{R}})$
. The fact that (3.3) holds true for test functions
$W \in C^{1}({\mathbb{R}})$
. The fact that (3.3) holds true for test functions 
 $w \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
 instead of just
$w \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
 instead of just 
 $C^{1}(\Omega \times [0,T])$
 can be shown with a density argument.
$C^{1}(\Omega \times [0,T])$
 can be shown with a density argument.
Proof of the claim. Given a function 
 $w$
 as in the claim, we define the difference quotient
$w$
 as in the claim, we define the difference quotient
 \begin{equation*}D_{l}^{s}w(x)\;:\!=\;\frac {w(x+se_{l})-w(x)}{s} \end{equation*}
\begin{equation*}D_{l}^{s}w(x)\;:\!=\;\frac {w(x+se_{l})-w(x)}{s} \end{equation*}
for 
 $s\neq 0$
 and
$s\neq 0$
 and 
 $l=1,\ldots, d$
. Then
$l=1,\ldots, d$
. Then 
 $D_{l}^{s}w \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
. The weak formulation of the PDE and the substitution
$D_{l}^{s}w \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
. The weak formulation of the PDE and the substitution 
 $y=x+se_{l}$
 yield
$y=x+se_{l}$
 yield
 \begin{align} {\int _{\Omega }} h D_{l}^{s}w\, dx &={\int _{\Omega }} Df(\!-\!\nabla u)\cdot \nabla D_{l}^{s}w \,dx \nonumber \\[5pt] &={\int _{\Omega }} Df(\!-\!\nabla u(x,t))\cdot \frac{\nabla w(x+se_{l})-\nabla w(x)}{s}\,dx \nonumber \\[5pt] &={\int _{\Omega }} \frac{Df(\!-\!\nabla u(x-se_{l}))-Df(\!-\!\nabla u(x))}{s} \cdot \nabla w(x)\,dx . \end{align}
\begin{align} {\int _{\Omega }} h D_{l}^{s}w\, dx &={\int _{\Omega }} Df(\!-\!\nabla u)\cdot \nabla D_{l}^{s}w \,dx \nonumber \\[5pt] &={\int _{\Omega }} Df(\!-\!\nabla u(x,t))\cdot \frac{\nabla w(x+se_{l})-\nabla w(x)}{s}\,dx \nonumber \\[5pt] &={\int _{\Omega }} \frac{Df(\!-\!\nabla u(x-se_{l}))-Df(\!-\!\nabla u(x))}{s} \cdot \nabla w(x)\,dx . \end{align}
 In order to deal with the right-hand side, we will use the following identity for 
 $i=1,2, \ldots, d$
 and for almost every
$i=1,2, \ldots, d$
 and for almost every 
 $x\in \Omega$
:
$x\in \Omega$
:
 \begin{align} \partial _{\xi _{i}}f(\!-\!\nabla u(x-se_{l}))\,{-}\,&\partial _{\xi _{i}}f(\!-\!\nabla u(x))\nonumber \\[5pt] &=-\sum _{j=1}^{d}\int _{0}^{1}\partial _{\xi _{i}\xi _{j}}^{2}f\left (-r\nabla u(x-se_{l})-(1-r)\nabla u(x)\right )dr\nonumber \\[5pt] &\quad \quad \quad \quad \cdot \left (\partial _{j}u(x-se_{l})-\partial _{j}u(x)\right )\nonumber \\[5pt] &=\sum _{j=1}^{d}A_{ij}^{s}(x)\left (\partial _{j}u(x)-\partial _{j}u(x-se_{l}) \right ), \end{align}
\begin{align} \partial _{\xi _{i}}f(\!-\!\nabla u(x-se_{l}))\,{-}\,&\partial _{\xi _{i}}f(\!-\!\nabla u(x))\nonumber \\[5pt] &=-\sum _{j=1}^{d}\int _{0}^{1}\partial _{\xi _{i}\xi _{j}}^{2}f\left (-r\nabla u(x-se_{l})-(1-r)\nabla u(x)\right )dr\nonumber \\[5pt] &\quad \quad \quad \quad \cdot \left (\partial _{j}u(x-se_{l})-\partial _{j}u(x)\right )\nonumber \\[5pt] &=\sum _{j=1}^{d}A_{ij}^{s}(x)\left (\partial _{j}u(x)-\partial _{j}u(x-se_{l}) \right ), \end{align}
where the shorthand notation in the last line is to be read as
 \begin{equation*}A_{ij}^{s}(x)\;:\!=\;\int _{0}^{1}\partial _{\xi _{i}\xi _{j}}^{2}f\left (-r\nabla u(x-se_{l})-(1-r)\nabla u(x)\right )dr. \end{equation*}
\begin{equation*}A_{ij}^{s}(x)\;:\!=\;\int _{0}^{1}\partial _{\xi _{i}\xi _{j}}^{2}f\left (-r\nabla u(x-se_{l})-(1-r)\nabla u(x)\right )dr. \end{equation*}
 If the line segment between 
 $\nabla u(x-se_{l})$
 and
$\nabla u(x-se_{l})$
 and 
 $\nabla u(x)$
 does not contain the origin, then
$\nabla u(x)$
 does not contain the origin, then 
 $f$
 is twice continuously differentiable in a neighborhood of the line segment, so that (3.39) follows immediately from the fundamental theorem of calculus. On the other hand, if
$f$
 is twice continuously differentiable in a neighborhood of the line segment, so that (3.39) follows immediately from the fundamental theorem of calculus. On the other hand, if 
 $0 \in{\mathrm{conv}}\left (\left \{\nabla u(x-se_{l}),\nabla u(x,t)\right \}\right )$
, then (3.39) can be deduced by decomposing the line segment into two parts and applying the fundamental theorem of calculus on each part.
$0 \in{\mathrm{conv}}\left (\left \{\nabla u(x-se_{l}),\nabla u(x,t)\right \}\right )$
, then (3.39) can be deduced by decomposing the line segment into two parts and applying the fundamental theorem of calculus on each part.
 By the strong convexity of 
 $f$
, there exists a constant
$f$
, there exists a constant 
 $c\gt 0$
 such that
$c\gt 0$
 such that
 \begin{equation*} \xi \cdot D^{2}f(p)\xi \geq c|\xi |^{2} \end{equation*}
\begin{equation*} \xi \cdot D^{2}f(p)\xi \geq c|\xi |^{2} \end{equation*}
for all 
 $\xi \in{\mathbb{R}}^{d}$
,
$\xi \in{\mathbb{R}}^{d}$
, 
 $p \in{\mathbb{R}}^{d}\setminus \{0\}$
. Using the definition of
$p \in{\mathbb{R}}^{d}\setminus \{0\}$
. Using the definition of 
 $A_{ij}^{s}$
, we obtain
$A_{ij}^{s}$
, we obtain
 \begin{align} \nabla D^{-s}_l u \cdot A^s(x) \nabla D^{-s}_l u\geq c|\nabla D^{-s}_l u|^{2} \end{align}
\begin{align} \nabla D^{-s}_l u \cdot A^s(x) \nabla D^{-s}_l u\geq c|\nabla D^{-s}_l u|^{2} \end{align}
for almost every 
 $x\in \Omega$
.
$x\in \Omega$
.
 One can now choose 
 $w = D_{l}^{-s}u$
 in (3.38) and use (3.39) with (3.40) as is standard (see, e.g., [Reference Gilbarg and Trudinger34, Lemma 7.23]) to conclude
$w = D_{l}^{-s}u$
 in (3.38) and use (3.39) with (3.40) as is standard (see, e.g., [Reference Gilbarg and Trudinger34, Lemma 7.23]) to conclude
 \begin{equation*} \int _{\Omega }\left |\nabla D_{l}^{-s}u\right |^{2}dx \leq C{\int _{\Omega }} h^{2}\, dx \lt \infty . \end{equation*}
\begin{equation*} \int _{\Omega }\left |\nabla D_{l}^{-s}u\right |^{2}dx \leq C{\int _{\Omega }} h^{2}\, dx \lt \infty . \end{equation*}
As 
 $\nabla D_{l}^{-s}u \rightharpoonup \partial _{l}\nabla u$
 as
$\nabla D_{l}^{-s}u \rightharpoonup \partial _{l}\nabla u$
 as 
 $s\to 0$
, this concludes the claim.
$s\to 0$
, this concludes the claim.
4. Convergence of the anisotropic Allen–Cahn equation to anisotropic mean curvature flow
 The goal of this section is to prove a conditional convergence result for the sharp-interface limit of the anisotropic Allen–Cahn equation. In order to conclude that the limit is a 
 $BV$
 solution to (1.1) in the sense of Definition 2.8, a critical assumption is the convergence of the time-integrated energies. A statement of the result and a sketch of the proof are included in the notes [Reference Laux39]. Here, we complete the proof and correct a mistake with respect to the phase-field equation (1.4): In [Reference Laux39], the function
$BV$
 solution to (1.1) in the sense of Definition 2.8, a critical assumption is the convergence of the time-integrated energies. A statement of the result and a sketch of the proof are included in the notes [Reference Laux39]. Here, we complete the proof and correct a mistake with respect to the phase-field equation (1.4): In [Reference Laux39], the function 
 $g$
 was defined as
$g$
 was defined as 
 $g(p)=\frac{|p|}{\mu (p)}$
, thereby missing the effect of the anisotropic surface tension
$g(p)=\frac{|p|}{\mu (p)}$
, thereby missing the effect of the anisotropic surface tension 
 $\sigma$
 on
$\sigma$
 on 
 $g$
.
$g$
.
Theorem 4.1. 
Let 
 $(\sigma, \mu )$
 be an admissible pair of anisotropies, and let
$(\sigma, \mu )$
 be an admissible pair of anisotropies, and let 
 $f$
,
$f$
, 
 $g$
 be given by equations (
1.5
), (
1.6
), respectively. Suppose that
$g$
 be given by equations (
1.5
), (
1.6
), respectively. Suppose that 
 $W$
 is a double-well potential satisfying 
(W1)
–
(W5)
. Let
$W$
 is a double-well potential satisfying 
(W1)
–
(W5)
. Let 
 $\{u_{\varepsilon }\}_{\varepsilon \gt 0}$
 be solutions to the anisotropic Allen–Cahn equation in the sense of Definition 3.3 with initial data
$\{u_{\varepsilon }\}_{\varepsilon \gt 0}$
 be solutions to the anisotropic Allen–Cahn equation in the sense of Definition 3.3 with initial data 
 $u_{\varepsilon,0} \in \mathrm{dom}(E_{\varepsilon })$
 and such that
$u_{\varepsilon,0} \in \mathrm{dom}(E_{\varepsilon })$
 and such that 
 $\|u_{\varepsilon }-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \{\|u_{\varepsilon,0}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \}$
. Assume that
$\|u_{\varepsilon }-\tfrac 12\|_{L^{\infty }(\Omega \times (0,T))}\leq \max \{\|u_{\varepsilon,0}-\tfrac 12\|_{L^{\infty }(\Omega )},\tfrac 12 \}$
. Assume that
- 
• the initial conditions are well-prepared, (4.1)as \begin{equation} u_{\varepsilon,0}\longrightarrow u_{0} \qquad \text{in } L^{2}(\Omega ) \qquad \text{and} \qquad E_{\varepsilon }[u_{\varepsilon,0}]\longrightarrow E[u_{0}]\;=\!:\;E_{0}\lt \infty \end{equation} \begin{equation} u_{\varepsilon,0}\longrightarrow u_{0} \qquad \text{in } L^{2}(\Omega ) \qquad \text{and} \qquad E_{\varepsilon }[u_{\varepsilon,0}]\longrightarrow E[u_{0}]\;=\!:\;E_{0}\lt \infty \end{equation} $\varepsilon \searrow 0$
, and that $\varepsilon \searrow 0$
, and that
- 
• there is a uniform  $L^{\infty }$
-bound on the initial conditions,
(4.2) $L^{\infty }$
-bound on the initial conditions,
(4.2) \begin{equation} \limsup _{\varepsilon \searrow 0}\left \|u_{\varepsilon,0}\right \|_{L^{\infty }(\Omega )}\lt \infty . \end{equation} \begin{equation} \limsup _{\varepsilon \searrow 0}\left \|u_{\varepsilon,0}\right \|_{L^{\infty }(\Omega )}\lt \infty . \end{equation}
 
Then there exists a subsequence 
 $\varepsilon \searrow 0$
 as well as a function
$\varepsilon \searrow 0$
 as well as a function
 \begin{equation*}u=\chi \in BV\left (\Omega \times (0,T);\left \{-1,1\right \}\right )\cap C^{0,\frac {1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right ) \end{equation*}
\begin{equation*}u=\chi \in BV\left (\Omega \times (0,T);\left \{-1,1\right \}\right )\cap C^{0,\frac {1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right ) \end{equation*}
such that 
 $u_{\varepsilon } \to u$
 in
$u_{\varepsilon } \to u$
 in 
 $L^{2}(\Omega \times (0,T))$
 as
$L^{2}(\Omega \times (0,T))$
 as 
 $\varepsilon \searrow 0$
.
$\varepsilon \searrow 0$
.
If, furthermore,
 \begin{equation} \lim _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt= \int _{0}^{T}E[u(t)]dt, \end{equation}
\begin{equation} \lim _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt= \int _{0}^{T}E[u(t)]dt, \end{equation}
then 
 $u$
 is a distributional solution to anisotropic mean curvature flow with initial condition
$u$
 is a distributional solution to anisotropic mean curvature flow with initial condition 
 $u(0)=u_{0}$
 in the sense of Definition 2.8
.
$u(0)=u_{0}$
 in the sense of Definition 2.8
.
Similarly to [Reference Luckhaus and Sturzenhecker47], where a minimizing movements construction for isotropic mean curvature is performed, the intuitive meaning of the assumption of energy convergence (4.3) is that no surface area is lost in the limit.
 We will first argue by compactness that a limiting function 
 $u$
 exists. Assumption (4.3) then allows us to prove an equipartition of energy between the anisotropic Dirichlet energy and the nonconvex potential energy as
$u$
 exists. Assumption (4.3) then allows us to prove an equipartition of energy between the anisotropic Dirichlet energy and the nonconvex potential energy as 
 $\varepsilon \searrow 0$
. In addition, this assumption guarantees the existence of a normal velocity
$\varepsilon \searrow 0$
. In addition, this assumption guarantees the existence of a normal velocity 
 $V$
 in the sense of (2.18). We introduce a relative entropy functional which serves as a tilt excess. Using this tilt excess to bound the occurring error terms, we will derive the weak formulation (2.19) from the distributional formulation (3.3) and the optimal energy dissipation inequality (2.20) from (3.4).
$V$
 in the sense of (2.18). We introduce a relative entropy functional which serves as a tilt excess. Using this tilt excess to bound the occurring error terms, we will derive the weak formulation (2.19) from the distributional formulation (3.3) and the optimal energy dissipation inequality (2.20) from (3.4).
4.1 Compactness
 To prove the compactness statement for the solutions 
 $\{u_{\varepsilon } \}_{\varepsilon \gt 0}$
 to the anisotropic Allen–Cahn equation from Theorem 3.5, we will first show a
$\{u_{\varepsilon } \}_{\varepsilon \gt 0}$
 to the anisotropic Allen–Cahn equation from Theorem 3.5, we will first show a 
 $W^{1,1}$
-bound for the compositions of a suitable continuous function with
$W^{1,1}$
-bound for the compositions of a suitable continuous function with 
 $u_{\varepsilon }$
. This argument was performed, for example, by Fonseca and Tartar [Reference Fonseca and Tartar27] in the isotropic case (see also [Reference Leoni44]). However, some simplifications are possible since we assume an
$u_{\varepsilon }$
. This argument was performed, for example, by Fonseca and Tartar [Reference Fonseca and Tartar27] in the isotropic case (see also [Reference Leoni44]). However, some simplifications are possible since we assume an 
 $L^{\infty }$
-bound on the functions
$L^{\infty }$
-bound on the functions 
 $\{u_{\varepsilon } \}$
 instead of prescribing growth conditions on the double-well potential
$\{u_{\varepsilon } \}$
 instead of prescribing growth conditions on the double-well potential 
 $W$
.
$W$
.
Lemma 4.2. 
Let 
 $u_\varepsilon$
 be solutions of the anisotropic Allen–Cahn equation as in Theorem 
3.5
. Under the assumptions of Theorem 
4.1
 except (
4.3
), there exist a subsequence
$u_\varepsilon$
 be solutions of the anisotropic Allen–Cahn equation as in Theorem 
3.5
. Under the assumptions of Theorem 
4.1
 except (
4.3
), there exist a subsequence 
 $\varepsilon \searrow 0$
 and a function
$\varepsilon \searrow 0$
 and a function 
 $u=\chi \in BV\left (\Omega \times (0,T);\left \{0,1\right \}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
 such that
$u=\chi \in BV\left (\Omega \times (0,T);\left \{0,1\right \}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
 such that
- 
•  $u_{\varepsilon }\to u$
 in $u_{\varepsilon }\to u$
 in $L^{2}(\Omega \times (0,T))$
, $L^{2}(\Omega \times (0,T))$
,
- 
•  $\phi \circ u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} \phi \circ u ={c_{0}} \chi$
 in $\phi \circ u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} \phi \circ u ={c_{0}} \chi$
 in $BV(\Omega \times (0,T))$
, and $BV(\Omega \times (0,T))$
, and
- 
•  $\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }}{c_{0}} \chi (t)$
 in $\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }}{c_{0}} \chi (t)$
 in $BV(\Omega )$
 for all $BV(\Omega )$
 for all $t\in [0,T]$ $t\in [0,T]$
 
as 
 $\varepsilon \searrow 0$
, where the function
$\varepsilon \searrow 0$
, where the function 
 $\phi \;:\; {\mathbb{R}}\to{\mathbb{R}}$
 is defined via
$\phi \;:\; {\mathbb{R}}\to{\mathbb{R}}$
 is defined via
 \begin{equation} \phi (z)\;:\!=\;\int _{0}^{z}\sqrt{W(u)}du. \end{equation}
\begin{equation} \phi (z)\;:\!=\;\int _{0}^{z}\sqrt{W(u)}du. \end{equation}
The first step of the proof is to show that
 \begin{equation} \limsup _{\varepsilon \searrow 0}\left \|\phi \circ u_{\varepsilon }\right \|_{W^{1,1}(\Omega \times (0,T))}\lt \infty . \end{equation}
\begin{equation} \limsup _{\varepsilon \searrow 0}\left \|\phi \circ u_{\varepsilon }\right \|_{W^{1,1}(\Omega \times (0,T))}\lt \infty . \end{equation}
 For this step, we observe that, by assumption (4.2), there exists a finite constant 
 $R \gt 0$
 such that
$R \gt 0$
 such that 
 $u_{\varepsilon }(x,t)\in [\!-\!R,R]$
 for almost every
$u_{\varepsilon }(x,t)\in [\!-\!R,R]$
 for almost every 
 $(x,t)\in \Omega \times (0,T)$
 and for all sufficiently small
$(x,t)\in \Omega \times (0,T)$
 and for all sufficiently small 
 $\varepsilon \gt 0$
. Using the continuity of
$\varepsilon \gt 0$
. Using the continuity of 
 $\phi$
, we first estimate
$\phi$
, we first estimate
 \begin{equation} {\int _{0}^{T}\int _{\Omega }} \left |\phi (u_{\varepsilon })\right |dx dt \leq T \sup _{z \in [-R,R]}\left |\phi (z)\right | \lt \infty \end{equation}
\begin{equation} {\int _{0}^{T}\int _{\Omega }} \left |\phi (u_{\varepsilon })\right |dx dt \leq T \sup _{z \in [-R,R]}\left |\phi (z)\right | \lt \infty \end{equation}
for 
 $\varepsilon \gt 0$
 small enough.
$\varepsilon \gt 0$
 small enough.
 Furthermore, the chain rule for Sobolev functions is applicable to the compositions 
 $\phi \circ u_{\varepsilon }$
 even though
$\phi \circ u_{\varepsilon }$
 even though 
 $\phi$
 need not be globally Lipschitz continuous: By virtue of its definition as a primitive function,
$\phi$
 need not be globally Lipschitz continuous: By virtue of its definition as a primitive function, 
 $\phi$
 is continuously differentiable. In particular,
$\phi$
 is continuously differentiable. In particular, 
 $\phi ^{\prime }\big |_{[-R,R]}$
 is bounded, and we can assume without restriction that
$\phi ^{\prime }\big |_{[-R,R]}$
 is bounded, and we can assume without restriction that 
 $\phi ^{\prime }$
 is bounded. Thus, one can estimate
$\phi ^{\prime }$
 is bounded. Thus, one can estimate
 \begin{align} {\int _{0}^{T}\int _{\Omega }} \left |\nabla (\phi \circ u_{\varepsilon })\right |dx dt&={\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }( u_{\varepsilon })\left | \nabla u_{\varepsilon }\right |dx dt \nonumber \\[5pt] &\leq \frac{1}{\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }( u_{\varepsilon })\sigma (\!-\!\nabla u_{\varepsilon })dx dt \nonumber \\[5pt] &\leq \frac{1}{2\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })^{2}+\frac{1}{\varepsilon }\phi ^{\prime }( u_{\varepsilon })^{2}\right )dx dt \nonumber \\[5pt] &= \frac{1}{2\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon }) +\frac{1}{\varepsilon }W( u_{\varepsilon })\right )dx dt \nonumber \\[5pt] &= \frac{1}{\min _{S^{d-1}}\sigma }\int _{0}^{T} E_{\varepsilon }[u_{\varepsilon }(t)] dt \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} \left |\nabla (\phi \circ u_{\varepsilon })\right |dx dt&={\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }( u_{\varepsilon })\left | \nabla u_{\varepsilon }\right |dx dt \nonumber \\[5pt] &\leq \frac{1}{\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }( u_{\varepsilon })\sigma (\!-\!\nabla u_{\varepsilon })dx dt \nonumber \\[5pt] &\leq \frac{1}{2\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })^{2}+\frac{1}{\varepsilon }\phi ^{\prime }( u_{\varepsilon })^{2}\right )dx dt \nonumber \\[5pt] &= \frac{1}{2\min _{S^{d-1}}\sigma }{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon }) +\frac{1}{\varepsilon }W( u_{\varepsilon })\right )dx dt \nonumber \\[5pt] &= \frac{1}{\min _{S^{d-1}}\sigma }\int _{0}^{T} E_{\varepsilon }[u_{\varepsilon }(t)] dt \end{align}
for 
 $\varepsilon \gt 0$
 sufficiently small.
$\varepsilon \gt 0$
 sufficiently small.
 Lastly, a similar argument for small 
 $\varepsilon$
 yields
$\varepsilon$
 yields
 \begin{align} {\int _{0}^{T}\int _{\Omega }} \left | \partial _{t}(\phi \circ u_{\varepsilon })\right | dx dt &={\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }(u_{\varepsilon })\left | \partial _{t} u_{\varepsilon }\right | dx dt \nonumber \\[5pt] &\leq \left ({\int _{0}^{T}\int _{\Omega }} \frac{1}{\varepsilon }W(u_{\varepsilon }) dx dt\right )^{\frac{1}{2}} \left (\int _{0}^{T}\int _{\Omega }\varepsilon |\partial _{t} u_{\varepsilon }|^{2} dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\leq \left (2\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}} \left ( \frac{1}{ c_{g}}{\int _{0}^{T}\int _{\Omega }}\varepsilon g(\!-\!\nabla u_{\varepsilon })|\partial _{t} u_{\varepsilon }|^{2} dx dt \right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \sqrt{\frac{2}{c_{g}}}E_{\varepsilon }[u_{\varepsilon,0}] \sqrt{T}, \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} \left | \partial _{t}(\phi \circ u_{\varepsilon })\right | dx dt &={\int _{0}^{T}\int _{\Omega }} \phi ^{\prime }(u_{\varepsilon })\left | \partial _{t} u_{\varepsilon }\right | dx dt \nonumber \\[5pt] &\leq \left ({\int _{0}^{T}\int _{\Omega }} \frac{1}{\varepsilon }W(u_{\varepsilon }) dx dt\right )^{\frac{1}{2}} \left (\int _{0}^{T}\int _{\Omega }\varepsilon |\partial _{t} u_{\varepsilon }|^{2} dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\leq \left (2\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}} \left ( \frac{1}{ c_{g}}{\int _{0}^{T}\int _{\Omega }}\varepsilon g(\!-\!\nabla u_{\varepsilon })|\partial _{t} u_{\varepsilon }|^{2} dx dt \right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \sqrt{\frac{2}{c_{g}}}E_{\varepsilon }[u_{\varepsilon,0}] \sqrt{T}, \end{align}
where the fourth inequality uses the optimal energy dissipation identity (3.4) in the first and in the second factor.
It is known from assumption (4.1) that
 \begin{equation*}\limsup _{\varepsilon \searrow 0} E_{\varepsilon }[u_{\varepsilon,0}] = E_{0} \lt \infty \quad \text {and} \quad \limsup _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt \leq \lim _{\varepsilon \searrow 0}TE_{\varepsilon }[u_{\varepsilon,0}] =TE_{0} \lt \infty, \end{equation*}
\begin{equation*}\limsup _{\varepsilon \searrow 0} E_{\varepsilon }[u_{\varepsilon,0}] = E_{0} \lt \infty \quad \text {and} \quad \limsup _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt \leq \lim _{\varepsilon \searrow 0}TE_{\varepsilon }[u_{\varepsilon,0}] =TE_{0} \lt \infty, \end{equation*}
where the second estimate makes use of the fact that 
 $t\mapsto E_{\varepsilon }[u_{\varepsilon }(t)]$
 is nonincreasing by (3.4). Thus, the estimates (4.6)–(4.8) suffice to prove (4.5).
$t\mapsto E_{\varepsilon }[u_{\varepsilon }(t)]$
 is nonincreasing by (3.4). Thus, the estimates (4.6)–(4.8) suffice to prove (4.5).
 In addition to (4.5), we want to derive a uniform 
 $W^{1,1}$
-estimate for fixed times
$W^{1,1}$
-estimate for fixed times 
 $t\in (0,T)$
, namely
$t\in (0,T)$
, namely
 \begin{equation} \limsup _{\varepsilon \searrow 0}\,\underset{t\in (0,T)}{\mathrm{ess}\sup }\left \|\phi \circ u_{\varepsilon }(t)\right \|_{W^{1,1}(\Omega )}\lt \infty . \end{equation}
\begin{equation} \limsup _{\varepsilon \searrow 0}\,\underset{t\in (0,T)}{\mathrm{ess}\sup }\left \|\phi \circ u_{\varepsilon }(t)\right \|_{W^{1,1}(\Omega )}\lt \infty . \end{equation}
 Indeed, it follows by Fubini’s theorem that 
 $\| u_{\varepsilon }(t)\|_{L^{\infty }}\leq R$
 for almost every
$\| u_{\varepsilon }(t)\|_{L^{\infty }}\leq R$
 for almost every 
 $t \in (0,T)$
 if
$t \in (0,T)$
 if 
 $\varepsilon \gt 0$
 is small enough, and we can argue similarly as in (4.6) and (4.7) to show that
$\varepsilon \gt 0$
 is small enough, and we can argue similarly as in (4.6) and (4.7) to show that
 \begin{equation*} \int _{\Omega }\left |\phi \circ u_{\varepsilon }(x,t)\right |dx\leq \sup _{z\in [-R,R]}|\phi (z)|\lt \infty \end{equation*}
\begin{equation*} \int _{\Omega }\left |\phi \circ u_{\varepsilon }(x,t)\right |dx\leq \sup _{z\in [-R,R]}|\phi (z)|\lt \infty \end{equation*}
and
 \begin{equation*}\int _{\Omega }\left |\nabla (\phi \circ u_{\varepsilon })(x,t)\right |dx\leq \frac {1}{\min _{S^{d-1}}\sigma }E_{\varepsilon }[u_{\varepsilon }(t)]\leq \frac {1}{\min _{S^{d-1}}\sigma }E_{\varepsilon }[u_{\varepsilon,0}]\lt \infty \end{equation*}
\begin{equation*}\int _{\Omega }\left |\nabla (\phi \circ u_{\varepsilon })(x,t)\right |dx\leq \frac {1}{\min _{S^{d-1}}\sigma }E_{\varepsilon }[u_{\varepsilon }(t)]\leq \frac {1}{\min _{S^{d-1}}\sigma }E_{\varepsilon }[u_{\varepsilon,0}]\lt \infty \end{equation*}
for a.e. 
 $t\in (0,T)$
 and all
$t\in (0,T)$
 and all 
 $\varepsilon \gt 0$
 sufficiently small. These two observations prove (4.9).
$\varepsilon \gt 0$
 sufficiently small. These two observations prove (4.9).
 Bounded sequences in 
 $BV(\Omega \times (0,T))$
 admit a weakly-* convergent subsequence by a version of [Reference Ambrosio, Fusco and Pallara2, Theorem 3.23]. Thus, by (4.5), we can find a subsequence
$BV(\Omega \times (0,T))$
 admit a weakly-* convergent subsequence by a version of [Reference Ambrosio, Fusco and Pallara2, Theorem 3.23]. Thus, by (4.5), we can find a subsequence 
 $\varepsilon \searrow 0$
 such that
$\varepsilon \searrow 0$
 such that 
 $\phi \circ u_{\varepsilon }$
 converge weakly-* in
$\phi \circ u_{\varepsilon }$
 converge weakly-* in 
 $BV(\Omega \times (0,T))$
 as
$BV(\Omega \times (0,T))$
 as 
 $\varepsilon \searrow 0$
. Let us denote the limiting function by
$\varepsilon \searrow 0$
. Let us denote the limiting function by 
 $v \in BV(\Omega \times (0,T))$
. Then, in particular,
$v \in BV(\Omega \times (0,T))$
. Then, in particular, 
 $\phi \circ u_{\varepsilon } \to v$
 in
$\phi \circ u_{\varepsilon } \to v$
 in 
 $L^{1}(\Omega \times (0,T))$
, and we can assume without restriction that
$L^{1}(\Omega \times (0,T))$
, and we can assume without restriction that
 \begin{equation} \phi \circ u_{\varepsilon }(x,t)\longrightarrow v(x,t)\qquad \text{for a.e. } (x,t)\in \Omega \times (0,T) \end{equation}
\begin{equation} \phi \circ u_{\varepsilon }(x,t)\longrightarrow v(x,t)\qquad \text{for a.e. } (x,t)\in \Omega \times (0,T) \end{equation}
and
 \begin{equation} \phi \circ u_{\varepsilon }(t)\longrightarrow v(t)\qquad \text{in } L^{1}(\Omega )\qquad \text{for a.e. } t\in (0,T), \end{equation}
\begin{equation} \phi \circ u_{\varepsilon }(t)\longrightarrow v(t)\qquad \text{in } L^{1}(\Omega )\qquad \text{for a.e. } t\in (0,T), \end{equation}
which can be accomplished by taking a further subsequence. It follows from (4.9), (4.11), and the characterization [Reference Ambrosio, Fusco and Pallara2, Proposition 3.13] of weak-* convergence in 
 $BV$
 that
$BV$
 that 
 $\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }} v(t)$
 in
$\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }} v(t)$
 in 
 $BV(\Omega )$
 for a.e.
$BV(\Omega )$
 for a.e. 
 $t\in (0,T)$
.
$t\in (0,T)$
.
 From now on, the limit 
 $\varepsilon \searrow 0$
 is to be understood as the limit along a subsequence
$\varepsilon \searrow 0$
 is to be understood as the limit along a subsequence 
 $\{\varepsilon _{j}\}_{j \in{\mathbb{N}}}$
 such that
$\{\varepsilon _{j}\}_{j \in{\mathbb{N}}}$
 such that 
 $\varepsilon _{j} \searrow 0$
 and
$\varepsilon _{j} \searrow 0$
 and 
 $\phi \circ u_{\varepsilon _{j}}{\overset{{*}}{\rightharpoonup }} v$
 in
$\phi \circ u_{\varepsilon _{j}}{\overset{{*}}{\rightharpoonup }} v$
 in 
 $BV(\Omega \times (0,T))$
 as
$BV(\Omega \times (0,T))$
 as 
 $j\to \infty$
, and such that the pointwise convergence properties as in (4.10) and (4.11) hold true.
$j\to \infty$
, and such that the pointwise convergence properties as in (4.10) and (4.11) hold true.
 The following argument for the Hölder continuity 
 $v \in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 is adapted from [Reference Hensel and Laux35, Lemma 2], where Hensel and the first author deal with the Hölder continuity in the isotropic case: Let
$v \in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 is adapted from [Reference Hensel and Laux35, Lemma 2], where Hensel and the first author deal with the Hölder continuity in the isotropic case: Let 
 $0 \leq s \leq t \leq T$
. If we proceed as in (4.8), but only integrate from
$0 \leq s \leq t \leq T$
. If we proceed as in (4.8), but only integrate from 
 $s$
 to
$s$
 to 
 $t$
, we find
$t$
, we find
 \begin{align} \int _{\Omega }\left |\phi (u_{\varepsilon }(x,t))-\phi (u_{\varepsilon }(x,s)) \right |dx &\leq \int _{s}^{t}\int _{\Omega }\left |\partial _{t}\!\left (\phi \circ u_{\varepsilon }\right ) \right |dx dt\nonumber \\[5pt] &\leq \sqrt{\frac{2}{c_{g}}}E_{\varepsilon }[u_{\varepsilon,0}] \sqrt{t-s}. \end{align}
\begin{align} \int _{\Omega }\left |\phi (u_{\varepsilon }(x,t))-\phi (u_{\varepsilon }(x,s)) \right |dx &\leq \int _{s}^{t}\int _{\Omega }\left |\partial _{t}\!\left (\phi \circ u_{\varepsilon }\right ) \right |dx dt\nonumber \\[5pt] &\leq \sqrt{\frac{2}{c_{g}}}E_{\varepsilon }[u_{\varepsilon,0}] \sqrt{t-s}. \end{align}
There exists a null set 
 $N\subset (0,T)$
 such that, for all
$N\subset (0,T)$
 such that, for all 
 $s,t \in (0,T)\setminus N$
, we can pass to the limit
$s,t \in (0,T)\setminus N$
, we can pass to the limit 
 $\varepsilon \searrow 0$
 to obtain
$\varepsilon \searrow 0$
 to obtain
 \begin{equation*} \int _{\Omega }\left |v(x,t)-v(x,s)\right |dx \leq \sqrt {\frac {2}{c_{g}}}E_{0}\sqrt {t-s}. \end{equation*}
\begin{equation*} \int _{\Omega }\left |v(x,t)-v(x,s)\right |dx \leq \sqrt {\frac {2}{c_{g}}}E_{0}\sqrt {t-s}. \end{equation*}
This allows us to redefine 
 $v$
 on the null set
$v$
 on the null set 
 $\Omega \times N$
 so that
$\Omega \times N$
 so that 
 $v\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
.
$v\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
.
 We identify 
 $\phi \circ u_{\varepsilon }$
 with their Hölder continuous representatives due to (4.12). If a sequence of uniformly Hölder continuous functions converges pointwise almost everywhere, it follows that the sequence converges pointwise. In particular, we can upgrade the
$\phi \circ u_{\varepsilon }$
 with their Hölder continuous representatives due to (4.12). If a sequence of uniformly Hölder continuous functions converges pointwise almost everywhere, it follows that the sequence converges pointwise. In particular, we can upgrade the 
 $L^{1}(\Omega )$
-convergence for a.e.
$L^{1}(\Omega )$
-convergence for a.e. 
 $t\in (0,T)$
 in (4.11) to
$t\in (0,T)$
 in (4.11) to 
 $L^{1}(\Omega )$
-convergence for all
$L^{1}(\Omega )$
-convergence for all 
 $t\in [0,T]$
.
$t\in [0,T]$
.
 Using the continuity 
 $\phi \circ u_{\varepsilon }\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 and the lower semicontinuity of the variation [Reference Ambrosio, Fusco and Pallara2, Remark 3.5], we conclude from (4.9) that
$\phi \circ u_{\varepsilon }\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 and the lower semicontinuity of the variation [Reference Ambrosio, Fusco and Pallara2, Remark 3.5], we conclude from (4.9) that
 \begin{equation*} \limsup _{\varepsilon \searrow 0}\sup _{t\in [0,T]}\left \|\phi \circ u_{\varepsilon }(t)\right \|_{BV(\Omega )}\lt \infty, \end{equation*}
\begin{equation*} \limsup _{\varepsilon \searrow 0}\sup _{t\in [0,T]}\left \|\phi \circ u_{\varepsilon }(t)\right \|_{BV(\Omega )}\lt \infty, \end{equation*}
i.e., we can also upgrade the essential boundedness of the 
 $BV$
-norm to uniform boundedness in time. From this, one finds that
$BV$
-norm to uniform boundedness in time. From this, one finds that 
 $\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }} v(t)$
 in
$\phi \circ u_{\varepsilon }(t){\overset{{*}}{\rightharpoonup }} v(t)$
 in 
 $BV(\Omega )$
 for all
$BV(\Omega )$
 for all 
 $t \in [0,T]$
 and that
$t \in [0,T]$
 and that 
 $v \in L^{\infty }\left (0,T;\;BV(\Omega )\right )$
. (This statement includes the measurability of the measure-valued map
$v \in L^{\infty }\left (0,T;\;BV(\Omega )\right )$
. (This statement includes the measurability of the measure-valued map 
 $t \mapsto \nabla v(t)$
 in the sense of [Reference Ambrosio, Fusco and Pallara2, Definition 2.25], which follows from the fact that we have
$t \mapsto \nabla v(t)$
 in the sense of [Reference Ambrosio, Fusco and Pallara2, Definition 2.25], which follows from the fact that we have 
 $\sup _{t \in [0,T]}\int _{\Omega }|\nabla v(t)|\lt \infty$
 and
$\sup _{t \in [0,T]}\int _{\Omega }|\nabla v(t)|\lt \infty$
 and 
 $v(t)\to v(t_{0})$
 in
$v(t)\to v(t_{0})$
 in 
 $L^{1}(\Omega )$
 as
$L^{1}(\Omega )$
 as 
 $t \to t_{0}$
, and therefore
$t \to t_{0}$
, and therefore 
 $\nabla v(t){\overset{{*}}{\rightharpoonup }} \nabla v(t_{0})$
 in
$\nabla v(t){\overset{{*}}{\rightharpoonup }} \nabla v(t_{0})$
 in 
 ${\mathcal{M}}(\Omega )$
 as
${\mathcal{M}}(\Omega )$
 as 
 $t \to t_{0}$
.)
$t \to t_{0}$
.)
 Let us turn to the convergence result for the solutions 
 $u_{\varepsilon }$
. As the function
$u_{\varepsilon }$
. As the function 
 $\sqrt{W}$
 is strictly positive except at two isolated points, the primitive function
$\sqrt{W}$
 is strictly positive except at two isolated points, the primitive function 
 $\phi$
 is strictly increasing. Therefore, there exists a continuous inverse
$\phi$
 is strictly increasing. Therefore, there exists a continuous inverse 
 $\phi ^{-1}$
, and we obtain from (4.10) that
$\phi ^{-1}$
, and we obtain from (4.10) that
 \begin{equation*} u_{\varepsilon }(x,t)\longrightarrow u(x,t)\;:\!=\;\phi ^{-1}(v(x,t)) \qquad \text {as } \varepsilon \searrow 0 \qquad \text {for almost all } (x, t)\in \Omega \times (0,T). \end{equation*}
\begin{equation*} u_{\varepsilon }(x,t)\longrightarrow u(x,t)\;:\!=\;\phi ^{-1}(v(x,t)) \qquad \text {as } \varepsilon \searrow 0 \qquad \text {for almost all } (x, t)\in \Omega \times (0,T). \end{equation*}
By (4.2) and the dominated convergence theorem, we may conclude 
 $u_{\varepsilon }\to u$
 in
$u_{\varepsilon }\to u$
 in 
 $L^{2}(\Omega \times (0,T))$
 as
$L^{2}(\Omega \times (0,T))$
 as 
 $\varepsilon \searrow 0$
.
$\varepsilon \searrow 0$
.
 To see that the limiting function 
 $u$
 takes values in
$u$
 takes values in 
 $\{0,1\}$
 it suffices to use Fatou’s lemma:
$\{0,1\}$
 it suffices to use Fatou’s lemma:
 \begin{equation*}\int _0^T\int _{\Omega } W(u)\, dx\, dt \leq \liminf _{\varepsilon \to 0} \int _0^T\int _{\Omega } W(u_\varepsilon ) \, dx \, dt \leq \liminf \varepsilon \int _0^T E_\varepsilon [u_\varepsilon (\cdot,t)]\, dt = 0.\end{equation*}
\begin{equation*}\int _0^T\int _{\Omega } W(u)\, dx\, dt \leq \liminf _{\varepsilon \to 0} \int _0^T\int _{\Omega } W(u_\varepsilon ) \, dx \, dt \leq \liminf \varepsilon \int _0^T E_\varepsilon [u_\varepsilon (\cdot,t)]\, dt = 0.\end{equation*}
Consequently, we have 
 $W(u)=0$
, i.e.,
$W(u)=0$
, i.e., 
 $u \in \{0,1\}$
 almost everywhere in
$u \in \{0,1\}$
 almost everywhere in 
 $\Omega \times (0,T)$
.
$\Omega \times (0,T)$
.
 The representation 
 $v = \phi \circ u ={c_{0}} \chi$
 now follows from
$v = \phi \circ u ={c_{0}} \chi$
 now follows from 
 $\phi (0)=0$
 and
$\phi (0)=0$
 and 
 $\phi (1)={c_{0}}$
. Since
$\phi (1)={c_{0}}$
. Since 
 $v \in BV\left (\Omega \times (0,T);\;\mathbb{R}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
, it follows that the same holds true for
$v \in BV\left (\Omega \times (0,T);\;\mathbb{R}\right )\cap C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )\cap L^{\infty }\left (0,T;\;BV(\Omega )\right )$
, it follows that the same holds true for 
 $u=\frac{1}{{c_{0}}}v$
.
$u=\frac{1}{{c_{0}}}v$
.
4.2 Equipartition of energy
 The following theorem states that, asymptotically as 
 $\varepsilon \searrow 0$
, the anisotropic Dirichlet energy
$\varepsilon \searrow 0$
, the anisotropic Dirichlet energy 
 $\frac{1}{2}{\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })dx dt$
 and the nonconvex term
$\frac{1}{2}{\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })dx dt$
 and the nonconvex term 
 $\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\varepsilon }W(u_{\varepsilon })dx dt$
 contribute equally to the Cahn-Hilliard energy. The equipartition of energy also holds true in a localized form. The argument relies crucially on the energy convergence assumption (4.3) and uses a trick introduced by Modica–Mortola for Gamma-convergence of the energies [Reference Modica and Mortola49] (see also [Reference Bogomol’nyi8]). Equipartition results of this kind have been used to prove conditional convergence in the static or dynamic case since [Reference Luckhaus and Modica46, Reference Modica48].
$\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\varepsilon }W(u_{\varepsilon })dx dt$
 contribute equally to the Cahn-Hilliard energy. The equipartition of energy also holds true in a localized form. The argument relies crucially on the energy convergence assumption (4.3) and uses a trick introduced by Modica–Mortola for Gamma-convergence of the energies [Reference Modica and Mortola49] (see also [Reference Bogomol’nyi8]). Equipartition results of this kind have been used to prove conditional convergence in the static or dynamic case since [Reference Luckhaus and Modica46, Reference Modica48].
Statements (i) and (ii) can be viewed primarily as preparatory results for the equipartition statements (iii)–(v).
Theorem 4.3. 
Under the assumptions of Theorem 
4.1
, including the energy convergence (
4.3
), the following convergence statements hold true in the limit 
 $\varepsilon \searrow 0$
:
$\varepsilon \searrow 0$
:
- 
(i) (4.13) \begin{equation} \frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]), \end{equation} \begin{equation} \frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]), \end{equation}
- 
(ii) (4.14) \begin{equation} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]), \end{equation} \begin{equation} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]), \end{equation}
- 
(iii) (4.15) \begin{equation} \sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \longrightarrow 0 \qquad \text{in } L^{2}(\Omega \times (0,T)), \end{equation} \begin{equation} \sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \longrightarrow 0 \qquad \text{in } L^{2}(\Omega \times (0,T)), \end{equation}
- 
(iv) (4.16) \begin{equation} \frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )\longrightarrow 0 \qquad \text{in } L^{1}(\Omega \times (0,T)), \end{equation} \begin{equation} \frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )\longrightarrow 0 \qquad \text{in } L^{1}(\Omega \times (0,T)), \end{equation}
- 
(v) (4.17) \begin{equation} \varepsilon f(\!-\!\nabla u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \chi \big | \quad \text{and} \quad \frac{1}{\varepsilon }W(u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]). \end{equation} \begin{equation} \varepsilon f(\!-\!\nabla u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \chi \big | \quad \text{and} \quad \frac{1}{\varepsilon }W(u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T]). \end{equation}
Proof.
- 
(i) It suffices to show that for all \begin{equation*}\frac {1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac {1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt \to {c_{0}} {\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta {\big |\nabla \chi \big |} \end{equation*} \begin{equation*}\frac {1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac {1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt \to {c_{0}} {\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta {\big |\nabla \chi \big |} \end{equation*} $\zeta \in C^{1}(\Omega \times [0,T])$
 with $\zeta \in C^{1}(\Omega \times [0,T])$
 with $0\leq \zeta \leq 1$
. By a density and linearity argument, the same convergence then holds true for all $0\leq \zeta \leq 1$
. By a density and linearity argument, the same convergence then holds true for all $\zeta \in C(\Omega \times [0,T])$
. $\zeta \in C(\Omega \times [0,T])$
.If  $\zeta \in C^{1}(\Omega \times [0,T])$
 and $\zeta \in C^{1}(\Omega \times [0,T])$
 and $0\leq \zeta \leq 1$
, we can use Young’s inequality and the chain rule for Sobolev functions to estimateBy Lemma 2.5, we have that $0\leq \zeta \leq 1$
, we can use Young’s inequality and the chain rule for Sobolev functions to estimateBy Lemma 2.5, we have that \begin{align*} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt &\geq{\int _{0}^{T}\int _{\Omega }} \sqrt{f(\!-\!\nabla u_{\varepsilon })W(u_{\varepsilon }) } \,\zeta dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }} \sigma (-\phi ^{\prime }(u_{\varepsilon })\nabla u_{\varepsilon }) \zeta dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt. \end{align*}
(4.18)for all \begin{align*} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt &\geq{\int _{0}^{T}\int _{\Omega }} \sqrt{f(\!-\!\nabla u_{\varepsilon })W(u_{\varepsilon }) } \,\zeta dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }} \sigma (-\phi ^{\prime }(u_{\varepsilon })\nabla u_{\varepsilon }) \zeta dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt. \end{align*}
(4.18)for all \begin{equation} {\int _{0}^{T}\int _{\Omega }} \sigma (B)\,dxdt=\sup _{\eta \in C^{1}(\Omega \times [0,T])\atop \sigma{^{\circ }}(\eta )\leq 1}{\int _{0}^{T}\int _{\Omega }} B\cdot \eta \,dx dt \end{equation} \begin{equation} {\int _{0}^{T}\int _{\Omega }} \sigma (B)\,dxdt=\sup _{\eta \in C^{1}(\Omega \times [0,T])\atop \sigma{^{\circ }}(\eta )\leq 1}{\int _{0}^{T}\int _{\Omega }} B\cdot \eta \,dx dt \end{equation} $B\in L^{1}(\Omega \times (0,T))^{d}$
. $B\in L^{1}(\Omega \times (0,T))^{d}$
.We apply (4.18) and the  $L^{1}$
-convergence $L^{1}$
-convergence $\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
 as $\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
 as $\varepsilon \searrow 0$
 to the above estimate, which, recalling Lemma 2.3, yields(4.19)where the supremum is taken over all $\varepsilon \searrow 0$
 to the above estimate, which, recalling Lemma 2.3, yields(4.19)where the supremum is taken over all \begin{align} \liminf _{\varepsilon \searrow 0} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\nonumber \\[5pt] &\geq \liminf _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt \nonumber \\[5pt] &= \liminf _{\varepsilon \searrow 0} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \eta \cdot (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt \nonumber \\[5pt] &= \liminf _{\varepsilon \searrow 0} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }}(\phi \circ u_{\varepsilon })\mathrm{div}(\zeta \eta ) dx dt \nonumber \\[5pt] &\geq{c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }}\chi \mathrm{div}(\zeta \eta ) dx dt \nonumber \\[5pt] &= -{c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \zeta \eta \cdot \frac{\nabla \chi }{{\big |\nabla \chi \big |}}{\big |\nabla \chi \big |} \nonumber \\[5pt] &={c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \zeta \eta \cdot \nu{\big |\nabla \chi \big |}\nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta{\big |\nabla \chi \big |}, \end{align} \begin{align} \liminf _{\varepsilon \searrow 0} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\nonumber \\[5pt] &\geq \liminf _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt \nonumber \\[5pt] &= \liminf _{\varepsilon \searrow 0} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \eta \cdot (\!-\!\nabla (\phi \circ u_{\varepsilon }))\zeta dx dt \nonumber \\[5pt] &= \liminf _{\varepsilon \searrow 0} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }}(\phi \circ u_{\varepsilon })\mathrm{div}(\zeta \eta ) dx dt \nonumber \\[5pt] &\geq{c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }}\chi \mathrm{div}(\zeta \eta ) dx dt \nonumber \\[5pt] &= -{c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \zeta \eta \cdot \frac{\nabla \chi }{{\big |\nabla \chi \big |}}{\big |\nabla \chi \big |} \nonumber \\[5pt] &={c_{0}} \sup _{\eta }{\int _{0}^{T}\int _{\Omega }} \zeta \eta \cdot \nu{\big |\nabla \chi \big |}\nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta{\big |\nabla \chi \big |}, \end{align} $\eta \in C^{1}(\Omega \times [0,T])^{d}$
 such that $\eta \in C^{1}(\Omega \times [0,T])^{d}$
 such that $\sigma{^{\circ }}(\eta )\leq 1$
. To prove the estimate from above, we observe that (4.19) also applies to the function $\sigma{^{\circ }}(\eta )\leq 1$
. To prove the estimate from above, we observe that (4.19) also applies to the function $1-\zeta$
 instead of $1-\zeta$
 instead of $\zeta$
, and use the energy convergence assumption (4.3). Indeed,(4.20)The combination of the two inequalities (4.19) and (4.20) yields the first claim. $\zeta$
, and use the energy convergence assumption (4.3). Indeed,(4.20)The combination of the two inequalities (4.19) and (4.20) yields the first claim. \begin{align} \limsup _{\varepsilon \searrow 0} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\nonumber \\[5pt] &=\limsup _{\varepsilon \searrow 0} \left (\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt \right .\nonumber \\[5pt] &\hspace{8.5pt}\left . - \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left ({\varepsilon } f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) (1-\zeta ) dx dt \right )\nonumber \\[5pt] &=\lim _{\varepsilon \searrow 0} \int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\nonumber \\[5pt] &\quad{- \liminf _{\varepsilon \searrow 0}\frac{1}{2}}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) (1-\zeta ) dx dt\nonumber \\[5pt] &\leq \int _{0}^{T}E[u(t)]dt -{c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) (1-\zeta ){\big |\nabla \chi \big |} \nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) \zeta{\big |\nabla \chi \big |} . \end{align} \begin{align} \limsup _{\varepsilon \searrow 0} \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\nonumber \\[5pt] &=\limsup _{\varepsilon \searrow 0} \left (\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt \right .\nonumber \\[5pt] &\hspace{8.5pt}\left . - \frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left ({\varepsilon } f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) (1-\zeta ) dx dt \right )\nonumber \\[5pt] &=\lim _{\varepsilon \searrow 0} \int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\nonumber \\[5pt] &\quad{- \liminf _{\varepsilon \searrow 0}\frac{1}{2}}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) (1-\zeta ) dx dt\nonumber \\[5pt] &\leq \int _{0}^{T}E[u(t)]dt -{c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) (1-\zeta ){\big |\nabla \chi \big |} \nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) \zeta{\big |\nabla \chi \big |} . \end{align}
- 
(ii) In the same manner as in (i), it suffices to show that whenever \begin{equation*}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \zeta dx dt \to {c_{0}} {\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta {\big |\nabla \chi \big |} \end{equation*} \begin{equation*}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \zeta dx dt \to {c_{0}} {\int _{0}^{T}\int _{\Omega }} \sigma (\nu )\zeta {\big |\nabla \chi \big |} \end{equation*} $\zeta \in C^{1}(\Omega \times [0,T])$
 and $\zeta \in C^{1}(\Omega \times [0,T])$
 and $0 \leq \zeta \leq 1$
. $0 \leq \zeta \leq 1$
.The  $\liminf$
 inequality follows from the chain of inequalities in (4.19). $\liminf$
 inequality follows from the chain of inequalities in (4.19).For the  $\limsup$
 inequality, we can use Young’s inequality and (i) to compute $\limsup$
 inequality, we can use Young’s inequality and (i) to compute \begin{align*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \zeta dx dt &\leq \lim _{\varepsilon \searrow 0}\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) \zeta{\big |\nabla \chi \big |}. \end{align*} \begin{align*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \zeta dx dt &\leq \lim _{\varepsilon \searrow 0}\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) \zeta dx dt\\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ) \zeta{\big |\nabla \chi \big |}. \end{align*}
- 
(iii) By taking  $\zeta \equiv 1$
 as test functions for the weak-* limits in (i) and (ii), we see that(4.21)This observation allows us to compute $\zeta \equiv 1$
 as test functions for the weak-* limits in (i) and (ii), we see that(4.21)This observation allows us to compute \begin{align} \lim _{\varepsilon \searrow 0}\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) &dx dt = \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) dx dt \nonumber \\[5pt] & ={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ){\big |\nabla \chi \big |}. \end{align} \begin{align} \lim _{\varepsilon \searrow 0}\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) &dx dt = \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) dx dt \nonumber \\[5pt] & ={c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ){\big |\nabla \chi \big |}. \end{align} \begin{align*}{\int _{0}^{T}\int _{\Omega }}& \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt - 2{\int _{0}^{T}\int _{\Omega }} \sqrt{f(\!-\!\nabla u_{\varepsilon })W(u_{\varepsilon })}dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt - 2{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))dx dt\\[5pt] &\longrightarrow 0 \qquad \text{as } \varepsilon \searrow 0. \end{align*} \begin{align*}{\int _{0}^{T}\int _{\Omega }}& \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt - 2{\int _{0}^{T}\int _{\Omega }} \sqrt{f(\!-\!\nabla u_{\varepsilon })W(u_{\varepsilon })}dx dt\\[5pt] &={\int _{0}^{T}\int _{\Omega }}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right ) dx dt - 2{\int _{0}^{T}\int _{\Omega }} \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon }))dx dt\\[5pt] &\longrightarrow 0 \qquad \text{as } \varepsilon \searrow 0. \end{align*}
- 
(iv) Young’s inequality yields for all \begin{align*} \left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon })\right |&\leq \delta \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}+\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} \\[5pt] &\quad + \frac{1}{4\delta }\left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} \end{align*} \begin{align*} \left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon })\right |&\leq \delta \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}+\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} \\[5pt] &\quad + \frac{1}{4\delta }\left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} \end{align*} $\delta \gt 0$
. Taking the limit $\delta \gt 0$
. Taking the limit $\varepsilon \searrow 0$
 and using (iii) as well as (4.21), we obtainSince $\varepsilon \searrow 0$
 and using (iii) as well as (4.21), we obtainSince \begin{align*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }}&\left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon })\right | dx dt \\[5pt] &\leq \delta \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}+\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} dx dt\\[5pt] &= \delta \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) + 2 \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \right ) dx dt\\[5pt] &= 4 \delta{c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ){\big |\nabla \chi \big |}. \end{align*} \begin{align*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }}&\left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac{1}{\varepsilon }W(u_{\varepsilon })\right | dx dt \\[5pt] &\leq \delta \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}+\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \right )^{2} dx dt\\[5pt] &= \delta \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) + 2 \sigma (\!-\!\nabla (\phi \circ u_{\varepsilon })) \right ) dx dt\\[5pt] &= 4 \delta{c_{0}}{\int _{0}^{T}\int _{\Omega }} \sigma (\nu ){\big |\nabla \chi \big |}. \end{align*} $\delta \gt 0$
 is arbitrary, it follows that $\delta \gt 0$
 is arbitrary, it follows that \begin{equation*} \lim _{\varepsilon \searrow 0} {\int _{0}^{T}\int _{\Omega }}\left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac {1}{\varepsilon }W(u_{\varepsilon })\right | dx dt=0. \end{equation*} \begin{equation*} \lim _{\varepsilon \searrow 0} {\int _{0}^{T}\int _{\Omega }}\left |\varepsilon f(\!-\!\nabla u_{\varepsilon })-\frac {1}{\varepsilon }W(u_{\varepsilon })\right | dx dt=0. \end{equation*}
- 
(v) The two convergence results follow from adding and subtracting (i) and (iv), respectively. 
4.3 Construction of the normal velocity
 This construction follows the argument in the first step of [Reference Laux and Simon42, Proposition 2.10], where it was carried out by Simon and the first author for the (multiphase) isotropic case. The idea is to introduce the velocity as a Radon–Nikodým density 
 $V\;:\!=\;\frac{\partial _{t}\chi }{{\big |\nabla \chi \big |}}$
.
$V\;:\!=\;\frac{\partial _{t}\chi }{{\big |\nabla \chi \big |}}$
.
For simplicity of notation, we denote the energy density of the anisotropic Cahn–Hilliard energy by
 \begin{equation*} e_{\varepsilon }(u,x)\;:\!=\;\frac {\varepsilon }{2}f(\!-\!\nabla u(x))+\frac {1}{2\varepsilon }W(u(x)). \end{equation*}
\begin{equation*} e_{\varepsilon }(u,x)\;:\!=\;\frac {\varepsilon }{2}f(\!-\!\nabla u(x))+\frac {1}{2\varepsilon }W(u(x)). \end{equation*}
Lemma 4.4. 
Under the assumptions of Theorem 
4.1
, including the energy convergence (
4.3
), there exists a 
 $|\nabla \chi |$
-measurable normal velocity
$|\nabla \chi |$
-measurable normal velocity 
 $V\;:\;\Omega \times (0,T)\to{\mathbb{R}}$
 satisfying (
2.17
) and (
2.18
).
$V\;:\;\Omega \times (0,T)\to{\mathbb{R}}$
 satisfying (
2.17
) and (
2.18
).
 The first step of the proof is to show that the Radon–Nikodým theorem is applicable: Given a smooth test function 
 $\zeta \in{C_{c}^{\infty }}(\Omega \times (0,T))$
, the definition of distributional derivatives and an application of the Cauchy–Schwarz inequality yield
$\zeta \in{C_{c}^{\infty }}(\Omega \times (0,T))$
, the definition of distributional derivatives and an application of the Cauchy–Schwarz inequality yield
 \begin{align} \left |\int _{0}^{T}\int _{\Omega } (\phi \circ u_{\varepsilon }) \partial _{t}\zeta dx dt\right | &= \left |\int _{0}^{T}\int _{\Omega } \partial _{t}(\phi \circ u_{\varepsilon })\zeta dx dt\right | \nonumber \\[5pt] &= \left |\int _{0}^{T}\int _{\Omega } \phi ^{\prime }(u_{\varepsilon })\partial _{t}u_{\varepsilon }\zeta dx dt \right |\nonumber \\[5pt] &\leq \left (\int _{0}^{T}\int _{\Omega } \varepsilon \big |\partial _{t}u_{\varepsilon }\big |^{2}dx dt\right )^{\frac{1}{2}} \left (\int _{0}^{T}\int _{\Omega }\frac{1}{\varepsilon }W(u_{\varepsilon })\zeta ^{2}dx dt\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \sqrt{2} \left (\int _{0}^{T}\int _{\Omega }\varepsilon \big |\partial _{t}u_{\varepsilon } \big |^{2} dx dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}\int _{\Omega }e_{\varepsilon }(u_{\varepsilon }(t), x)\zeta ^{2}dx dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \left |\int _{0}^{T}\int _{\Omega } (\phi \circ u_{\varepsilon }) \partial _{t}\zeta dx dt\right | &= \left |\int _{0}^{T}\int _{\Omega } \partial _{t}(\phi \circ u_{\varepsilon })\zeta dx dt\right | \nonumber \\[5pt] &= \left |\int _{0}^{T}\int _{\Omega } \phi ^{\prime }(u_{\varepsilon })\partial _{t}u_{\varepsilon }\zeta dx dt \right |\nonumber \\[5pt] &\leq \left (\int _{0}^{T}\int _{\Omega } \varepsilon \big |\partial _{t}u_{\varepsilon }\big |^{2}dx dt\right )^{\frac{1}{2}} \left (\int _{0}^{T}\int _{\Omega }\frac{1}{\varepsilon }W(u_{\varepsilon })\zeta ^{2}dx dt\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \sqrt{2} \left (\int _{0}^{T}\int _{\Omega }\varepsilon \big |\partial _{t}u_{\varepsilon } \big |^{2} dx dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}\int _{\Omega }e_{\varepsilon }(u_{\varepsilon }(t), x)\zeta ^{2}dx dt\right )^{\frac{1}{2}}. \end{align}
It follows from (4.13) that
 \begin{equation} \lim _{\varepsilon \to 0}\int _{0}^{T}\int _{\Omega }e_{\varepsilon }(u_{\varepsilon }(t), x)\zeta ^{2}dx dt ={c_{0}} \int _{0}^{T}\int _{\Omega }\zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |}. \end{equation}
\begin{equation} \lim _{\varepsilon \to 0}\int _{0}^{T}\int _{\Omega }e_{\varepsilon }(u_{\varepsilon }(t), x)\zeta ^{2}dx dt ={c_{0}} \int _{0}^{T}\int _{\Omega }\zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |}. \end{equation}
Thus, by taking the limit inferior on both sides of (4.22) and recalling that 
 $\phi \circ u_{\varepsilon } \to{c_{0}} \chi$
 in
$\phi \circ u_{\varepsilon } \to{c_{0}} \chi$
 in 
 $L^{1}(\Omega \times (0,T))$
 as
$L^{1}(\Omega \times (0,T))$
 as 
 $\varepsilon \searrow 0$
, we find
$\varepsilon \searrow 0$
, we find
 \begin{align}{c_{0}} \left |{\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta dx dt\right |&\leq \sqrt{2} \liminf _{\varepsilon \to 0}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon \big |\partial _{t}u_{\varepsilon } \big |^{2}dx dt\right )^{\frac{1}{2}}\left(c_{0} {\int_{0}^{T}\int_{\Omega}} \zeta^{2}\sigma(\nu)\big|\nabla \chi\big| \right)^{\frac{1}{2}}\nonumber\\[5pt] &\leq \left (\frac{2E_{0}}{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} \zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}, \end{align}
\begin{align}{c_{0}} \left |{\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta dx dt\right |&\leq \sqrt{2} \liminf _{\varepsilon \to 0}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon \big |\partial _{t}u_{\varepsilon } \big |^{2}dx dt\right )^{\frac{1}{2}}\left(c_{0} {\int_{0}^{T}\int_{\Omega}} \zeta^{2}\sigma(\nu)\big|\nabla \chi\big| \right)^{\frac{1}{2}}\nonumber\\[5pt] &\leq \left (\frac{2E_{0}}{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} \zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}, \end{align}
where the second inequality follows from the optimal energy dissipation inequality (3.4).
 It is desirable to reformulate (4.24) in terms of open sets instead of test functions: Given an open set 
 $A\subseteq \Omega \times (0,T)$
, let us maximize the left-hand side of (4.24) over all
$A\subseteq \Omega \times (0,T)$
, let us maximize the left-hand side of (4.24) over all 
 $\zeta \in{C_{c}^{\infty }}(A)$
 with
$\zeta \in{C_{c}^{\infty }}(A)$
 with 
 $\big |\zeta \big |\leq 1$
. This provides us with the inequality
$\big |\zeta \big |\leq 1$
. This provides us with the inequality
 \begin{align} \left |\partial _{t}\chi \right | (A)&\leq \left (\frac{2 E_{0}}{{c_{0}} c_{g}} \right )^{\frac{1}{2}} \sup _{\zeta \in{C_{c}^{\infty }}(A) \atop |\zeta |\leq 1} \left ({\int _{0}^{T}\int _{\Omega }} \zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \left (\frac{2 E_{0} \max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \right )^{\frac{1}{2}} \sqrt{{\big |\nabla \chi \big |}(A)}. \end{align}
\begin{align} \left |\partial _{t}\chi \right | (A)&\leq \left (\frac{2 E_{0}}{{c_{0}} c_{g}} \right )^{\frac{1}{2}} \sup _{\zeta \in{C_{c}^{\infty }}(A) \atop |\zeta |\leq 1} \left ({\int _{0}^{T}\int _{\Omega }} \zeta ^{2}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \left (\frac{2 E_{0} \max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \right )^{\frac{1}{2}} \sqrt{{\big |\nabla \chi \big |}(A)}. \end{align}
Making use of the outer regularity of Radon measures, we see that
 \begin{equation*} \left |\partial _{t}\chi \right | (E) = \inf _{A \supseteq E \atop A \text { open}} \left |\partial _{t}\chi \right | (A) \leq \left (\frac {2 E_{0} \max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \right )^{\frac {1}{2}} \inf _{A \supseteq E \atop A \text { open}} \sqrt {{\big |\nabla \chi \big |}(A)} = 0 \end{equation*}
\begin{equation*} \left |\partial _{t}\chi \right | (E) = \inf _{A \supseteq E \atop A \text { open}} \left |\partial _{t}\chi \right | (A) \leq \left (\frac {2 E_{0} \max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \right )^{\frac {1}{2}} \inf _{A \supseteq E \atop A \text { open}} \sqrt {{\big |\nabla \chi \big |}(A)} = 0 \end{equation*}
for all Borel sets 
 $E \subseteq \Omega \times (0,T)$
 such that
$E \subseteq \Omega \times (0,T)$
 such that 
 ${\big |\nabla \chi \big |}(E)=0$
, i.e.,
${\big |\nabla \chi \big |}(E)=0$
, i.e., 
 $\partial _{t}\chi \ll{\big |\nabla \chi \big |}$
. By the Radon–Nikodým theorem, there exists a
$\partial _{t}\chi \ll{\big |\nabla \chi \big |}$
. By the Radon–Nikodým theorem, there exists a 
 $\big |\nabla \chi \big |$
-measurable function
$\big |\nabla \chi \big |$
-measurable function 
 $V$
 such that
$V$
 such that 
 $\partial _{t}\chi = V{\big |\nabla \chi \big |}$
 on the open set
$\partial _{t}\chi = V{\big |\nabla \chi \big |}$
 on the open set 
 $\Omega \times (0,T)$
.
$\Omega \times (0,T)$
.
 In order to prove the square integrability (2.17) of 
 $V$
, we go back to (4.24). Let us first fix a finite number
$V$
, we go back to (4.24). Let us first fix a finite number 
 $M\gt 0$
 and find a sequence
$M\gt 0$
 and find a sequence 
 $\{\zeta _{k}\}_{k \in{\mathbb{N}}}$
 of smooth test functions such that
$\{\zeta _{k}\}_{k \in{\mathbb{N}}}$
 of smooth test functions such that 
 $\zeta _{k} \to V\chi _{\{|V|\leq M\}}$
 in
$\zeta _{k} \to V\chi _{\{|V|\leq M\}}$
 in 
 $L^{2}({\big |\nabla \chi \big |})$
 and
$L^{2}({\big |\nabla \chi \big |})$
 and 
 $|\zeta _{k}|\leq M$
 for all
$|\zeta _{k}|\leq M$
 for all 
 $k \in{\mathbb{N}}$
. Then it follows by dominated convergence that
$k \in{\mathbb{N}}$
. Then it follows by dominated convergence that 
 $V\zeta _{k} \to V^{2}\chi _{\{|V|\leq M\}}$
 in
$V\zeta _{k} \to V^{2}\chi _{\{|V|\leq M\}}$
 in 
 $L^{1}({\big |\nabla \chi \big |})$
 and, therefore,
$L^{1}({\big |\nabla \chi \big |})$
 and, therefore,
 \begin{equation*} {\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta _{k} dx dt = -{\int _{0}^{T}\int _{\Omega }}\zeta _{k}\, \partial _{t}\chi = -{\int _{0}^{T}\int _{\Omega }} V\zeta _{k}\,{\big |\nabla \chi \big |} \longrightarrow -{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |}, \end{equation*}
\begin{equation*} {\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta _{k} dx dt = -{\int _{0}^{T}\int _{\Omega }}\zeta _{k}\, \partial _{t}\chi = -{\int _{0}^{T}\int _{\Omega }} V\zeta _{k}\,{\big |\nabla \chi \big |} \longrightarrow -{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |}, \end{equation*}
whereas the 
 $L^{2}$
-convergence gives
$L^{2}$
-convergence gives
 \begin{equation*} {\int _{0}^{T}\int _{\Omega }} \zeta _{k}^{2}\sigma (\nu ) {\big |\nabla \chi \big |} \longrightarrow {\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}\sigma (\nu ){\big |\nabla \chi \big |}. \end{equation*}
\begin{equation*} {\int _{0}^{T}\int _{\Omega }} \zeta _{k}^{2}\sigma (\nu ) {\big |\nabla \chi \big |} \longrightarrow {\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}\sigma (\nu ){\big |\nabla \chi \big |}. \end{equation*}
Plugging in 
 $\zeta _{k}$
 and taking the limit
$\zeta _{k}$
 and taking the limit 
 $k \to \infty$
 in (4.24), we now obtain
$k \to \infty$
 in (4.24), we now obtain
 \begin{align*}{c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |}&\leq \left (\frac{2E_{0}}{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}\\[5pt] &\leq \left (\frac{2E_{0}\max _{S^{d-1}}\sigma }{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |} \right )^{\frac{1}{2}}. \end{align*}
\begin{align*}{c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |}&\leq \left (\frac{2E_{0}}{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}\sigma (\nu ){\big |\nabla \chi \big |} \right )^{\frac{1}{2}}\\[5pt] &\leq \left (\frac{2E_{0}\max _{S^{d-1}}\sigma }{c_{g}} \right )^{\frac{1}{2}}\left ({c_{0}}{\int _{0}^{T}\int _{\Omega }} V^{2}\chi _{\{|V|\leq M\}}{\big |\nabla \chi \big |} \right )^{\frac{1}{2}}. \end{align*}
 By rearranging this inequality and taking 
 $M \to \infty$
 with the help of the monotone convergence theorem, we find the desired integrability statement, namely
$M \to \infty$
 with the help of the monotone convergence theorem, we find the desired integrability statement, namely
 \begin{equation}{\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |} \leq \frac{2E_{0}\max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \lt \infty . \end{equation}
\begin{equation}{\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |} \leq \frac{2E_{0}\max _{S^{d-1}}\sigma }{{c_{0}} c_{g}} \lt \infty . \end{equation}
 The final step is to prove the identity (2.18) (see also [Reference Hensel and Laux35, Lemma 7]). Given a test function 
 $\zeta \in C^{1}(\Omega \times [0,T])$
 and an intermediate time
$\zeta \in C^{1}(\Omega \times [0,T])$
 and an intermediate time 
 ${T^{\prime }} \in (0,T]$
, we introduce a cutoff
${T^{\prime }} \in (0,T]$
, we introduce a cutoff 
 $\eta _{\alpha }$
 in time such that
$\eta _{\alpha }$
 in time such that
 \begin{equation*} \eta _{\alpha } \in C^{1}({\mathbb {R}};\;[0,1]), \qquad \eta _{\alpha }\equiv 0 \quad \text {on } (\!-\!\infty, \frac {\alpha }{2}]\cup [{T^{\prime }}-\frac {\alpha }{2}, \infty ), \qquad \eta _{\alpha }\equiv 1 \quad \text {on } [\alpha, {T^{\prime }}-\alpha ], \end{equation*}
\begin{equation*} \eta _{\alpha } \in C^{1}({\mathbb {R}};\;[0,1]), \qquad \eta _{\alpha }\equiv 0 \quad \text {on } (\!-\!\infty, \frac {\alpha }{2}]\cup [{T^{\prime }}-\frac {\alpha }{2}, \infty ), \qquad \eta _{\alpha }\equiv 1 \quad \text {on } [\alpha, {T^{\prime }}-\alpha ], \end{equation*}
and set 
 $\zeta _{\alpha }(x,t)\;:\!=\;\zeta (x,t)\eta _{\alpha }(t)$
. Then, in particular, we have
$\zeta _{\alpha }(x,t)\;:\!=\;\zeta (x,t)\eta _{\alpha }(t)$
. Then, in particular, we have 
 $\zeta _{\alpha }\in C_{c}^{1}(\Omega \times (0,T))$
 for sufficiently small
$\zeta _{\alpha }\in C_{c}^{1}(\Omega \times (0,T))$
 for sufficiently small 
 $\alpha \gt 0$
. The definition of
$\alpha \gt 0$
. The definition of 
 $V$
 as a Radon–Nikodým density yields
$V$
 as a Radon–Nikodým density yields
 \begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }\zeta _{\alpha }(x,t)V(x,t){\big |\nabla \chi \big |}&=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\partial _{t}\zeta _{\alpha }(x,t)\,dxdt\nonumber \\[5pt] &=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\eta _{\alpha }(t)\partial _{t}\zeta (x,t)\,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\zeta (x,t)\,dx\,\eta _{\alpha }^{\prime }(t)\,dt. \end{align}
\begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }\zeta _{\alpha }(x,t)V(x,t){\big |\nabla \chi \big |}&=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\partial _{t}\zeta _{\alpha }(x,t)\,dxdt\nonumber \\[5pt] &=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\eta _{\alpha }(t)\partial _{t}\zeta (x,t)\,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\zeta (x,t)\,dx\,\eta _{\alpha }^{\prime }(t)\,dt. \end{align}
 In the limit 
 $\alpha \searrow 0$
, the left-hand side integral and the first right-hand side integral converge due to the dominated convergence theorem. For the last integral, we observe that
$\alpha \searrow 0$
, the left-hand side integral and the first right-hand side integral converge due to the dominated convergence theorem. For the last integral, we observe that 
 $\eta _{\alpha }^{\prime }{\overset{{*}}{\rightharpoonup }} \delta _{0}-\delta _{{T^{\prime }}}$
 in
$\eta _{\alpha }^{\prime }{\overset{{*}}{\rightharpoonup }} \delta _{0}-\delta _{{T^{\prime }}}$
 in 
 ${\mathcal{M}}({\mathbb{R}})$
 as
${\mathcal{M}}({\mathbb{R}})$
 as 
 $\alpha \searrow 0$
. Furthermore, we have
$\alpha \searrow 0$
. Furthermore, we have 
 $\chi =u\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 by Lemma 4.2, and
$\chi =u\in C^{0,\frac{1}{2}}\left ([0,T];\;L^{1}(\Omega )\right )$
 by Lemma 4.2, and 
 $\zeta$
 is uniformly continuous, so that the map
$\zeta$
 is uniformly continuous, so that the map 
 $t \mapsto \int _{\Omega }\chi (x,t)\zeta (x,t)dx$
 is continuous on
$t \mapsto \int _{\Omega }\chi (x,t)\zeta (x,t)dx$
 is continuous on 
 $[0,T]$
. We can therefore compute the limits of all three integrals and obtain
$[0,T]$
. We can therefore compute the limits of all three integrals and obtain
 \begin{align*} \int _{0}^{{T^{\prime }}}\int _{\Omega }\zeta (x,t)V(x,t){\big |\nabla \chi \big |}&=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\partial _{t}\zeta (x,t)\,dxdt -\int _{\Omega }\chi _{0}(x)\zeta (x,0)\,dx \\[5pt] &\quad + \int _{\Omega }\chi (x,{T^{\prime }})\zeta (x,{T^{\prime }})\,dx, \end{align*}
\begin{align*} \int _{0}^{{T^{\prime }}}\int _{\Omega }\zeta (x,t)V(x,t){\big |\nabla \chi \big |}&=-\int _{0}^{{T^{\prime }}}\int _{\Omega }\chi (x,t)\partial _{t}\zeta (x,t)\,dxdt -\int _{\Omega }\chi _{0}(x)\zeta (x,0)\,dx \\[5pt] &\quad + \int _{\Omega }\chi (x,{T^{\prime }})\zeta (x,{T^{\prime }})\,dx, \end{align*}
which proves (2.18).
4.4 Relative entropies
A key ingredient to derive the sharp interface limit is the following notions of relative entropies.
Definition 4.5.
- 
(i) Let  $u=\chi \in BV(\Omega )$
 take values in $u=\chi \in BV(\Omega )$
 take values in $\{0,1\}$
 almost everywhere. As in the definition of the anisotropic surface energy, let $\{0,1\}$
 almost everywhere. As in the definition of the anisotropic surface energy, let $\nu \;:\!=\;-\frac{\nabla \chi }{|\nabla \chi |}$
 be the measure-theoretic outer unit normal. The relative entropy of $\nu \;:\!=\;-\frac{\nabla \chi }{|\nabla \chi |}$
 be the measure-theoretic outer unit normal. The relative entropy of $u$
 with respect to a vector field $u$
 with respect to a vector field $\xi \in C(\Omega )^{d}$
 is(4.28)where $\xi \in C(\Omega )^{d}$
 is(4.28)where \begin{equation} {\mathscr{E}\left [u\big |\xi \right ]}\;:\!=\;{c_{0}}\int _{\Omega }\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ){\big |\nabla \chi \big |}, \end{equation} \begin{equation} {\mathscr{E}\left [u\big |\xi \right ]}\;:\!=\;{c_{0}}\int _{\Omega }\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ){\big |\nabla \chi \big |}, \end{equation} $\psi \in C^{\infty }([0,\infty )$
 is a cutoff function such that the three properties in (2.2) hold true. $\psi \in C^{\infty }([0,\infty )$
 is a cutoff function such that the three properties in (2.2) hold true.
- 
(ii) Let  $\varepsilon \gt 0$
 and $\varepsilon \gt 0$
 and $u_{\varepsilon } \in H^{1}(\Omega )\cap L^{\infty }(\Omega )$
. The $u_{\varepsilon } \in H^{1}(\Omega )\cap L^{\infty }(\Omega )$
. The $\varepsilon$
-relative entropy of $\varepsilon$
-relative entropy of $u_{\varepsilon }$
 with respect to a vector field $u_{\varepsilon }$
 with respect to a vector field $\xi \in C(\Omega )^{d}$
 is(4.29) $\xi \in C(\Omega )^{d}$
 is(4.29) \begin{equation} {\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }\big |\xi \right ]}\;:\!=\;\int _{\Omega }\left (\sigma (\!-\!\nabla u_{\varepsilon })+|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla u_{\varepsilon } \right )\sqrt{W(u_{\varepsilon })} dx. \end{equation} \begin{equation} {\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }\big |\xi \right ]}\;:\!=\;\int _{\Omega }\left (\sigma (\!-\!\nabla u_{\varepsilon })+|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla u_{\varepsilon } \right )\sqrt{W(u_{\varepsilon })} dx. \end{equation}
Remark 4.6.
- 
(i) For  $u = \chi$
 as in Definition 4.5(i), we can define the set of finite perimeter $u = \chi$
 as in Definition 4.5(i), we can define the set of finite perimeter $A\;:\!=\;\left \{x \in \Omega \, \big |\,u(x)=1 \right \}$
 (up to a null set). By De Giorgi’s structure theorem (see [Reference Ambrosio, Fusco and Pallara2, Theorem 3.59]), one can replace the total variation measure $A\;:\!=\;\left \{x \in \Omega \, \big |\,u(x)=1 \right \}$
 (up to a null set). By De Giorgi’s structure theorem (see [Reference Ambrosio, Fusco and Pallara2, Theorem 3.59]), one can replace the total variation measure $|\nabla \chi |$
 with the $|\nabla \chi |$
 with the $(d-1)$
-dimensional Hausdorff measure and writewith $(d-1)$
-dimensional Hausdorff measure and writewith $@@$ $@@$ $\partial ^{*}$
 denoting the reduced boundary of a set of finite perimeter. $\partial ^{*}$
 denoting the reduced boundary of a set of finite perimeter.
- 
(ii) One can also show that  $|\nabla \chi (t)|\otimes{\mathcal{L}^{1}}  (0,T) = |\nabla \chi |$
 as Radon measures on $|\nabla \chi (t)|\otimes{\mathcal{L}^{1}}  (0,T) = |\nabla \chi |$
 as Radon measures on $\Omega \times (0,T)$
. Thus, integrating the relative entropy over time yields $\Omega \times (0,T)$
. Thus, integrating the relative entropy over time yields \begin{align*} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt & ={c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right )|\nabla \chi (t)|dt\\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ){\big |\nabla \chi \big |}. \end{align*} \begin{align*} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt & ={c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right )|\nabla \chi (t)|dt\\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ){\big |\nabla \chi \big |}. \end{align*}
 If 
 $\xi$
 is chosen to be a smooth approximation of the normal, then these relative entropies serve as tilt excesses and can be used to control quadratic error terms: Let
$\xi$
 is chosen to be a smooth approximation of the normal, then these relative entropies serve as tilt excesses and can be used to control quadratic error terms: Let 
 $\xi \in C\left (\Omega \times [0,T]\right )^{d}$
 such that
$\xi \in C\left (\Omega \times [0,T]\right )^{d}$
 such that 
 $|\xi |\leq 1$
 on
$|\xi |\leq 1$
 on 
 $\Omega \times [0,T]$
. By Lemma 2.4(i), we have
$\Omega \times [0,T]$
. By Lemma 2.4(i), we have
 \begin{equation} \int _{0}^{T}\int _{\Omega }|\xi -\nu |^{2}{\big |\nabla \chi \big |} \leq \frac{1}{{c_{0}} c_{\sigma }} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation}
\begin{equation} \int _{0}^{T}\int _{\Omega }|\xi -\nu |^{2}{\big |\nabla \chi \big |} \leq \frac{1}{{c_{0}} c_{\sigma }} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation}
 The link between the relative entropy 
 $\mathscr{E}$
 and the phase-field version
$\mathscr{E}$
 and the phase-field version 
 $\mathscr{E}_{\varepsilon }$
 is the following convergence statement:
$\mathscr{E}_{\varepsilon }$
 is the following convergence statement:
Lemma 4.7. Under the assumptions of Theorem 4.1 , including the energy convergence ( 4.3 ), we have
 \begin{equation*} \lim _{\varepsilon \searrow 0}\int _{0}^{T}{\mathscr {E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt = \int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt \end{equation*}
\begin{equation*} \lim _{\varepsilon \searrow 0}\int _{0}^{T}{\mathscr {E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt = \int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt \end{equation*}
for every vector field 
 $\xi \in C\left (\Omega \times [0,T]\right )^{d}$
 such that
$\xi \in C\left (\Omega \times [0,T]\right )^{d}$
 such that 
 $|\xi |\leq 1$
 on
$|\xi |\leq 1$
 on 
 $\Omega \times [0,T]$
, where
$\Omega \times [0,T]$
, where 
 $u=\chi$
 is the limiting function constructed in Lemma 4.2
.
$u=\chi$
 is the limiting function constructed in Lemma 4.2
.
Proof. A direct computation yields
 \begin{align} \int _{0}^{T}{\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt&= \int _{0}^{T}\int _{\Omega }\left (\sigma (\!-\!\nabla u_{\varepsilon })+|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla u_{\varepsilon } \right )\sqrt{W(u_{\varepsilon })}dxdt\nonumber \\[5pt] &=\int _{0}^{T}\int _{\Omega }\sigma\!\left (\!-\!\nabla \left (\phi \circ u_{\varepsilon }\right )\right )dxdt\nonumber \\[5pt] &\quad +\int _{0}^{T}\int _{\Omega }|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla (\phi \circ u_{\varepsilon })dxdt\nonumber \\[5pt] &\to{c_{0}} \int _{0}^{T}\sigma (\nu ){\big |\nabla \chi \big |} +{c_{0}}\int _{0}^{T}\int _{\Omega }|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla \chi \nonumber \\[5pt] &=\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt, \end{align}
\begin{align} \int _{0}^{T}{\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt&= \int _{0}^{T}\int _{\Omega }\left (\sigma (\!-\!\nabla u_{\varepsilon })+|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla u_{\varepsilon } \right )\sqrt{W(u_{\varepsilon })}dxdt\nonumber \\[5pt] &=\int _{0}^{T}\int _{\Omega }\sigma\!\left (\!-\!\nabla \left (\phi \circ u_{\varepsilon }\right )\right )dxdt\nonumber \\[5pt] &\quad +\int _{0}^{T}\int _{\Omega }|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla (\phi \circ u_{\varepsilon })dxdt\nonumber \\[5pt] &\to{c_{0}} \int _{0}^{T}\sigma (\nu ){\big |\nabla \chi \big |} +{c_{0}}\int _{0}^{T}\int _{\Omega }|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nabla \chi \nonumber \\[5pt] &=\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt, \end{align}
where the first term converges due to Theorem 4.3(ii). The convergence of the second term follows from the observation that 
 $\nabla (\phi \circ u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \nabla \chi$
 in
$\nabla (\phi \circ u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \nabla \chi$
 in 
 ${\mathcal{M}}(\Omega \times [0,T])$
, which is a consequence of the bound in (4.7) and the
${\mathcal{M}}(\Omega \times [0,T])$
, which is a consequence of the bound in (4.7) and the 
 $L^{1}$
-convergence
$L^{1}$
-convergence 
 $\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
.
$\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
.
 While we have only used the first inequality in Lemma 2.4 so far, the second inequality helps us to show that the tilt excess can be made arbitrarily small by approximating the normal 
 $\nu$
 with suitable vector fields
$\nu$
 with suitable vector fields 
 $\xi$
.
$\xi$
.
Lemma 4.8. 
For every 
 $\delta \gt 0$
, there exists a smooth vector field
$\delta \gt 0$
, there exists a smooth vector field 
 $\xi \in C^{1}(\Omega \times [0,T])^{d}$
 such that
$\xi \in C^{1}(\Omega \times [0,T])^{d}$
 such that 
 $|\xi |\leq 1$
 in
$|\xi |\leq 1$
 in 
 $\Omega \times [0,T]$
 and
$\Omega \times [0,T]$
 and
 \begin{equation*} \int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt \lt \delta . \end{equation*}
\begin{equation*} \int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt \lt \delta . \end{equation*}
Proof. The outer unit normal 
 $\nu$
 is
$\nu$
 is 
 $\big |\nabla \chi \big |$
-measurable, and the estimate
$\big |\nabla \chi \big |$
-measurable, and the estimate
 \begin{equation*} \int _{0}^{T}\int _{\Omega }|\nu |^{2}{\big |\nabla \chi \big |} = \int _{0}^{T}\int _{\Omega }{\big |\nabla \chi \big |} \leq \frac {1}{c_{0}\min _{S^{d-1}}\sigma }\int _{0}^{T}E[u(t)]dt\lt \infty \end{equation*}
\begin{equation*} \int _{0}^{T}\int _{\Omega }|\nu |^{2}{\big |\nabla \chi \big |} = \int _{0}^{T}\int _{\Omega }{\big |\nabla \chi \big |} \leq \frac {1}{c_{0}\min _{S^{d-1}}\sigma }\int _{0}^{T}E[u(t)]dt\lt \infty \end{equation*}
shows that 
 $\nu \in L^{2}({\big |\nabla \chi \big |})$
. Since
$\nu \in L^{2}({\big |\nabla \chi \big |})$
. Since 
 $\big |\nabla \chi \big |$
 is a Radon measure on
$\big |\nabla \chi \big |$
 is a Radon measure on 
 $\Omega \times [0,T]$
, there exists an approximating sequence
$\Omega \times [0,T]$
, there exists an approximating sequence 
 $\{\xi _{n}\}_{n\in \mathbb{N}} \subset C^{\infty }(\Omega \times [0,T])$
 such that
$\{\xi _{n}\}_{n\in \mathbb{N}} \subset C^{\infty }(\Omega \times [0,T])$
 such that 
 $\xi _{n}\to \nu$
 in
$\xi _{n}\to \nu$
 in 
 $L^{2}({\big |\nabla \chi \big |})$
 as
$L^{2}({\big |\nabla \chi \big |})$
 as 
 $n \to \infty$
.
$n \to \infty$
.
 Clearly, 
 $\nu$
 takes values in the closed convex set
$\nu$
 takes values in the closed convex set 
 $\overline{B}_{1}=\left \{p \in{\mathbb{R}}^{d}\,\Big |\,|p|\leq 1 \right \}$
 almost everywhere with respect to
$\overline{B}_{1}=\left \{p \in{\mathbb{R}}^{d}\,\Big |\,|p|\leq 1 \right \}$
 almost everywhere with respect to 
 $\big |\nabla \chi \big |$
, so we can choose
$\big |\nabla \chi \big |$
, so we can choose 
 $\xi _{n}$
 in a way that ensures that
$\xi _{n}$
 in a way that ensures that 
 $|\xi _{n}|\leq 1$
 on
$|\xi _{n}|\leq 1$
 on 
 $\Omega \times [0,T]$
 for all
$\Omega \times [0,T]$
 for all 
 $n \in{\mathbb{N}}$
.
$n \in{\mathbb{N}}$
.
By Lemma 2.4(ii) and the Cauchy–Schwarz inequality, we obtain
 \begin{align*} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi _{n}(t)\right ]}dt &\leq{c_{0}}\, C_{\sigma }\int _{0}^{T}\int _{\Omega }\left (|\nu -\xi _{n}|^{2}+(|\nu |-|\xi _{n}|)\right ){\big |\nabla \chi \big |}\\[5pt] &\leq{c_{0}}\, C_{\sigma }\int _{0}^{T}\int _{\Omega }|\nu -\xi _{n}|^{2}{\big |\nabla \chi \big |}\\[5pt] &\quad +{c_{0}}\, C_{\sigma }\left (\int _{0}^{T}\int _{\Omega }{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left (\int _{0}^{T}\int _{\Omega }\left |\nu -\xi _{n}\right |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\\[5pt] &\leq{c_{0}}\, C_{\sigma }\left \|\nu -\xi _{n}\right \|_{L^{2}(|\nabla \chi |)}^{2} \\[5pt] &\quad +\sqrt{\frac{{c_{0}}}{\min _{S^{d-1}}\sigma }} C_{\sigma }\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left \|\nu -\xi _{n}\right \|_{L^{2}(|\nabla \chi |)}\\[5pt] &\longrightarrow 0 \end{align*}
\begin{align*} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi _{n}(t)\right ]}dt &\leq{c_{0}}\, C_{\sigma }\int _{0}^{T}\int _{\Omega }\left (|\nu -\xi _{n}|^{2}+(|\nu |-|\xi _{n}|)\right ){\big |\nabla \chi \big |}\\[5pt] &\leq{c_{0}}\, C_{\sigma }\int _{0}^{T}\int _{\Omega }|\nu -\xi _{n}|^{2}{\big |\nabla \chi \big |}\\[5pt] &\quad +{c_{0}}\, C_{\sigma }\left (\int _{0}^{T}\int _{\Omega }{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left (\int _{0}^{T}\int _{\Omega }\left |\nu -\xi _{n}\right |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\\[5pt] &\leq{c_{0}}\, C_{\sigma }\left \|\nu -\xi _{n}\right \|_{L^{2}(|\nabla \chi |)}^{2} \\[5pt] &\quad +\sqrt{\frac{{c_{0}}}{\min _{S^{d-1}}\sigma }} C_{\sigma }\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left \|\nu -\xi _{n}\right \|_{L^{2}(|\nabla \chi |)}\\[5pt] &\longrightarrow 0 \end{align*}
as 
 $n \to \infty$
.
$n \to \infty$
.
4.5 Convergence of the curvature term
 The following two subsections are dedicated to proving the distributional law of anisotropic mean curvature flow (2.19) for the limit function 
 $u$
. The strategy is to use
$u$
. The strategy is to use 
 $B\cdot \varepsilon \nabla u_{\varepsilon }$
 as a test function in the distributional formulation of the anisotropic Allen–Cahn equation (3.3), where
$B\cdot \varepsilon \nabla u_{\varepsilon }$
 as a test function in the distributional formulation of the anisotropic Allen–Cahn equation (3.3), where 
 $B \in C^{1}(\Omega \times [0,T])^{d}$
, and then pass to the limit as
$B \in C^{1}(\Omega \times [0,T])^{d}$
, and then pass to the limit as 
 $\varepsilon \searrow 0$
 on both sides separately.
$\varepsilon \searrow 0$
 on both sides separately.
 Here and in the following subsections, 
 $C$
 denotes a generic positive constant that may depend on the pair of anisotropies
$C$
 denotes a generic positive constant that may depend on the pair of anisotropies 
 $(\sigma,\mu )$
, the double-well potential
$(\sigma,\mu )$
, the double-well potential 
 $W$
, the time horizon
$W$
, the time horizon 
 $T$
, and the cutoff function
$T$
, and the cutoff function 
 $\psi$
. The constant
$\psi$
. The constant 
 $C$
 is not necessarily the same on every occurrence.
$C$
 is not necessarily the same on every occurrence.
Theorem 4.9. Under the assumptions of Theorem 4.1 , including the energy convergence ( 4.3 ), we have
 \begin{align} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \frac{1}{2}&\left (Df(\!-\!\nabla u_{\varepsilon })\cdot \nabla (B\cdot \varepsilon \nabla u_{\varepsilon })-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })B \cdot \varepsilon \nabla u_{\varepsilon }\right )dx dt \nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right ){\big |\nabla \chi \big |} \end{align}
\begin{align} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \frac{1}{2}&\left (Df(\!-\!\nabla u_{\varepsilon })\cdot \nabla (B\cdot \varepsilon \nabla u_{\varepsilon })-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })B \cdot \varepsilon \nabla u_{\varepsilon }\right )dx dt \nonumber \\[5pt] &={c_{0}}{\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right ){\big |\nabla \chi \big |} \end{align}
for all 
 $B\in C^{1}(\Omega \times [0,T])^{d}$
.
$B\in C^{1}(\Omega \times [0,T])^{d}$
.
This theorem was first proved by Cicalese, Nagase, and Pisante in [Reference Cicalese, Nagase and Pisante18, Theorem 3.3]. However, we proceed with the alternative strategy of proof proposed in [Reference Laux39, Proposition 4.5].
 We define the energy-stress tensor 
 $T_{\varepsilon }$
 by
$T_{\varepsilon }$
 by
 \begin{equation} T_{\varepsilon }\;:\!=\;\frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )I_{d}+\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }). \end{equation}
\begin{equation} T_{\varepsilon }\;:\!=\;\frac{1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )I_{d}+\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }). \end{equation}
 With this definition, the statement of Theorem 4.9 can be rewritten as a weak-* convergence claim for the energy-stress tensor: Indeed, an integration by parts on the flat torus 
 $\Omega$
 yields
$\Omega$
 yields
 \begin{align} {\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; T_{\varepsilon }\,dx dt &= -{\int _{0}^{T}\int _{\Omega }} B \cdot \mathrm{div} T_{\varepsilon }\,dx dt \nonumber \\[5pt] &= -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B\cdot \nabla \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )dx dt \\ &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \mathrm{div} (Df(\!-\!\nabla u_{\varepsilon })) B \cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\nonumber \\[5pt] &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B \cdot \varepsilon \nabla ^2 u_{\varepsilon }Df(\!-\!\nabla u_{\varepsilon })dx dt\nonumber \\[5pt] &= -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B\cdot \frac{1}{\varepsilon }\nabla \left (W(u_{\varepsilon }) \right )dx dt \nonumber \\[5pt] &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \mathrm{div} (Df(\!-\!\nabla u_{\varepsilon })) B \cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }}\frac{1}{2}\left (Df(\!-\!\nabla u_{\varepsilon })\cdot \nabla (B\cdot \varepsilon \nabla u_{\varepsilon })-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })B\cdot \varepsilon \nabla u_{\varepsilon } \right )dx dt. \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} \nabla B \;:\; T_{\varepsilon }\,dx dt &= -{\int _{0}^{T}\int _{\Omega }} B \cdot \mathrm{div} T_{\varepsilon }\,dx dt \nonumber \\[5pt] &= -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B\cdot \nabla \left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac{1}{\varepsilon }W(u_{\varepsilon }) \right )dx dt \\ &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \mathrm{div} (Df(\!-\!\nabla u_{\varepsilon })) B \cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\nonumber \\[5pt] &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B \cdot \varepsilon \nabla ^2 u_{\varepsilon }Df(\!-\!\nabla u_{\varepsilon })dx dt\nonumber \\[5pt] &= -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} B\cdot \frac{1}{\varepsilon }\nabla \left (W(u_{\varepsilon }) \right )dx dt \nonumber \\[5pt] &\quad -\frac{1}{2}{\int _{0}^{T}\int _{\Omega }} \mathrm{div} (Df(\!-\!\nabla u_{\varepsilon })) B \cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }}\frac{1}{2}\left (Df(\!-\!\nabla u_{\varepsilon })\cdot \nabla (B\cdot \varepsilon \nabla u_{\varepsilon })-\frac{1}{\varepsilon ^{2}}W^{\prime }(u_{\varepsilon })B\cdot \varepsilon \nabla u_{\varepsilon } \right )dx dt. \end{align}
We observe that the right-hand side is exactly the term appearing in (4.32). Thus, in order to prove Theorem 4.9, it suffices to show that 
 $T_{\varepsilon }{\overset{{*}}{\rightharpoonup }}{c_{0}} \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ){\big |\nabla \chi \big |}$
 as
$T_{\varepsilon }{\overset{{*}}{\rightharpoonup }}{c_{0}} \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu )\right ){\big |\nabla \chi \big |}$
 as 
 ${\mathbb{R}}^{d\times d}$
-valued Radon measures on
${\mathbb{R}}^{d\times d}$
-valued Radon measures on 
 $\Omega \times [0,T]$
.
$\Omega \times [0,T]$
.
 As for the first summand of the energy-stress tensor 
 $T_{\varepsilon }$
, it follows immediately from the equipartition of energy statement in Theorem 4.3(i) that
$T_{\varepsilon }$
, it follows immediately from the equipartition of energy statement in Theorem 4.3(i) that
 \begin{equation*}\frac {1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac {1}{\varepsilon }W(u_{\varepsilon }) \right )I_{d}{\overset {{*}}{\rightharpoonup }} {c_{0}} \sigma (\nu )I_{d}{\big |\nabla \chi \big |}.\end{equation*}
\begin{equation*}\frac {1}{2}\left (\varepsilon f(\!-\!\nabla u_{\varepsilon })+\frac {1}{\varepsilon }W(u_{\varepsilon }) \right )I_{d}{\overset {{*}}{\rightharpoonup }} {c_{0}} \sigma (\nu )I_{d}{\big |\nabla \chi \big |}.\end{equation*}
 The following lemma covers the convergence of the second summand of 
 $T_{\varepsilon }$
, thereby completing the proof of Theorem 4.9.
$T_{\varepsilon }$
, thereby completing the proof of Theorem 4.9.
Lemma 4.10. Under the assumptions of Theorem 4.1 , including the energy convergence ( 4.3 ), we have
 \begin{equation} \varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }){\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu \otimes D\sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T])^{d\times d} \end{equation}
\begin{equation} \varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }){\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu \otimes D\sigma (\nu ){\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T])^{d\times d} \end{equation}
as 
 $\varepsilon \searrow 0$
.
$\varepsilon \searrow 0$
.
 To prove Lemma 4.10, let us first fix a vector field 
 $\xi \in C(\Omega \times [0,T])^{d}$
 such that
$\xi \in C(\Omega \times [0,T])^{d}$
 such that 
 $|\xi |\leq 1$
 in
$|\xi |\leq 1$
 in 
 $\Omega \times [0,T]$
. This vector field will serve as an approximation for the measure-theoretic normal
$\Omega \times [0,T]$
. This vector field will serve as an approximation for the measure-theoretic normal 
 $\nu$
. Furthermore let
$\nu$
. Furthermore let 
 $A \in C(\Omega \times [0,T])^{d \times d}$
 be a test function.
$A \in C(\Omega \times [0,T])^{d \times d}$
 be a test function.
 For shorter notation, we introduce the approximate outer unit normal 
 $\nu _{\varepsilon }$
 via
$\nu _{\varepsilon }$
 via
 \begin{equation} \nu _{\varepsilon }(x)\;:\!=\;\begin{cases} -\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}(x)&\text{if }\nabla u_{\varepsilon }(x)\neq 0,\\[5pt] e_{1}&\text{if }\nabla u_{\varepsilon }(x)=0.\end{cases} \end{equation}
\begin{equation} \nu _{\varepsilon }(x)\;:\!=\;\begin{cases} -\frac{\nabla u_{\varepsilon }}{|\nabla u_{\varepsilon }|}(x)&\text{if }\nabla u_{\varepsilon }(x)\neq 0,\\[5pt] e_{1}&\text{if }\nabla u_{\varepsilon }(x)=0.\end{cases} \end{equation}
 Applying the product rule to 
 $f=\sigma ^{2}$
 and exploiting the positive
$f=\sigma ^{2}$
 and exploiting the positive 
 $0$
-homogeneity of
$0$
-homogeneity of 
 $D\sigma$
, one can rewrite the left-hand side of (4.35) as
$D\sigma$
, one can rewrite the left-hand side of (4.35) as
 \begin{equation} \varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }) = \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes D\sigma (\!-\!\nabla u_{\varepsilon }) = \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes D\sigma (\nu _{\varepsilon }), \end{equation}
\begin{equation} \varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon }) = \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes D\sigma (\!-\!\nabla u_{\varepsilon }) = \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes D\sigma (\nu _{\varepsilon }), \end{equation}
where one can now conveniently insert the vector field 
 $\xi$
 at the cost of two errors controlled by the tilt excess
$\xi$
 at the cost of two errors controlled by the tilt excess 
 $\mathscr{E}$
: Let us add zero twice and compute
$\mathscr{E}$
: Let us add zero twice and compute
 \begin{align} {\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |} \nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt \nonumber \\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \psi (|\xi |)D\sigma (\xi )\right ):\;A\, dx dt \nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \psi (|\xi |)D\sigma (\xi )\right ) \;:\; A\,{\big |\nabla \chi \big |}\nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \left (D\sigma (\nu )-\psi (|\xi |)D\sigma (\xi )\right )\right ) \;:\; A\,{\big |\nabla \chi \big |}. \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |} \nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt \nonumber \\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \psi (|\xi |)D\sigma (\xi )\right ):\;A\, dx dt \nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \psi (|\xi |)D\sigma (\xi )\right ) \;:\; A\,{\big |\nabla \chi \big |}\nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \left (D\sigma (\nu )-\psi (|\xi |)D\sigma (\xi )\right )\right ) \;:\; A\,{\big |\nabla \chi \big |}. \end{align}
 As a consequence of the smoothness and homogeneity of 
 $\sigma$
 and since
$\sigma$
 and since 
 $\psi \equiv 0$
 in a neighborhood of zero, the map
$\psi \equiv 0$
 in a neighborhood of zero, the map 
 $p \mapsto \psi (|p|)D\sigma (p)$
 is Lipschitz continuous, i.e.,
$p \mapsto \psi (|p|)D\sigma (p)$
 is Lipschitz continuous, i.e.,
 \begin{equation} |\psi (|q|)D\sigma (q)-\psi (|p|)D\sigma (p)|\leq C|q-p| \qquad \text{for all }p, q \in{\mathbb{R}}^{d}. \end{equation}
\begin{equation} |\psi (|q|)D\sigma (q)-\psi (|p|)D\sigma (p)|\leq C|q-p| \qquad \text{for all }p, q \in{\mathbb{R}}^{d}. \end{equation}
The first right-hand side integral of (4.38) can now be estimated as follows:
 \begin{align*} \left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt}\right .&\left . \vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt\right |\\[5pt] &\leq C\|A\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })|\nabla u_{\varepsilon }| |\nu _{\varepsilon }-\xi | dx dt\\[5pt] &\leq \frac{\sqrt{2}\,C\|A\|_{L^{\infty }}}{\min _{S^{d-1}}\sigma }\left ({\int _{0}^{T}\int _{\Omega }} \frac{\varepsilon }{2} f(\!-\!\nabla u_{\varepsilon }) dx dt\right )^{\frac{1}{2}} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2} dx dt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{\sqrt{2}\,C\|A\|_{L^{\infty }}}{\min _{S^{d-1}}\sigma }{\int _{0}^{T} E_{\varepsilon }[u_{\varepsilon }(t)]dt}^{\frac{1}{2}} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2} dx dt\right )^{\frac{1}{2}}, \end{align*}
\begin{align*} \left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt}\right .&\left . \vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt\right |\\[5pt] &\leq C\|A\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })|\nabla u_{\varepsilon }| |\nu _{\varepsilon }-\xi | dx dt\\[5pt] &\leq \frac{\sqrt{2}\,C\|A\|_{L^{\infty }}}{\min _{S^{d-1}}\sigma }\left ({\int _{0}^{T}\int _{\Omega }} \frac{\varepsilon }{2} f(\!-\!\nabla u_{\varepsilon }) dx dt\right )^{\frac{1}{2}} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2} dx dt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{\sqrt{2}\,C\|A\|_{L^{\infty }}}{\min _{S^{d-1}}\sigma }{\int _{0}^{T} E_{\varepsilon }[u_{\varepsilon }(t)]dt}^{\frac{1}{2}} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2} dx dt\right )^{\frac{1}{2}}, \end{align*}
and with the help of the energy convergence assumption (4.3) and Lemma 4.11 below, we obtain
 \begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt}\right .&\left . \vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt\right |\nonumber \\[5pt] &\leq C \|A\|_{L^{\infty }}\left (\int _{0}^{T} E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt}\right .&\left . \vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \left (D\sigma (\nu _{\varepsilon })-\psi (|\xi |)D\sigma (\xi )\right )\right ):\;A\, dx dt\right |\nonumber \\[5pt] &\leq C \|A\|_{L^{\infty }}\left (\int _{0}^{T} E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
Similarly recalling (4.30), the last integral on the right-hand side of (4.38) can be controlled by the tilt excess via
 \begin{align} &\left |{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \left (D\sigma (\nu )-\psi (|\xi |)D\sigma (\xi )\right )\right ) \;:\; A\,{\big |\nabla \chi \big |} dt\right |\nonumber \\[5pt] &\leq{c_{0}}\, C\|A\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |\nu -\xi |{\big |\nabla \chi \big |} \nonumber \\[5pt] &\leq{c_{0}} \frac{C\|A\|_{L^{\infty }}}{\sqrt{\min _{S^{d-1}}\sigma }}\left ({\int _{0}^{T}\int _{\Omega }}\sigma (\nu ){\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} |\nu -\xi |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \frac{C\|A\|_{L^{\infty }}}{\sqrt{c_{\sigma }\min _{S^{d-1}}\sigma }}\left (\int _{0}^{T} E[u(t)] dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} &\left |{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \left (D\sigma (\nu )-\psi (|\xi |)D\sigma (\xi )\right )\right ) \;:\; A\,{\big |\nabla \chi \big |} dt\right |\nonumber \\[5pt] &\leq{c_{0}}\, C\|A\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |\nu -\xi |{\big |\nabla \chi \big |} \nonumber \\[5pt] &\leq{c_{0}} \frac{C\|A\|_{L^{\infty }}}{\sqrt{\min _{S^{d-1}}\sigma }}\left ({\int _{0}^{T}\int _{\Omega }}\sigma (\nu ){\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} |\nu -\xi |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \frac{C\|A\|_{L^{\infty }}}{\sqrt{c_{\sigma }\min _{S^{d-1}}\sigma }}\left (\int _{0}^{T} E[u(t)] dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
As for the remaining terms in (4.38), we have to show that
 \begin{align*}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \psi (|\xi |) D\sigma (\xi )\right ):\;A\, dx dt \\[5pt] &+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \psi (|\xi |) D\sigma (\xi )\right ) \;:\; A\,{\big |\nabla \chi \big |} \longrightarrow 0 \end{align*}
\begin{align*}{\int _{0}^{T}\int _{\Omega }} &\left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }\otimes \psi (|\xi |) D\sigma (\xi )\right ):\;A\, dx dt \\[5pt] &+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes \psi (|\xi |) D\sigma (\xi )\right ) \;:\; A\,{\big |\nabla \chi \big |} \longrightarrow 0 \end{align*}
as 
 $\varepsilon \searrow 0$
. Since
$\varepsilon \searrow 0$
. Since 
 $\psi (|\xi |) A\,D\sigma (\xi )$
 is a continuous vector field on
$\psi (|\xi |) A\,D\sigma (\xi )$
 is a continuous vector field on 
 $\Omega \times [0,T]$
, this problem reduces to proving that
$\Omega \times [0,T]$
, this problem reduces to proving that 
 $\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu{\big |\nabla \chi \big |}$
 in
$\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu{\big |\nabla \chi \big |}$
 in 
 ${\mathcal{M}}(\Omega \times [0,T])^{d}$
.
${\mathcal{M}}(\Omega \times [0,T])^{d}$
.
To prove this weak-* convergence statement, we rewrite
 \begin{align*} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }&= \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })-\sqrt{W(u_{\varepsilon })}\right )\nabla u_{\varepsilon }+\sqrt{W(u_{\varepsilon })}\nabla u_{\varepsilon }\\[5pt] &= \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )\sqrt{\varepsilon }\nabla u_{\varepsilon }+\nabla (\phi \circ u_{\varepsilon }). \end{align*}
\begin{align*} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }&= \left (\varepsilon \sigma (\!-\!\nabla u_{\varepsilon })-\sqrt{W(u_{\varepsilon })}\right )\nabla u_{\varepsilon }+\sqrt{W(u_{\varepsilon })}\nabla u_{\varepsilon }\\[5pt] &= \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )\sqrt{\varepsilon }\nabla u_{\varepsilon }+\nabla (\phi \circ u_{\varepsilon }). \end{align*}
 The first summand converges strongly to 
 $0$
 in
$0$
 in 
 $L^{1}(\Omega \times (0,T))$
: This follows by the Cauchy–Schwarz inequality if we recall that
$L^{1}(\Omega \times (0,T))$
: This follows by the Cauchy–Schwarz inequality if we recall that 
 $\sqrt{\varepsilon }\nabla u_{\varepsilon }$
 is bounded in
$\sqrt{\varepsilon }\nabla u_{\varepsilon }$
 is bounded in 
 $L^{2}(\Omega \times (0,T))$
 as
$L^{2}(\Omega \times (0,T))$
 as 
 $\varepsilon \searrow 0$
 and
$\varepsilon \searrow 0$
 and 
 $\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \to 0$
 in
$\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })} \to 0$
 in 
 $L^{2}(\Omega \times (0,T))$
 by Theorem 4.3(iii).
$L^{2}(\Omega \times (0,T))$
 by Theorem 4.3(iii).
 It has been shown in (4.6)–(4.8) that 
 $\phi \circ u_{\varepsilon }$
 is bounded in
$\phi \circ u_{\varepsilon }$
 is bounded in 
 $W^{1,1}$
 as
$W^{1,1}$
 as 
 $\varepsilon \searrow 0$
. In particular, the total variation
$\varepsilon \searrow 0$
. In particular, the total variation 
 $\int \int |\nabla u_{\varepsilon }|$
 is uniformly bounded as
$\int \int |\nabla u_{\varepsilon }|$
 is uniformly bounded as 
 $\varepsilon \searrow 0$
. Since
$\varepsilon \searrow 0$
. Since 
 $\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
 in
$\phi \circ u_{\varepsilon }\to{c_{0}} \chi$
 in 
 $L^{1}(\Omega \times (0,T))$
, it follows that
$L^{1}(\Omega \times (0,T))$
, it follows that 
 $\nabla (\phi \circ u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \nabla \chi = -{c_{0}} \nu{\big |\nabla \chi \big |}$
 in
$\nabla (\phi \circ u_{\varepsilon }){\overset{{*}}{\rightharpoonup }}{c_{0}} \nabla \chi = -{c_{0}} \nu{\big |\nabla \chi \big |}$
 in 
 ${\mathcal{M}}(\Omega \times [0,T])^{d}$
.
${\mathcal{M}}(\Omega \times [0,T])^{d}$
.
In total, we have
 \begin{equation} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu{\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T])^{d}. \end{equation}
\begin{equation} \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\nabla u_{\varepsilon }{\overset{{*}}{\rightharpoonup }} -{c_{0}} \nu{\big |\nabla \chi \big |} \qquad \text{in }{\mathcal{M}}(\Omega \times [0,T])^{d}. \end{equation}
By plugging in (4.40), (4.41), and (4.42) into (4.38), one arrives at
 \begin{align*} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |}}\right . &\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |}\right | \\[5pt] &\leq C\|A\|_{L^{\infty }}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align*}
\begin{align*} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |}}\right . &\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (\varepsilon \nabla u_{\varepsilon }\otimes \frac{1}{2}Df(\!-\!\nabla u_{\varepsilon })\right ):\;A\, dx dt +{c_{0}}{\int _{0}^{T}\int _{\Omega }} \left (\nu \otimes D\sigma (\nu )\right ) \;:\; A\,{\big |\nabla \chi \big |}\right | \\[5pt] &\leq C\|A\|_{L^{\infty }}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align*}
This concludes the proof of Lemma 4.10 since, appealing to Lemma 4.8, the time-integrated relative entropy can be made arbitrarily small.
Lemma 4.11. 
Under the assumptions of Theorem 
4.1
, including the energy convergence (
4.3
), and with 
 $\nu _\varepsilon$
 defined in (
4.36
), we have
$\nu _\varepsilon$
 defined in (
4.36
), we have
 \begin{equation} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt \leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation}
\begin{equation} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt \leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }} \int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation}
Proof. We apply Lemma 2.4(i), the estimate 
 $|\nu _{\varepsilon }-\xi |\leq 2$
, and the Cauchy–Schwarz inequality in order to control the occurring integrals by the anisotropic Cahn–Hilliard energy and the
$|\nu _{\varepsilon }-\xi |\leq 2$
, and the Cauchy–Schwarz inequality in order to control the occurring integrals by the anisotropic Cahn–Hilliard energy and the 
 $\varepsilon$
-relative entropy. Precisely,
$\varepsilon$
-relative entropy. Precisely,
 \begin{align*}{\int _{0}^{T}\int _{\Omega }} &\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] & ={\int _{0}^{T}\int _{\Omega }} \sqrt{W(u_{\varepsilon })}\sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )\sqrt{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] &\leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }}{\int _{0}^{T}\int _{\Omega }} \sqrt{W(u_{\varepsilon })}|\nabla u_{\varepsilon }|\left (\sigma (\nu _{\varepsilon })-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu _{\varepsilon } \right )dxdt\\[5pt] &\quad +4\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })\,dxdt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )^{2}dxdt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }}\int _{0}^{T}{\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt\\[5pt] &\quad +4\sqrt{2}\left (\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )^{2}dxdt\right )^{\frac{1}{2}}. \end{align*}
\begin{align*}{\int _{0}^{T}\int _{\Omega }} &\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] & ={\int _{0}^{T}\int _{\Omega }} \sqrt{W(u_{\varepsilon })}\sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )\sqrt{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\\[5pt] &\leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }}{\int _{0}^{T}\int _{\Omega }} \sqrt{W(u_{\varepsilon })}|\nabla u_{\varepsilon }|\left (\sigma (\nu _{\varepsilon })-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu _{\varepsilon } \right )dxdt\\[5pt] &\quad +4\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon f(\!-\!\nabla u_{\varepsilon })\,dxdt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )^{2}dxdt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{\max _{S^{d-1}}\sigma }{c_{\sigma }}\int _{0}^{T}{\mathscr{E}_{\varepsilon }\left [u_{\varepsilon }(t)\big |\xi (t)\right ]}dt\\[5pt] &\quad +4\sqrt{2}\left (\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \left (\sqrt{\varepsilon f(\!-\!\nabla u_{\varepsilon })}-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right )^{2}dxdt\right )^{\frac{1}{2}}. \end{align*}
 One can now take the limit superior on both sides and note that, by assumption, we have 
 $\limsup _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\lt \infty$
. Thus, applying Lemma 4.7 in the first term and Theorem 4.3(iii) in the second term yields
$\limsup _{\varepsilon \searrow 0}\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)]dt\lt \infty$
. Thus, applying Lemma 4.7 in the first term and Theorem 4.3(iii) in the second term yields
 \begin{equation*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\leq \frac {\max _{S^{d-1}}\sigma }{c_{\sigma }}\int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation*}
\begin{equation*} \limsup _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dxdt\leq \frac {\max _{S^{d-1}}\sigma }{c_{\sigma }}\int _{0}^{T}{\mathscr {E}\left [u(t)\big |\xi (t)\right ]}dt. \end{equation*}
4.6 Convergence of the velocity term
The analogue of Theorem 4.9 for the left-hand side terms is
Theorem 4.12. Under the assumptions of Theorem 4.1 , including the energy convergence ( 4.3 ), we have
 \begin{equation} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt =-{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |} \end{equation}
\begin{equation} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt =-{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |} \end{equation}
for all 
 $B\in C^{1}(\Omega \times [0,T])^{d}$
.
$B\in C^{1}(\Omega \times [0,T])^{d}$
.
 Similarly to the argument for the curvature term, we replace the approximate outer normal 
 $\nu _{\varepsilon }$
 by a
$\nu _{\varepsilon }$
 by a 
 $\nu _{\varepsilon }$
 by a vector field
$\nu _{\varepsilon }$
 by a vector field 
 $\xi \in C(\Omega \times [0,T])^{d}$
 such that
$\xi \in C(\Omega \times [0,T])^{d}$
 such that 
 $|\xi |\leq 1$
 on terms can be controlled by the relative entropy. An additional error term arises as we replace the term
$|\xi |\leq 1$
 on terms can be controlled by the relative entropy. An additional error term arises as we replace the term 
 $g(\!-\!\nabla u_{\varepsilon })$
 by its ‘asymptotic’ version
$g(\!-\!\nabla u_{\varepsilon })$
 by its ‘asymptotic’ version 
 $\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}$
: Expanding both sides of (4.44), we obtain
$\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}$
: Expanding both sides of (4.44), we obtain
 \begin{align} {\int _{0}^{T}\int _{\Omega }} & g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}\nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt \\ &\quad -{\int _{0}^{T}\int _{\Omega }} \partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\nonumber \\[5pt] &\quad -{\int _{0}^{T}\int _{\Omega }} \partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\frac{\psi (|\xi |)}{\mu (\xi )}\xi \,dx dt\nonumber +{c_{0}}{\int _{0}^{T}\int _{\Omega }} V B \cdot \frac{\psi (|\xi |)}{\mu (\xi )}\xi{\big |\nabla \chi \big |}\nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}, \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} & g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}\nonumber \\[5pt] &={\int _{0}^{T}\int _{\Omega }} \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt \\ &\quad -{\int _{0}^{T}\int _{\Omega }} \partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\nonumber \\[5pt] &\quad -{\int _{0}^{T}\int _{\Omega }} \partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\frac{\psi (|\xi |)}{\mu (\xi )}\xi \,dx dt\nonumber +{c_{0}}{\int _{0}^{T}\int _{\Omega }} V B \cdot \frac{\psi (|\xi |)}{\mu (\xi )}\xi{\big |\nabla \chi \big |}\nonumber \\[5pt] &\quad +{c_{0}}{\int _{0}^{T}\int _{\Omega }} V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}, \end{align}
where we have used the identity 
 $-\sigma ({\nu _{\varepsilon }})\nabla u_{\varepsilon }=\sigma ({\nu _{\varepsilon }})|\nabla u_{\varepsilon }|{\nu _{\varepsilon }} = \sigma (\!-\!\nabla u_{\varepsilon }){\nu _{\varepsilon }}$
.
$-\sigma ({\nu _{\varepsilon }})\nabla u_{\varepsilon }=\sigma ({\nu _{\varepsilon }})|\nabla u_{\varepsilon }|{\nu _{\varepsilon }} = \sigma (\!-\!\nabla u_{\varepsilon }){\nu _{\varepsilon }}$
.
 To see that the third line on the right-hand side converges to zero as 
 $\varepsilon \searrow 0$
, it suffices to show that
$\varepsilon \searrow 0$
, it suffices to show that
 \begin{align} {\int _{0}^{T}\int _{\Omega }} \varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt \longrightarrow{c_{0}}{\int _{0}^{T}\int _{\Omega }} V\zeta{\big |\nabla \chi \big |} \end{align}
\begin{align} {\int _{0}^{T}\int _{\Omega }} \varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt \longrightarrow{c_{0}}{\int _{0}^{T}\int _{\Omega }} V\zeta{\big |\nabla \chi \big |} \end{align}
as 
 $\varepsilon \searrow 0$
 for all
$\varepsilon \searrow 0$
 for all 
 $\zeta \in C^{1}(\Omega \times [0,T])$
. A density argument then yields the same statement for all
$\zeta \in C^{1}(\Omega \times [0,T])$
. A density argument then yields the same statement for all 
 $\zeta \in C(\Omega \times [0,T])$
, so that one can choose
$\zeta \in C(\Omega \times [0,T])$
, so that one can choose 
 $\zeta = B\cdot \frac{\psi (|\xi |)}{\mu (\xi )}\xi$
.
$\zeta = B\cdot \frac{\psi (|\xi |)}{\mu (\xi )}\xi$
.
In order to prove (4.46), we integrate by parts and write
 \begin{align*}{\int _{0}^{T}\int _{\Omega }} \varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt &={\int _{0}^{T}\int _{\Omega }} \sqrt{\varepsilon } \partial _{t}u_{\varepsilon } \left (\sqrt{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right ) \zeta \,dxdt\\[5pt] &\quad -{\int _{0}^{T}\int _{\Omega }} (\phi \circ u_{\varepsilon })\,\partial _{t}\zeta \, dxdt\\[5pt] &\quad +\int _{\Omega }\phi (u_{\varepsilon }(x,T))\zeta (x,T)\,dx - \int _{\Omega }\phi (u_{\varepsilon,0}(x))\zeta (x,0)\,dx. \end{align*}
\begin{align*}{\int _{0}^{T}\int _{\Omega }} \varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt &={\int _{0}^{T}\int _{\Omega }} \sqrt{\varepsilon } \partial _{t}u_{\varepsilon } \left (\sqrt{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })-\sqrt{\frac{1}{\varepsilon }W(u_{\varepsilon })}\right ) \zeta \,dxdt\\[5pt] &\quad -{\int _{0}^{T}\int _{\Omega }} (\phi \circ u_{\varepsilon })\,\partial _{t}\zeta \, dxdt\\[5pt] &\quad +\int _{\Omega }\phi (u_{\varepsilon }(x,T))\zeta (x,T)\,dx - \int _{\Omega }\phi (u_{\varepsilon,0}(x))\zeta (x,0)\,dx. \end{align*}
The first integral converges to zero as 
 $\varepsilon \searrow 0$
 due to the equipartiton of energy, Theorem 4.3(iii), and the optimal dissipation. For the other three integrals, we apply the convergence statements for the subsequence
$\varepsilon \searrow 0$
 due to the equipartiton of energy, Theorem 4.3(iii), and the optimal dissipation. For the other three integrals, we apply the convergence statements for the subsequence 
 $\varepsilon \searrow 0$
 given in Lemma 4.2, which leads to
$\varepsilon \searrow 0$
 given in Lemma 4.2, which leads to
 \begin{align*} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} &\varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt\\[5pt] &=-{c_{0}}{\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta \, dxdt +{c_{0}} \int _{\Omega }\chi (x,T)\zeta (x,T)\,dx -{c_{0}}\int _{\Omega }\chi _{0}(x)\zeta (x,0)\,dx. \end{align*}
\begin{align*} \lim _{\varepsilon \searrow 0}{\int _{0}^{T}\int _{\Omega }} &\varepsilon \partial _{t}u_{\varepsilon } \sigma (\!-\!\nabla u_{\varepsilon }) \zeta \,dxdt\\[5pt] &=-{c_{0}}{\int _{0}^{T}\int _{\Omega }} \chi \partial _{t}\zeta \, dxdt +{c_{0}} \int _{\Omega }\chi (x,T)\zeta (x,T)\,dx -{c_{0}}\int _{\Omega }\chi _{0}(x)\zeta (x,0)\,dx. \end{align*}
The distributional criterion (2.18) for the normal velocity yields (4.46), and so it follows that the third line on the right-hand side of (4.45) converges to zero.
 It remains to estimate the “error” terms in (4.45). For the first integral on the right-hand side, one uses the asymptotic description of 
 $g$
 provided by Lemma 3.2(iii): For every
$g$
 provided by Lemma 3.2(iii): For every 
 $\delta \gt 0$
, there exists a positive constant
$\delta \gt 0$
, there exists a positive constant 
 $R$
 such that
$R$
 such that 
 $\left |g(p)-\frac{\sigma (p)}{\mu (p)}\right |\lt \delta$
 whenever
$\left |g(p)-\frac{\sigma (p)}{\mu (p)}\right |\lt \delta$
 whenever 
 $|p|\geq R$
. Therefore, we obtain
$|p|\geq R$
. Therefore, we obtain
 \begin{align} \left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt}\right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\right | \nonumber \\[5pt] &\leq{\int _{0}^{T}\int _{\Omega }} \chi _{\{|\nabla u_{\varepsilon }|\leq R \}}\left |g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right ||\partial _{t}u_{\varepsilon }|\left | B \cdot \varepsilon \nabla u_{\varepsilon }\right |dx dt \nonumber \\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \chi _{\{|\nabla u_{\varepsilon }|\gt R\}} \left |g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right ||\partial _{t}u_{\varepsilon }| \left |B\cdot \varepsilon \nabla u_{\varepsilon }\right |dx dt \\ &\leq 2R\,(\!\sup _{{\mathbb{R}}^{d}}g )\|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} \varepsilon |\partial _{t}u_{\varepsilon }|\,dx dt \nonumber \\[5pt] &\quad + \delta \|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |\partial _{t}u_{\varepsilon }| \varepsilon |\nabla u_{\varepsilon }|\,dx dt \nonumber \\[5pt] &\leq 2R\,(\!\sup _{{\mathbb{R}}^{d}}g )\|B\|_{L^{\infty }}\sqrt{\varepsilon T}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon (\partial _{t}u_{\varepsilon })^{2}dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\quad + \delta \|B\|_{L^{\infty }} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon (\partial _{t}u_{\varepsilon })^{2} dx dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon |\nabla u_{\varepsilon }|^{2}dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\leq \sqrt{\varepsilon }\frac{2R\sqrt{T}\,\sup _{{\mathbb{R}}^{d}}g }{\sqrt{c_{g}}}\|B\|_{L^{\infty }}E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}} \nonumber \\[5pt] &\quad + \delta \frac{\sqrt{2}}{\sqrt{c_{g}}\min _{S^{d-1}}\sigma }\|B\|_{L^{\infty }} E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left (\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)] dt\right )^{\frac{1}{2}}, \end{align}
\begin{align} \left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt}\right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\right | \nonumber \\[5pt] &\leq{\int _{0}^{T}\int _{\Omega }} \chi _{\{|\nabla u_{\varepsilon }|\leq R \}}\left |g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right ||\partial _{t}u_{\varepsilon }|\left | B \cdot \varepsilon \nabla u_{\varepsilon }\right |dx dt \nonumber \\[5pt] &\quad +{\int _{0}^{T}\int _{\Omega }} \chi _{\{|\nabla u_{\varepsilon }|\gt R\}} \left |g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right ||\partial _{t}u_{\varepsilon }| \left |B\cdot \varepsilon \nabla u_{\varepsilon }\right |dx dt \\ &\leq 2R\,(\!\sup _{{\mathbb{R}}^{d}}g )\|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} \varepsilon |\partial _{t}u_{\varepsilon }|\,dx dt \nonumber \\[5pt] &\quad + \delta \|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |\partial _{t}u_{\varepsilon }| \varepsilon |\nabla u_{\varepsilon }|\,dx dt \nonumber \\[5pt] &\leq 2R\,(\!\sup _{{\mathbb{R}}^{d}}g )\|B\|_{L^{\infty }}\sqrt{\varepsilon T}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon (\partial _{t}u_{\varepsilon })^{2}dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\quad + \delta \|B\|_{L^{\infty }} \left ({\int _{0}^{T}\int _{\Omega }} \varepsilon (\partial _{t}u_{\varepsilon })^{2} dx dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} \varepsilon |\nabla u_{\varepsilon }|^{2}dx dt\right )^{\frac{1}{2}} \nonumber \\[5pt] &\leq \sqrt{\varepsilon }\frac{2R\sqrt{T}\,\sup _{{\mathbb{R}}^{d}}g }{\sqrt{c_{g}}}\|B\|_{L^{\infty }}E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}} \nonumber \\[5pt] &\quad + \delta \frac{\sqrt{2}}{\sqrt{c_{g}}\min _{S^{d-1}}\sigma }\|B\|_{L^{\infty }} E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left (\int _{0}^{T}E_{\varepsilon }[u_{\varepsilon }(t)] dt\right )^{\frac{1}{2}}, \end{align}
from which it follows that
 \begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt}\right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\right |\nonumber \\[5pt] &\leq \delta C \|B\|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }} \vphantom{\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt}\right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma (\nu _{\varepsilon })}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt\right |\nonumber \\[5pt] &\leq \delta C \|B\|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}. \end{align}
Since 
 $\delta \gt 0$
 is arbitrary, we have shown that the first integral on the right-hand side of (4.45) converges to zero as
$\delta \gt 0$
 is arbitrary, we have shown that the first integral on the right-hand side of (4.45) converges to zero as 
 $\varepsilon \searrow 0$
.
$\varepsilon \searrow 0$
.
 As for the second integral on the right-hand side, we use that the map 
 $p \mapsto \frac{\psi (|p|)}{\mu (p)}p$
 is Lipschitz continuous on
$p \mapsto \frac{\psi (|p|)}{\mu (p)}p$
 is Lipschitz continuous on 
 ${\mathbb{R}}^{d}$
, so that
${\mathbb{R}}^{d}$
, so that
 \begin{align*} \left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt} \right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\right |\\[5pt] &\leq C\|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }}|\partial _{t}u_{\varepsilon }| \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |dx dt\\[5pt] &\leq C\|B\|_{L^{\infty }}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon (\partial _{t}u_{\varepsilon })^{2}dx dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dx dt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{C}{\sqrt{c_{g}}}\|B\|_{L^{\infty }}E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dx dt\right )^{\frac{1}{2}}. \end{align*}
\begin{align*} \left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt} \right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\right |\\[5pt] &\leq C\|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }}|\partial _{t}u_{\varepsilon }| \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |dx dt\\[5pt] &\leq C\|B\|_{L^{\infty }}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon (\partial _{t}u_{\varepsilon })^{2}dx dt\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dx dt\right )^{\frac{1}{2}}\\[5pt] &\leq \frac{C}{\sqrt{c_{g}}}\|B\|_{L^{\infty }}E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }}\varepsilon f(\!-\!\nabla u_{\varepsilon })|\nu _{\varepsilon }-\xi |^{2}dx dt\right )^{\frac{1}{2}}. \end{align*}
It follows with the help of Lemma 4.11 that
 \begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt} \right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\right |\nonumber \\[5pt] &\leq C\|B\|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt} \right .&\left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}\partial _{t}u_{\varepsilon } B\cdot \varepsilon \sigma (\!-\!\nabla u_{\varepsilon })\left (\frac{1}{\mu ({\nu _{\varepsilon }})}{\nu _{\varepsilon }}-\frac{\psi (|\xi |)}{\mu (\xi )}\xi \right )dx dt\right |\nonumber \\[5pt] &\leq C\|B\|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
Again making use of the Lipschitz continuity and Lemma 2.4(i), the last integral on the right-hand side of (4.45) can be estimated as
 \begin{align} \left |{c_{0}}{\int _{0}^{T}\int _{\Omega }}\vphantom{V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}}\right .&\left .\vphantom{{c_{0}}{\int _{0}^{T}\int _{\Omega }}} V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}\right |\nonumber \\[5pt] &\leq{c_{0}} C \|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |V||\nu -\xi |{\big |\nabla \chi \big |}\nonumber \\[5pt] &\leq{c_{0}} C \|B\|_{L^{\infty }}\left ({\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} |\nu -\xi |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \frac{C\sqrt{{c_{0}}}}{\sqrt{c_{\sigma }}} \|B\|_{L^{\infty }}\|V\|_{L^{2}(|\nabla \chi |)}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]} dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \left |{c_{0}}{\int _{0}^{T}\int _{\Omega }}\vphantom{V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}}\right .&\left .\vphantom{{c_{0}}{\int _{0}^{T}\int _{\Omega }}} V B \cdot \left (\frac{1}{\mu (\nu )}\nu - \frac{\psi (|\xi |)}{\mu (\xi )}\xi \right ){\big |\nabla \chi \big |}\right |\nonumber \\[5pt] &\leq{c_{0}} C \|B\|_{L^{\infty }}{\int _{0}^{T}\int _{\Omega }} |V||\nu -\xi |{\big |\nabla \chi \big |}\nonumber \\[5pt] &\leq{c_{0}} C \|B\|_{L^{\infty }}\left ({\int _{0}^{T}\int _{\Omega }} V^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\left ({\int _{0}^{T}\int _{\Omega }} |\nu -\xi |^{2}{\big |\nabla \chi \big |}\right )^{\frac{1}{2}}\nonumber \\[5pt] &\leq \frac{C\sqrt{{c_{0}}}}{\sqrt{c_{\sigma }}} \|B\|_{L^{\infty }}\|V\|_{L^{2}(|\nabla \chi |)}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]} dt\right )^{\frac{1}{2}}. \end{align}
Plugging in the results for each right-hand side integral into (4.45) leads to
 \begin{align*} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}}\right . & \left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}\right |\\[5pt] &\leq C \|B\|_{L^{\infty }}\left (E_{0}^{\frac{1}{2}}+\|V\|_{L^{2}(|\nabla \chi |)}\right )\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]} dt\right )^{\frac{1}{2}}. \end{align*}
\begin{align*} \limsup _{\varepsilon \searrow 0}\left |{\int _{0}^{T}\int _{\Omega }}\vphantom{g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}}\right . & \left .\vphantom{{\int _{0}^{T}\int _{\Omega }}}g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon } B\cdot \varepsilon \nabla u_{\varepsilon }\,dx dt+{c_{0}}{\int _{0}^{T}\int _{\Omega }} \frac{1}{\mu (\nu )}VB\cdot \nu{\big |\nabla \chi \big |}\right |\\[5pt] &\leq C \|B\|_{L^{\infty }}\left (E_{0}^{\frac{1}{2}}+\|V\|_{L^{2}(|\nabla \chi |)}\right )\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]} dt\right )^{\frac{1}{2}}. \end{align*}
The proof of Theorem 4.12 is complete once we take into account that, by Lemma 4.8, the time-integrated relative entropy can be made arbitrarily small for suitable choices of vector fields 
 $\xi$
.
$\xi$
.
4.7 Optimal energy dissipation inequality
Lemma 4.13. Under the assumptions of Theorem 4.1 , including the energy convergence ( 4.3 ), the inequality
 \begin{align*} E[u({T^{\prime }})]+{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |} \leq E_{0} \end{align*}
\begin{align*} E[u({T^{\prime }})]+{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |} \leq E_{0} \end{align*}
holds true for all 
 ${T^{\prime }} \in [0,T]$
.
${T^{\prime }} \in [0,T]$
.
 The strategy to prove this lemma is to take 
 $\varepsilon \searrow 0$
 in the optimal energy dissipation identity (3.4) for the anisotropic Allen–Cahn equation. By the well-preparedness of the initial data (4.1), we have
$\varepsilon \searrow 0$
 in the optimal energy dissipation identity (3.4) for the anisotropic Allen–Cahn equation. By the well-preparedness of the initial data (4.1), we have 
 $\lim _{\varepsilon \searrow 0}E_{\varepsilon }[u_{\varepsilon,0}]=E_{0}$
. Furthermore, the
$\lim _{\varepsilon \searrow 0}E_{\varepsilon }[u_{\varepsilon,0}]=E_{0}$
. Furthermore, the 
 $\Gamma$
-convergence
$\Gamma$
-convergence 
 $E_{\varepsilon }\overset{\Gamma }{\longrightarrow }E$
 on
$E_{\varepsilon }\overset{\Gamma }{\longrightarrow }E$
 on 
 $L^{1}(\Omega )$
 (see [Reference Bouchitté9, Theorem 3.5]) yields
$L^{1}(\Omega )$
 (see [Reference Bouchitté9, Theorem 3.5]) yields 
 $\liminf _{\varepsilon \searrow 0}E_{\varepsilon }[u_{\varepsilon }({T^{\prime }})]\geq E[u({T^{\prime }})]$
 since it follows from the conditions in Lemma 4.2 that
$\liminf _{\varepsilon \searrow 0}E_{\varepsilon }[u_{\varepsilon }({T^{\prime }})]\geq E[u({T^{\prime }})]$
 since it follows from the conditions in Lemma 4.2 that 
 $u_{\varepsilon }(t)\to u(t)$
 in all
$u_{\varepsilon }(t)\to u(t)$
 in all 
 $t \in [0,T]$
.
$t \in [0,T]$
.
 We remark that Bouchitté [Reference Bouchitté9] defines 
 $\mathrm{dom}(E_{\varepsilon })=\mathrm{Lip}(\Omega )$
, so that the liminf inequality for our definition in (1.7) does not immediately follow. However, the liminf inequality is the easier part of the
$\mathrm{dom}(E_{\varepsilon })=\mathrm{Lip}(\Omega )$
, so that the liminf inequality for our definition in (1.7) does not immediately follow. However, the liminf inequality is the easier part of the 
 $\Gamma$
-convergence statement and can be shown by combining the Modica–Mortola argument in Theorem 4.3(i) above with the truncation of
$\Gamma$
-convergence statement and can be shown by combining the Modica–Mortola argument in Theorem 4.3(i) above with the truncation of 
 $W$
 that can be found in [Reference Leoni44, Proof of Theorem 1.6].
$W$
 that can be found in [Reference Leoni44, Proof of Theorem 1.6].
Therefore, the proof of the lemma reduces to proving the following inequality:
Claim 2. 
For every 
 ${T^{\prime }} \in [0,T]$
, we have
${T^{\prime }} \in [0,T]$
, we have
 \begin{equation} \liminf _{\varepsilon \searrow 0}\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt \geq{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |}. \end{equation}
\begin{equation} \liminf _{\varepsilon \searrow 0}\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt \geq{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega }\frac{1}{\mu (\nu )}V^{2}{\big |\nabla \chi \big |}. \end{equation}
 Let 
 $\zeta \in C(\Omega \times [0,T])$
 and
$\zeta \in C(\Omega \times [0,T])$
 and 
 $\xi \in C(\Omega \times [0,T])^{d}$
 such that
$\xi \in C(\Omega \times [0,T])^{d}$
 such that 
 $|\xi |\leq 1$
 in
$|\xi |\leq 1$
 in 
 $\Omega \times [0,T]$
. We apply Young’s inequality in the form
$\Omega \times [0,T]$
. We apply Young’s inequality in the form 
 $a^{2}\geq 2ab-b^{2}$
 and add zero multiple times in order to replace
$a^{2}\geq 2ab-b^{2}$
 and add zero multiple times in order to replace 
 $g$
 with its asymptotic version and
$g$
 with its asymptotic version and 
 $\nu _{\varepsilon }$
 with
$\nu _{\varepsilon }$
 with 
 $\xi$
, similarly to the approach in (4.45). In this case, we obtain
$\xi$
, similarly to the approach in (4.45). In this case, we obtain
 \begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }&\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt\nonumber \\[5pt] &\geq 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon g(\!-\!\nabla u_{\varepsilon })f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &=2\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &\quad +2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &\quad + 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt. \end{align}
\begin{align} \int _{0}^{{T^{\prime }}}\int _{\Omega }&\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt\nonumber \\[5pt] &\geq 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon g(\!-\!\nabla u_{\varepsilon })\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon g(\!-\!\nabla u_{\varepsilon })f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &=2\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &\quad +2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\nonumber \\[5pt] &\quad + 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt. \end{align}
 To show that the first integral on the right-hand side converges to zero, let 
 $\delta \gt 0$
. By Lemma 3.2(iii), there exists some
$\delta \gt 0$
. By Lemma 3.2(iii), there exists some 
 $R\gt 0$
 such that
$R\gt 0$
 such that 
 $\left |g(p)-\frac{\sigma (p)}{\mu (p)}\right |\lt \delta$
 for all
$\left |g(p)-\frac{\sigma (p)}{\mu (p)}\right |\lt \delta$
 for all 
 $p \in{\mathbb{R}}^{d}$
 with
$p \in{\mathbb{R}}^{d}$
 with 
 $|p|\geq R$
. Arguing as in (4.47), we find
$|p|\geq R$
. Arguing as in (4.47), we find
 \begin{align*} \left |2\int _{0}^{{T^{\prime }}}\int _{\Omega } \vphantom{\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\\[5pt] &\leq 4R\, \frac{(\!\max _{S^{d-1}}\sigma )(\!\sup _{{\mathbb{R}}^{d}}g)}{\sqrt{c_{g}}}\|\zeta \|_{L^{\infty }}\sqrt{\varepsilon T}\,E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\\[5pt] &\quad +2\sqrt{2}\,\delta \, \frac{\max _{S^{d-1}}\sigma }{\sqrt{c_{g}}\,\min _{S^{d-1}}\sigma }\,\|\zeta \|_{L^{\infty }}{E_{\varepsilon }[u_{\varepsilon,0}]}^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}}. \end{align*}
\begin{align*} \left |2\int _{0}^{{T^{\prime }}}\int _{\Omega } \vphantom{\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\\[5pt] &\leq 4R\, \frac{(\!\max _{S^{d-1}}\sigma )(\!\sup _{{\mathbb{R}}^{d}}g)}{\sqrt{c_{g}}}\|\zeta \|_{L^{\infty }}\sqrt{\varepsilon T}\,E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\\[5pt] &\quad +2\sqrt{2}\,\delta \, \frac{\max _{S^{d-1}}\sigma }{\sqrt{c_{g}}\,\min _{S^{d-1}}\sigma }\,\|\zeta \|_{L^{\infty }}{E_{\varepsilon }[u_{\varepsilon,0}]}^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}E_{\varepsilon }[u_{\varepsilon }(t)]dt\right )^{\frac{1}{2}}. \end{align*}
Taking first 
 $\varepsilon \searrow 0$
, then
$\varepsilon \searrow 0$
, then 
 $\delta \searrow 0$
 leads to
$\delta \searrow 0$
 leads to
 \begin{align} \lim _{\varepsilon \searrow 0}\left |2\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |=0. \end{align}
\begin{align} \lim _{\varepsilon \searrow 0}\left |2\int _{0}^{{T^{\prime }}}\int _{\Omega } \varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |=0. \end{align}
For the second line on the right-hand side of (4.52), we argue analogously and obtain
 \begin{align} \lim _{\varepsilon \searrow 0}\left |-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right |=0. \end{align}
\begin{align} \lim _{\varepsilon \searrow 0}\left |-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \left (g(\!-\!\nabla u_{\varepsilon })-\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right |=0. \end{align}
 Due to the Lipschitz continuity of the map 
 $p \mapsto \psi (|p|)\frac{\sigma (p)}{\mu (p)}$
, the third integral can be estimated as
$p \mapsto \psi (|p|)\frac{\sigma (p)}{\mu (p)}$
, the third integral can be estimated as
 \begin{align*} \left |2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\\[5pt] &\leq 2 C\|\zeta \|_{L^{\infty }} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi ||\partial _{t}u_{\varepsilon }|\sigma (\!-\!\nabla u_{\varepsilon })\, dxdt\\[5pt] &\leq 2 C\|\zeta \|_{L^{\infty }} \left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon (\partial _{t}u_{\varepsilon })^{2} dxdt\right )^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi |^{2}f(\!-\!\nabla u_{\varepsilon })\, dxdt\right )^{\frac{1}{2}}\\[5pt] &\leq 2 \frac{C}{\sqrt{c_{g}}}\|\zeta \|_{L^{\infty }} E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi |^{2}f(\!-\!\nabla u_{\varepsilon })\, dxdt\right )^{\frac{1}{2}}, \end{align*}
\begin{align*} \left |2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\\[5pt] &\leq 2 C\|\zeta \|_{L^{\infty }} \int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi ||\partial _{t}u_{\varepsilon }|\sigma (\!-\!\nabla u_{\varepsilon })\, dxdt\\[5pt] &\leq 2 C\|\zeta \|_{L^{\infty }} \left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon (\partial _{t}u_{\varepsilon })^{2} dxdt\right )^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi |^{2}f(\!-\!\nabla u_{\varepsilon })\, dxdt\right )^{\frac{1}{2}}\\[5pt] &\leq 2 \frac{C}{\sqrt{c_{g}}}\|\zeta \|_{L^{\infty }} E_{\varepsilon }[u_{\varepsilon,0}]^{\frac{1}{2}}\left (\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon |{\nu _{\varepsilon }}-\xi |^{2}f(\!-\!\nabla u_{\varepsilon })\, dxdt\right )^{\frac{1}{2}}, \end{align*}
so that, by appealing to Lemma 4.11, we obtain
 \begin{align} \limsup _{\varepsilon \searrow 0}\left |2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\nonumber \\[5pt] &\leq C \|\zeta \|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \limsup _{\varepsilon \searrow 0}\left |2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt\right |\nonumber \\[5pt] &\leq C \|\zeta \|_{L^{\infty }}E_{0}^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
For the fourth line of the right-hand side of (4.52), a very similar computation yields
 \begin{align} \limsup _{\varepsilon \searrow 0}\left |-\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt}\right .&\left .\vphantom{-\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right |\nonumber \\[5pt] &\leq C\|\zeta \|_{L^{\infty }}^{2}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
\begin{align} \limsup _{\varepsilon \searrow 0}\left |-\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt}\right .&\left .\vphantom{-\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \left (\frac{\sigma ({\nu _{\varepsilon }})}{\mu ({\nu _{\varepsilon }})}-\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\right )f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right |\nonumber \\[5pt] &\leq C\|\zeta \|_{L^{\infty }}^{2}\left (\int _{0}^{T}E[u(t)]dt\right )^{\frac{1}{2}}\left (\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt\right )^{\frac{1}{2}}. \end{align}
Finally, it follows from (4.46) and the equipartition of energy, Theorem 4.3(v), that
 \begin{align} \lim _{\varepsilon \searrow 0}\left ( 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right )\nonumber \\[5pt] &=2{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega } \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}V\zeta{\big |\nabla \chi \big |} -{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\sigma (\nu )\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\zeta ^{2}{\big |\nabla \chi \big |}. \end{align}
\begin{align} \lim _{\varepsilon \searrow 0}\left ( 2\int _{0}^{{T^{\prime }}}\int _{\Omega }\vphantom{\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt}\right .&\left .\vphantom{2\int _{0}^{{T^{\prime }}}\int _{\Omega }}\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\partial _{t}u_{\varepsilon }\sigma (\!-\!\nabla u_{\varepsilon })\zeta \,dxdt-\int _{0}^{{T^{\prime }}}\int _{\Omega }\varepsilon \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}f(\!-\!\nabla u_{\varepsilon })\zeta ^{2}dxdt\right )\nonumber \\[5pt] &=2{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega } \psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}V\zeta{\big |\nabla \chi \big |} -{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\sigma (\nu )\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\zeta ^{2}{\big |\nabla \chi \big |}. \end{align}
 It is now desirable to let 
 $\xi \to \nu$
 in
$\xi \to \nu$
 in 
 $L^{2}({\big |\nabla \chi \big |})$
 so that
$L^{2}({\big |\nabla \chi \big |})$
 so that 
 $\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt \to 0$
. This is possible by Lemma 4.8 and Lemma 2.4(i). By the dominated convergence theorem, we also have
$\int _{0}^{T}{\mathscr{E}\left [u(t)\big |\xi (t)\right ]}dt \to 0$
. This is possible by Lemma 4.8 and Lemma 2.4(i). By the dominated convergence theorem, we also have 
 $\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\to \frac{\sigma (\nu )}{\mu (\nu )}$
 in
$\psi (|\xi |)\frac{\sigma (\xi )}{\mu (\xi )}\to \frac{\sigma (\nu )}{\mu (\nu )}$
 in 
 $L^{2}({\big |\nabla \chi \big |})$
. Under this convergence, it follows from (4.52) and the computations (4.53)–(4.57) that
$L^{2}({\big |\nabla \chi \big |})$
. Under this convergence, it follows from (4.52) and the computations (4.53)–(4.57) that
 \begin{align*} \liminf _{\varepsilon \searrow 0}\int _{0}^{{T^{\prime }}}\int _{\Omega }&\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt\\[5pt] &\geq 2{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega } \frac{\sigma (\nu )}{\mu (\nu )}V\zeta{\big |\nabla \chi \big |} -{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\sigma (\nu )\frac{\sigma (\nu )}{\mu (\nu )}\zeta ^{2}{\big |\nabla \chi \big |}. \end{align*}
\begin{align*} \liminf _{\varepsilon \searrow 0}\int _{0}^{{T^{\prime }}}\int _{\Omega }&\varepsilon g(\!-\!\nabla u_{\varepsilon })(\partial _{t}u_{\varepsilon })^{2}dxdt\\[5pt] &\geq 2{c_{0}} \int _{0}^{{T^{\prime }}}\int _{\Omega } \frac{\sigma (\nu )}{\mu (\nu )}V\zeta{\big |\nabla \chi \big |} -{c_{0}}\int _{0}^{{T^{\prime }}}\int _{\Omega }\sigma (\nu )\frac{\sigma (\nu )}{\mu (\nu )}\zeta ^{2}{\big |\nabla \chi \big |}. \end{align*}
 In a last step we let 
 $\zeta \to \frac{V}{\sigma (\nu )}$
 in
$\zeta \to \frac{V}{\sigma (\nu )}$
 in 
 $L^{2}({\big |\nabla \chi \big |})$
, which yields the lower bound as stated in the claim.
$L^{2}({\big |\nabla \chi \big |})$
, which yields the lower bound as stated in the claim.
4.8 Proof of Theorem 4.1
We simply wrap up the proof of the theorem.
Proof. The compactness follows from Lemma 4.2. Under the energy convergence assumption, the distributional formulation for the time derivative (2.18) follows from Lemma 4.4. The optimal energy dissipation relation (2.20) follows from Lemma 4.13. To obtain the distributional formulation for the curvature in (2.19), we use 
 $B\cdot \varepsilon \nabla u_{\varepsilon }$
 as a test function in the distributional formulation of the anisotropic Allen–Cahn equation (3.3), where
$B\cdot \varepsilon \nabla u_{\varepsilon }$
 as a test function in the distributional formulation of the anisotropic Allen–Cahn equation (3.3), where 
 $B \in C^{1}(\Omega \times [0,T])^{d}$
, where we recall that by Theorem 3.10, we have
$B \in C^{1}(\Omega \times [0,T])^{d}$
, where we recall that by Theorem 3.10, we have 
 $B\cdot \varepsilon \nabla u_{\varepsilon } \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
, and that these functions are admissible test functions in (3.3). To pass to the limit as
$B\cdot \varepsilon \nabla u_{\varepsilon } \in L^{2}\left (0,T;\;H^{1}(\Omega )\right )$
, and that these functions are admissible test functions in (3.3). To pass to the limit as 
 $\varepsilon \searrow 0$
 in the left-hand side, one applies Theorem 4.12, and likewise for the right-hand side, apply Theorem 4.9.
$\varepsilon \searrow 0$
 in the left-hand side, one applies Theorem 4.12, and likewise for the right-hand side, apply Theorem 4.9.
5. Weak–strong uniqueness for anisotropic mean curvature flow
 The goal of this section is to prove that, as long as a strong solution to anisotropic mean curvature flow (1.1) exists, any 
 $BV$
 solution with the same initial data coincides with the strong solution. One needs to require additional regularity for
$BV$
 solution with the same initial data coincides with the strong solution. One needs to require additional regularity for 
 $(\sigma,\mu )$
 to make sure that strong solutions will be sufficiently smooth, and we will also rely on the higher regularity of
$(\sigma,\mu )$
 to make sure that strong solutions will be sufficiently smooth, and we will also rely on the higher regularity of 
 $\sigma$
 in the proof of the weak–strong uniqueness statement. Thus, we assume that
$\sigma$
 in the proof of the weak–strong uniqueness statement. Thus, we assume that 
 $\sigma,\mu \in C^{\infty }\big ({\mathbb{R}}^{d}\setminus \{0\}\big )$
. Further, without loss of generality, we let
$\sigma,\mu \in C^{\infty }\big ({\mathbb{R}}^{d}\setminus \{0\}\big )$
. Further, without loss of generality, we let 
 $c_0 = 1.$
 Following Hensel and Moser [Reference Hensel and Moser37, Definition 10], we define strong solutions to (1.1) as follows:
$c_0 = 1.$
 Following Hensel and Moser [Reference Hensel and Moser37, Definition 10], we define strong solutions to (1.1) as follows:
Definition 5.1. Let 
 $T\gt 0$
 be a finite time horizon. A family
$T\gt 0$
 be a finite time horizon. A family 
 $\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 of open subsets of
$\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 of open subsets of 
 $\Omega$
 is a strong solution to anisotropic mean curvature flow if
$\Omega$
 is a strong solution to anisotropic mean curvature flow if
- 
•  $\partial{\mathscr{A}}(0)$
 is an embedded $\partial{\mathscr{A}}(0)$
 is an embedded $C^{\infty }$
-submanifold, $C^{\infty }$
-submanifold,
- 
• there exists a  $C^{\infty }$
-map $C^{\infty }$
-map $\Phi \;:\;\Omega \times [0,T]\to \Omega$
 such that $\Phi \;:\;\Omega \times [0,T]\to \Omega$
 such that $\Phi (\cdot,t)$
 is a diffeomorphism for all $\Phi (\cdot,t)$
 is a diffeomorphism for all $t\in [0,T]$
, furthermore $t\in [0,T]$
, furthermore $\Phi (\cdot,0)={\mathrm{id}}_{\Omega }$
 andfor all $\Phi (\cdot,0)={\mathrm{id}}_{\Omega }$
 andfor all \begin{equation*} \Phi ({\mathscr {A}}(0),t)={\mathscr {A}}(t), \qquad \Phi (\partial {\mathscr {A}}(0),t)=\partial {\mathscr {A}}(t) \end{equation*} \begin{equation*} \Phi ({\mathscr {A}}(0),t)={\mathscr {A}}(t), \qquad \Phi (\partial {\mathscr {A}}(0),t)=\partial {\mathscr {A}}(t) \end{equation*} $t \in [0,T]$
, and $t \in [0,T]$
, and
- 
•  $\{\partial{\mathscr{A}}(t) \}_{t\in [0,T]}$
 evolves by (1.1) in the classical sense. $\{\partial{\mathscr{A}}(t) \}_{t\in [0,T]}$
 evolves by (1.1) in the classical sense.
 The setup in [Reference Hensel and Moser37, Definition 10 and Remark 15] also suggests that the 
 $C^{\infty }$
-regularity for
$C^{\infty }$
-regularity for 
 $(\sigma,\mu )$
,
$(\sigma,\mu )$
, 
 $\Phi$
, and
$\Phi$
, and 
 $\partial{\mathscr{A}}(0)$
 can be relaxed.
$\partial{\mathscr{A}}(0)$
 can be relaxed.
We are now ready to formulate the central theorem of this section:
Theorem 5.2. 
Let 
 ${\mathscr{A}(t)}_{t \in [0,T]}$
 be a solution of anisotropic mean curvature flow (
1.1
), and further, let
${\mathscr{A}(t)}_{t \in [0,T]}$
 be a solution of anisotropic mean curvature flow (
1.1
), and further, let 
 $\{A(t)\}_{t\in [0,T]}$
 be time parametrized collection of sets with
$\{A(t)\}_{t\in [0,T]}$
 be time parametrized collection of sets with 
 $\chi \;:\!=\;\chi _{A}$
 a distributional solution of anisotropic mean curvature flow as in Definition 2.8
. If
$\chi \;:\!=\;\chi _{A}$
 a distributional solution of anisotropic mean curvature flow as in Definition 2.8
. If
 \begin{equation*} \left | \mathscr {A}(0)\triangle A(0)\right | = 0, \end{equation*}
\begin{equation*} \left | \mathscr {A}(0)\triangle A(0)\right | = 0, \end{equation*}
then
 \begin{equation*} \left | \mathscr {A}(t)\triangle A(t)\right | = 0 \end{equation*}
\begin{equation*} \left | \mathscr {A}(t)\triangle A(t)\right | = 0 \end{equation*}
for all 
 $t \in [0,T]$
.
$t \in [0,T]$
.
 The proof for this theorem is modeled after [Reference Hensel and Laux35, Sections 2.2, 4], where Hensel and the first author derive an analogous result for multiphase isotropic mean curvature flow. The key step in this argument is to find a gradient flow calibration (see below) for the smooth evolution 
 $\left \{\mathscr{A}(t)\right \}_{t \in [0,T]}$
. While the existence of a gradient flow calibration is nontrivial in the multiphase case (see [Reference Hensel and Moser37, Theorem 4] for a gradient flow calibration for multiphase mean curvature flow in
$\left \{\mathscr{A}(t)\right \}_{t \in [0,T]}$
. While the existence of a gradient flow calibration is nontrivial in the multiphase case (see [Reference Hensel and Moser37, Theorem 4] for a gradient flow calibration for multiphase mean curvature flow in 
 $d=2$
 with constant contact angle), such a calibration can always be constructed explicitly for a smooth two-phase evolution.
$d=2$
 with constant contact angle), such a calibration can always be constructed explicitly for a smooth two-phase evolution.
5.1 Gradient flow calibrations
 In the remainder of this chapter, 
 $C \lt \infty$
 and
$C \lt \infty$
 and 
 $c\gt 0$
 denote positive constants (‘large’ and ‘small’, respectively) that may depend on the pair of anisotropies
$c\gt 0$
 denote positive constants (‘large’ and ‘small’, respectively) that may depend on the pair of anisotropies 
 $(\sigma,\mu )$
, on the time horizon
$(\sigma,\mu )$
, on the time horizon 
 $T$
, and on the smooth evolution
$T$
, and on the smooth evolution 
 $\left \{\mathscr{A}(t)\right \}_{t \in [0,T]}$
. These constants need not be the same on every occurrence.
$\left \{\mathscr{A}(t)\right \}_{t \in [0,T]}$
. These constants need not be the same on every occurrence.
Definition 5.3. Let 
 $\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
 be a strong solution to anisotropic mean curvature flow consisting of nonempty open proper subsets of
$\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
 be a strong solution to anisotropic mean curvature flow consisting of nonempty open proper subsets of 
 $\Omega$
. A gradient flow calibration for
$\Omega$
. A gradient flow calibration for 
 $\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
 is a triple
$\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
 is a triple
 \begin{equation*} (\xi, B, \vartheta ) \in C_{1}^{2}(\Omega \times [0,T])^{d}\times C\big ([0,T];\;C^{2}(\Omega )\big )^{d} \times C^{1}(\Omega \times [0,T];\;[-1,1]) \end{equation*}
\begin{equation*} (\xi, B, \vartheta ) \in C_{1}^{2}(\Omega \times [0,T])^{d}\times C\big ([0,T];\;C^{2}(\Omega )\big )^{d} \times C^{1}(\Omega \times [0,T];\;[-1,1]) \end{equation*}
satisfying
- 
• the approximate evolution equations (5.1) \begin{align} \left | \partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right |(x, t) & \leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align}
(5.2) \begin{align} \left | \partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right |(x, t) & \leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align}
(5.2) \begin{align} \left | \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right |(x, t) & \leq C\; \mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align}
(5.3) \begin{align} \left | \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right |(x, t) & \leq C\; \mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align}
(5.3) \begin{align} \left | \partial _{t}\vartheta + (B\cdot \nabla )\vartheta \right |(x, t) & \leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align} \begin{align} \left | \partial _{t}\vartheta + (B\cdot \nabla )\vartheta \right |(x, t) & \leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))&\text{in } \Omega \times [0,T], \end{align}
- 
• the compatibility condition (5.4) \begin{equation} \left | B \cdot \xi + \mu (\xi )\mathrm{div}(|\xi |\psi (|\xi |)D \sigma (\xi ))\right |(x, t)\leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))\quad \text{in } \Omega \times [0,T], \end{equation} \begin{equation} \left | B \cdot \xi + \mu (\xi )\mathrm{div}(|\xi |\psi (|\xi |)D \sigma (\xi ))\right |(x, t)\leq C\; \mathrm{dist}(x, \partial{\mathscr{A}}(t))\quad \text{in } \Omega \times [0,T], \end{equation}
- 
• and with  $\nu _{\partial{\mathscr{A}}(t)}$
 denoting the outer unit normal of the set $\nu _{\partial{\mathscr{A}}(t)}$
 denoting the outer unit normal of the set ${\mathscr{A}}(t)$
, we have the coercivity conditions(5.5) ${\mathscr{A}}(t)$
, we have the coercivity conditions(5.5) \begin{align} \xi (x,t)&=\nu _{\partial{\mathscr{A}}(t)}(x)&&\text{on } \bigcup _{t\in [0,T]}\left (\partial{\mathscr{A}}(t)\times \{t\}\right ), \end{align}
(5.6) \begin{align} \xi (x,t)&=\nu _{\partial{\mathscr{A}}(t)}(x)&&\text{on } \bigcup _{t\in [0,T]}\left (\partial{\mathscr{A}}(t)\times \{t\}\right ), \end{align}
(5.6) \begin{align} |\xi (x, t)|&\leq 1-c\;\mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t)) &&\text{in } \Omega \times [0,T], \end{align}
(5.7) \begin{align} |\xi (x, t)|&\leq 1-c\;\mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t)) &&\text{in } \Omega \times [0,T], \end{align}
(5.7) \begin{align} \vartheta (x,t)&\gt c\;\mathrm{dist}(x, \partial{\mathscr{A}}(t))&&\text{in } \bigcup _{t\in [0,T]}\left (\overline{{\mathscr{A}}(t)}^{c}\times \{t\}\right ), \end{align}
(5.8) \begin{align} \vartheta (x,t)&\gt c\;\mathrm{dist}(x, \partial{\mathscr{A}}(t))&&\text{in } \bigcup _{t\in [0,T]}\left (\overline{{\mathscr{A}}(t)}^{c}\times \{t\}\right ), \end{align}
(5.8) \begin{align} \vartheta (x,t)&\lt -c\;\mathrm{dist}(x, \partial{\mathscr{A}}(t)) &&\text{in } \bigcup _{t\in [0,T]}\left ({\mathscr{A}}(t)\times \{t\}\right ). \end{align} \begin{align} \vartheta (x,t)&\lt -c\;\mathrm{dist}(x, \partial{\mathscr{A}}(t)) &&\text{in } \bigcup _{t\in [0,T]}\left ({\mathscr{A}}(t)\times \{t\}\right ). \end{align}
 Intuitively, 
 $\xi$
 is an extension of the outer unit normal
$\xi$
 is an extension of the outer unit normal 
 $\nu _{\partial{\mathscr{A}}(t)}$
 (with an additional coercivity property), whereas
$\nu _{\partial{\mathscr{A}}(t)}$
 (with an additional coercivity property), whereas 
 $B$
 extends the normal velocity vector and
$B$
 extends the normal velocity vector and 
 $\vartheta$
 is comparable to a signed distance function. The compatibility condition (5.4) encodes the motion by anisotropic mean curvature. The space
$\vartheta$
 is comparable to a signed distance function. The compatibility condition (5.4) encodes the motion by anisotropic mean curvature. The space 
 $C_{1}^{2}(\Omega \times [0,T])$
 is defined as
$C_{1}^{2}(\Omega \times [0,T])$
 is defined as
 \begin{equation*} C_{1}^{2}(\Omega \times [0,T])\;:\!=\;\left \{f\in C(\Omega \times [0,T])\,\bigg |\,\partial _{t}f,\, \nabla f, \, D^{2}f \text { are continuous on } \Omega \times [0,T] \right \}. \end{equation*}
\begin{equation*} C_{1}^{2}(\Omega \times [0,T])\;:\!=\;\left \{f\in C(\Omega \times [0,T])\,\bigg |\,\partial _{t}f,\, \nabla f, \, D^{2}f \text { are continuous on } \Omega \times [0,T] \right \}. \end{equation*}
Let us collect the key inequalities for gradient flow calibrations that will be used in the proof of Theorem 5.2.
Lemma 5.4. 
Let 
 $(\xi, B, \vartheta )$
 be a gradient flow calibration for
$(\xi, B, \vartheta )$
 be a gradient flow calibration for 
 $\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
. Then the following estimates hold true for all
$\left \{{\mathscr{A}}(t) \right \}_{t\in [0,T]}$
. Then the following estimates hold true for all 
 $(x,t)\in \Omega \times [0,T]$
:
$(x,t)\in \Omega \times [0,T]$
:
- 
(i)  \begin{equation*} c\;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)) \leq 1-\left |\xi \right |(x,t)\leq C\; \mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)), \end{equation*} \begin{equation*} c\;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)) \leq 1-\left |\xi \right |(x,t)\leq C\; \mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)), \end{equation*}
- 
(ii)  \begin{equation*} c \;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)) \leq 1-\left |\xi \right |^{2}(x,t)\leq C \;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)), \end{equation*} \begin{equation*} c \;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)) \leq 1-\left |\xi \right |^{2}(x,t)\leq C \;\mathrm {dist}^{2}(x, \partial {\mathscr {A}}(t)), \end{equation*}
- 
(iii)  \begin{equation*} \left |\xi \cdot (\xi \cdot \nabla )B\right |(x,t)\leq C \;\mathrm {dist}(x, \partial {\mathscr {A}}(t)). \end{equation*} \begin{equation*} \left |\xi \cdot (\xi \cdot \nabla )B\right |(x,t)\leq C \;\mathrm {dist}(x, \partial {\mathscr {A}}(t)). \end{equation*}
 
If 
 $\nu \;:\; \Omega \times [0,T]\to{\mathbb{R}}^{d}$
 such that
$\nu \;:\; \Omega \times [0,T]\to{\mathbb{R}}^{d}$
 such that 
 $|\nu |\equiv 1$
, then
$|\nu |\equiv 1$
, then
- 
(iv)  \begin{equation*} |\nu -\xi |^{2}\leq C\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ), \end{equation*} \begin{equation*} |\nu -\xi |^{2}\leq C\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ), \end{equation*}
- 
(v)  \begin{equation*} 1-|\xi |\leq C\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ), \text { and} \end{equation*} \begin{equation*} 1-|\xi |\leq C\left (\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ), \text { and} \end{equation*}
- 
(vi)  \begin{equation*} \left |\xi \cdot (\nu -\xi )\right |\leq C\left (\sigma (\nu ) - |\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ). \end{equation*} \begin{equation*} \left |\xi \cdot (\nu -\xi )\right |\leq C\left (\sigma (\nu ) - |\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu \right ). \end{equation*}
Proof.
- 
(i) The lower bound is precisely the coercivity condition (5.6). For the upper bound, we observe that, due to (5.5) and (5.6),  $|\xi |$
 attains its maximum on $|\xi |$
 attains its maximum on $\partial{\mathscr{A}}(t)$
 for every $\partial{\mathscr{A}}(t)$
 for every $t \in [0,T]$
. In particular, we have $t \in [0,T]$
. In particular, we have $\nabla |\xi |=0$
 on $\nabla |\xi |=0$
 on $\partial{\mathscr{A}}(t)$
. A second-order Taylor expansion yields $\partial{\mathscr{A}}(t)$
. A second-order Taylor expansion yields $1-|\xi |(x,t)\leq C\;\mathrm{dist}^{2}(x,\partial{\mathscr{A}}(t))$
. For this argument, we use the smoothness of $1-|\xi |(x,t)\leq C\;\mathrm{dist}^{2}(x,\partial{\mathscr{A}}(t))$
. For this argument, we use the smoothness of $\xi$
 (i.e., the continuity of $\xi$
 (i.e., the continuity of $\nabla \xi$
 and $\nabla \xi$
 and $\nabla ^2\xi$
 on $\nabla ^2\xi$
 on $\Omega \times [0,T]$
) and the compactness of the domain $\Omega \times [0,T]$
) and the compactness of the domain $\Omega \times [0,T]$
. $\Omega \times [0,T]$
.
- 
(ii) This follows immediately from (i) since the condition  $|\xi |\leq 1$
 allows us to computei.e., $|\xi |\leq 1$
 allows us to computei.e., \begin{equation*} 1-|\xi |\leq 1-|\xi |^{2}=(1-|\xi |)(1+|\xi |)\leq 2(1-|\xi |), \end{equation*} \begin{equation*} 1-|\xi |\leq 1-|\xi |^{2}=(1-|\xi |)(1+|\xi |)\leq 2(1-|\xi |), \end{equation*} $1-|\xi |^{2}$
 is bounded from below and above by a rescaled $1-|\xi |^{2}$
 is bounded from below and above by a rescaled $1-|\xi |$
. $1-|\xi |$
.
- 
(iii) This inequality is a consequence of (5.1) and (5.2): We have  \begin{align*} \left |\xi \cdot (\xi \cdot \nabla )B \right |(x,t) &= \left | \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right ) - \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right |(x,t) \\[5pt] &\leq C\;\mathrm{dist}(x, \partial{\mathscr{A}}(t))+C\;\mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t)) \\[5pt] &\leq C\;\mathrm{dist}(x, \partial{\mathscr{A}}(t)). \end{align*} \begin{align*} \left |\xi \cdot (\xi \cdot \nabla )B \right |(x,t) &= \left | \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right ) - \xi \cdot \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right |(x,t) \\[5pt] &\leq C\;\mathrm{dist}(x, \partial{\mathscr{A}}(t))+C\;\mathrm{dist}^{2}(x, \partial{\mathscr{A}}(t)) \\[5pt] &\leq C\;\mathrm{dist}(x, \partial{\mathscr{A}}(t)). \end{align*}
- 
(iv) This is the statement of Lemma 2.4(i). 
- 
(v) This is another elementary estimate: With the help of Lemma 2.3(ii), (vi), one computes  \begin{align*} \sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu &\geq \sigma (\nu )-|\xi |\psi (|\xi |)\sigma ( \nu )\\[5pt] &\geq (\!\min _{S^{d-1}}\sigma )\,(1-|\xi |\psi (|\xi |))\\[5pt] &\geq (\!\min _{S^{d-1}}\sigma )\,(1-|\xi |). \end{align*} \begin{align*} \sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu &\geq \sigma (\nu )-|\xi |\psi (|\xi |)\sigma ( \nu )\\[5pt] &\geq (\!\min _{S^{d-1}}\sigma )\,(1-|\xi |\psi (|\xi |))\\[5pt] &\geq (\!\min _{S^{d-1}}\sigma )\,(1-|\xi |). \end{align*}
- 
(vi) follows from the previous two estimates since  \begin{equation*} \xi \cdot (\nu -\xi )=-\frac {1}{2}\left (1-2\,\nu \cdot \xi +|\xi |^{2}\right ) + \frac {1}{2}\left (1-|\xi |^{2}\right )=-\frac {1}{2}|\nu - \xi |^{2} + \frac {1}{2}\left (1-|\xi |^{2}\right ). \end{equation*} \begin{equation*} \xi \cdot (\nu -\xi )=-\frac {1}{2}\left (1-2\,\nu \cdot \xi +|\xi |^{2}\right ) + \frac {1}{2}\left (1-|\xi |^{2}\right )=-\frac {1}{2}|\nu - \xi |^{2} + \frac {1}{2}\left (1-|\xi |^{2}\right ). \end{equation*}
Lemma 5.5. 
Every strong solution 
 $\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 to anisotropic mean curvature flow (
1.1
) that consists of nonempty open proper subsets of
$\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 to anisotropic mean curvature flow (
1.1
) that consists of nonempty open proper subsets of 
 $\Omega$
 admits a gradient flow calibration
$\Omega$
 admits a gradient flow calibration 
 $(\xi, B, \vartheta )$
.
$(\xi, B, \vartheta )$
.
Proof. There exists a positive 
 $\delta \gt 0$
 such that in the neighborhood
$\delta \gt 0$
 such that in the neighborhood
 \begin{equation*} U\;:\!=\;\bigcup _{t \in [0,T]}\left (B_{\delta }(\partial {\mathscr {A}}(t))\times \{t\}\right ), \end{equation*}
\begin{equation*} U\;:\!=\;\bigcup _{t \in [0,T]}\left (B_{\delta }(\partial {\mathscr {A}}(t))\times \{t\}\right ), \end{equation*}
the signed distance function 
 $\mathrm{sdist}\;:\; U \to (-\delta, \delta )$
 and the orthogonal projection
$\mathrm{sdist}\;:\; U \to (-\delta, \delta )$
 and the orthogonal projection
 \begin{equation*}p\;:\; U\to \bigcup _{t \in [0,T]}\left (\partial {\mathscr {A}}(t)\times \{t\}\right )\end{equation*}
\begin{equation*}p\;:\; U\to \bigcup _{t \in [0,T]}\left (\partial {\mathscr {A}}(t)\times \{t\}\right )\end{equation*}
with respect to 
 $\partial{\mathscr{A}}(t)$
 are well-defined and regular (see [Reference Gilbarg and Trudinger34, Lemmas 14.16, 14.17]). We use the sign convention that
$\partial{\mathscr{A}}(t)$
 are well-defined and regular (see [Reference Gilbarg and Trudinger34, Lemmas 14.16, 14.17]). We use the sign convention that 
 $\mathrm{sdist}(x,t)\lt 0$
 for
$\mathrm{sdist}(x,t)\lt 0$
 for 
 $x \in{\mathscr{A}}(t)\cap B_{\delta }(\partial{\mathscr{A}}(t))$
.
$x \in{\mathscr{A}}(t)\cap B_{\delta }(\partial{\mathscr{A}}(t))$
.
 Let 
 $\zeta \in C_{c}^{\infty }((-\delta,\delta ))$
 be a cutoff function such that
$\zeta \in C_{c}^{\infty }((-\delta,\delta ))$
 be a cutoff function such that 
 $\zeta (s)=1-s^{2}$
 for
$\zeta (s)=1-s^{2}$
 for 
 $|s|\leq \frac{\delta }{2}$
 and
$|s|\leq \frac{\delta }{2}$
 and 
 $s\zeta ^{\prime }(s)\leq 0$
 on
$s\zeta ^{\prime }(s)\leq 0$
 on 
 $(-\delta,\delta )$
. Furthermore, we define another truncation
$(-\delta,\delta )$
. Furthermore, we define another truncation 
 $f \in C^{\infty }({\mathbb{R}})$
 such that
$f \in C^{\infty }({\mathbb{R}})$
 such that 
 $f(s)=s$
 for
$f(s)=s$
 for 
 $|s|\leq \frac{\delta }{2}$
,
$|s|\leq \frac{\delta }{2}$
, 
 $f(s)={\mathrm{sgn}}(s)\delta$
 for
$f(s)={\mathrm{sgn}}(s)\delta$
 for 
 $|s|\geq \frac{3}{4}\delta$
, and
$|s|\geq \frac{3}{4}\delta$
, and 
 $f^{\prime }\geq 0$
. Let now
$f^{\prime }\geq 0$
. Let now
 \begin{equation*} \xi (x,t)\;:\!=\; \zeta (\mathrm {sdist}(x,t))\nabla \mathrm {sdist}(x,t). \end{equation*}
\begin{equation*} \xi (x,t)\;:\!=\; \zeta (\mathrm {sdist}(x,t))\nabla \mathrm {sdist}(x,t). \end{equation*}
Second, we define 
 $\vartheta \;:\!=\; f\circ\!\mathrm{sdist}$
 on
$\vartheta \;:\!=\; f\circ\!\mathrm{sdist}$
 on 
 $U$
, which can be extended locally constantly to
$U$
, which can be extended locally constantly to 
 $\Omega \times [0,T]$
. Third, let
$\Omega \times [0,T]$
. Third, let
 \begin{equation} B(x,t)=-\mu (\xi (x,t))\mathrm{div} \left (D\sigma (\nabla \mathrm{sdist}(\cdot,t))\right )\big |_{p(x,t)}\xi (x,t) \quad \text{for } (x,t)\in U, \end{equation}
\begin{equation} B(x,t)=-\mu (\xi (x,t))\mathrm{div} \left (D\sigma (\nabla \mathrm{sdist}(\cdot,t))\right )\big |_{p(x,t)}\xi (x,t) \quad \text{for } (x,t)\in U, \end{equation}
which can be extended to 
 $\Omega \times [0,T]$
 by zero using a cutoff function.
$\Omega \times [0,T]$
 by zero using a cutoff function.
 To show that 
 $(\xi, B, \vartheta )$
 is a gradient flow calibration for
$(\xi, B, \vartheta )$
 is a gradient flow calibration for 
 $\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 as in Definition 5.3, we rely on a generic equation for the signed distance of a smoothly evolving surface with normal velocity vector
$\{{\mathscr{A}}(t)\}_{t\in [0,T]}$
 as in Definition 5.3, we rely on a generic equation for the signed distance of a smoothly evolving surface with normal velocity vector 
 $B$
, valid in the neighborhood
$B$
, valid in the neighborhood 
 $U$
. Precisely, for a smoothly evolving surface, we have
$U$
. Precisely, for a smoothly evolving surface, we have
 \begin{equation} \partial _t \mathrm{sdist}(x,t) + B(p(x,t),t)\cdot \nabla \mathrm{sdist}(x,t) = 0 \qquad \text{ for all }(x,t)\in U. \end{equation}
\begin{equation} \partial _t \mathrm{sdist}(x,t) + B(p(x,t),t)\cdot \nabla \mathrm{sdist}(x,t) = 0 \qquad \text{ for all }(x,t)\in U. \end{equation}
Supposing (5.10), we may differentiate this equation in space and replace 
 $\nabla \mathrm{sdist}$
 by
$\nabla \mathrm{sdist}$
 by 
 $\xi$
 when it makes an explicit appearance but also in
$\xi$
 when it makes an explicit appearance but also in 
 $B$
 (recalling (5.9)) to recover (5.1); note the error
$B$
 (recalling (5.9)) to recover (5.1); note the error 
 $O(\mathrm{dist}(x,\partial{\mathscr{A}}(t)))$
 comes from the replacement of
$O(\mathrm{dist}(x,\partial{\mathscr{A}}(t)))$
 comes from the replacement of 
 $\nabla ^2 \mathrm{sdist}$
 by
$\nabla ^2 \mathrm{sdist}$
 by 
 $\nabla \xi$
 and
$\nabla \xi$
 and 
 $\partial _t (\nabla \, \mathrm{sdist})$
. Unsurprisingly, given the definition of
$\partial _t (\nabla \, \mathrm{sdist})$
. Unsurprisingly, given the definition of 
 $\vartheta$
 above and (5.10), we immediately obtain (5.3). To recover (5.2), we note that
$\vartheta$
 above and (5.10), we immediately obtain (5.3). To recover (5.2), we note that 
 $|\xi | \equiv 1$
 on
$|\xi | \equiv 1$
 on 
 $\cup _{t\in [0,T]}\left (\partial{\mathscr{A}}(t)\times \{t\}\right )$
 so that
$\cup _{t\in [0,T]}\left (\partial{\mathscr{A}}(t)\times \{t\}\right )$
 so that
 \begin{equation*}(\partial _t + B(p(x,t),t)\cdot \nabla )|\xi |^2(x,t) = 0 \qquad \text {for all }x\in \partial {\mathscr {A}}(t) .\end{equation*}
\begin{equation*}(\partial _t + B(p(x,t),t)\cdot \nabla )|\xi |^2(x,t) = 0 \qquad \text {for all }x\in \partial {\mathscr {A}}(t) .\end{equation*}
One can then explicitly verify that
 \begin{equation*}\xi \cdot \nabla \left ((\partial _t + B(p(x,t),t)\cdot \nabla )|\xi |^2\right )(x,t) = 0 \qquad \text {for all }x\in \partial {\mathscr {A}}(t),\end{equation*}
\begin{equation*}\xi \cdot \nabla \left ((\partial _t + B(p(x,t),t)\cdot \nabla )|\xi |^2\right )(x,t) = 0 \qquad \text {for all }x\in \partial {\mathscr {A}}(t),\end{equation*}
which allows one to recover the quadratic error in (5.2). Finally, the remaining properties of the calibration are easily verified by the choice of cutoff functions.
 We briefly outline how to prove (5.10) at a space-time point 
 $(x,t)\in U$
. Suppose first that
$(x,t)\in U$
. Suppose first that 
 $x\not \in{\mathscr{A}}(t)$
 and that surface velocity
$x\not \in{\mathscr{A}}(t)$
 and that surface velocity 
 $B(x,t) \;:\!=\; B(p(x,t),t)$
 (a hopefully forgivable abuse of notation) points from the interface in the direction of
$B(x,t) \;:\!=\; B(p(x,t),t)$
 (a hopefully forgivable abuse of notation) points from the interface in the direction of 
 $x$
. Straightforward geometric reasoning on the line segment
$x$
. Straightforward geometric reasoning on the line segment 
 $x + \mathbb{R} \nabla \mathrm{sdist}(x,t)$
 then shows that
$x + \mathbb{R} \nabla \mathrm{sdist}(x,t)$
 then shows that
 \begin{equation*}\partial _t\; \mathrm {sdist}(x,t)\leq -B(x,t)\cdot \nabla\; \mathrm {sdist}(x,t).\end{equation*}
\begin{equation*}\partial _t\; \mathrm {sdist}(x,t)\leq -B(x,t)\cdot \nabla\; \mathrm {sdist}(x,t).\end{equation*}
Supposing by contradiction that the previous inequality is strict, we have
 \begin{equation} \frac{\mathrm{sdist}(x,t+\varepsilon ) - \mathrm{sdist}(x,t)}{\varepsilon } \lt -B(x,t) \cdot \nabla \mathrm{sdist} (x,t) - \eta, \end{equation}
\begin{equation} \frac{\mathrm{sdist}(x,t+\varepsilon ) - \mathrm{sdist}(x,t)}{\varepsilon } \lt -B(x,t) \cdot \nabla \mathrm{sdist} (x,t) - \eta, \end{equation}
for 
 $\varepsilon \gt 0$
 sufficiently small, where
$\varepsilon \gt 0$
 sufficiently small, where 
 $\eta \gt 0$
 is a small fixed constant. Letting
$\eta \gt 0$
 is a small fixed constant. Letting 
 $y_\varepsilon \in \partial{\mathscr{A}}(t+\varepsilon )$
 be such that
$y_\varepsilon \in \partial{\mathscr{A}}(t+\varepsilon )$
 be such that 
 $\mathrm{sdist} (x,t+\varepsilon ) = |x - y_\varepsilon |$
, we let
$\mathrm{sdist} (x,t+\varepsilon ) = |x - y_\varepsilon |$
, we let 
 $\bar y_\varepsilon \;:\!=\; p(y_\varepsilon,t)$
. One may argue by smoothness of the interface evolution and the projection operator that for small enough
$\bar y_\varepsilon \;:\!=\; p(y_\varepsilon,t)$
. One may argue by smoothness of the interface evolution and the projection operator that for small enough 
 $\varepsilon \gt 0$
 (depending on
$\varepsilon \gt 0$
 (depending on 
 $\eta$
), we have
$\eta$
), we have
 \begin{equation} |y_\varepsilon - \bar y_\varepsilon | \leq \varepsilon \left (\!\sup _{\substack{|x_0-p(x,t)|\leq C\varepsilon \\[5pt] |t_0-t|\leq \varepsilon }}|B(x_0,t_0)|\right ) \leq \varepsilon (B(x,t)\cdot \nabla \mathrm{sdist}(x,t) + \eta/2), \end{equation}
\begin{equation} |y_\varepsilon - \bar y_\varepsilon | \leq \varepsilon \left (\!\sup _{\substack{|x_0-p(x,t)|\leq C\varepsilon \\[5pt] |t_0-t|\leq \varepsilon }}|B(x_0,t_0)|\right ) \leq \varepsilon (B(x,t)\cdot \nabla \mathrm{sdist}(x,t) + \eta/2), \end{equation}
where on the right-hand side we used that 
 $B(x,t)\cdot \nabla \mathrm{sdist}(x,t) = |B(x,t)|$
 and
$B(x,t)\cdot \nabla \mathrm{sdist}(x,t) = |B(x,t)|$
 and 
 $C\gt 0$
 is a constant depending only on the smooth interface. Synthesizing (5.11) and (5.12) we have
$C\gt 0$
 is a constant depending only on the smooth interface. Synthesizing (5.11) and (5.12) we have
 \begin{equation*} |x- \bar y_\varepsilon |\leq \mathrm{sdist}(x,t+\varepsilon ) + |y_\varepsilon - \bar y_\varepsilon |\leq \mathrm{sdist}(x,t) - \varepsilon (\eta/2), \end{equation*}
\begin{equation*} |x- \bar y_\varepsilon |\leq \mathrm{sdist}(x,t+\varepsilon ) + |y_\varepsilon - \bar y_\varepsilon |\leq \mathrm{sdist}(x,t) - \varepsilon (\eta/2), \end{equation*}
a contradiction to the definition of 
 $\mathrm{sdist}(x,t).$
 This shows (5.10) at
$\mathrm{sdist}(x,t).$
 This shows (5.10) at 
 $(x,t)$
 under the contingent hypotheses; the other cases are verified similarly (reversing the flow in time when necessary).
$(x,t)$
 under the contingent hypotheses; the other cases are verified similarly (reversing the flow in time when necessary).
5.2 A Grönwall-type stability estimate
 We wish to prove Theorem 5.2 by deriving a Grönwall-type estimate for a suitable quantity. A straightforward way to measure the difference between the calibrated evolution 
 ${\mathscr{A}}(t)$
 and the weak solution
${\mathscr{A}}(t)$
 and the weak solution 
 $A(t)$
 (
$A(t)$
 (
 $\chi _{A(t)}$
 satisfying Definition 2.8) at a given time
$\chi _{A(t)}$
 satisfying Definition 2.8) at a given time 
 $t \in [0,T]$
 is the bulk error
$t \in [0,T]$
 is the bulk error
 \begin{equation*} {\mathscr {B}\left [\chi (t)\big |\vartheta (t)\right ]}\;:\!=\;\int _{A(t)\triangle \mathscr {A}(t)}|\vartheta (x,t)|dx. \end{equation*}
\begin{equation*} {\mathscr {B}\left [\chi (t)\big |\vartheta (t)\right ]}\;:\!=\;\int _{A(t)\triangle \mathscr {A}(t)}|\vartheta (x,t)|dx. \end{equation*}
Since 
 $|\vartheta (\cdot, t)|$
 is strictly positive outside
$|\vartheta (\cdot, t)|$
 is strictly positive outside 
 $\partial{\mathscr{A}}(t)$
, and hence almost everywhere in
$\partial{\mathscr{A}}(t)$
, and hence almost everywhere in 
 $\mathbb{R}^d$
 this bulk error vanishes if and only if
$\mathbb{R}^d$
 this bulk error vanishes if and only if 
 $|{\mathscr{A}}(t)\triangle A(t)|=0$
. However, the available stability estimate for the bulk error is not strong enough to apply Grönwall’s lemma immediately:
$|{\mathscr{A}}(t)\triangle A(t)|=0$
. However, the available stability estimate for the bulk error is not strong enough to apply Grönwall’s lemma immediately:
Lemma 5.6. 
Let 
 ${\mathscr{A}(t)}_{t \in [0,T]}$
 be a solution of anisotropic mean curvature flow (
1.1
) that is calibrated in the sense of Definition 5.3
. Further, let
${\mathscr{A}(t)}_{t \in [0,T]}$
 be a solution of anisotropic mean curvature flow (
1.1
) that is calibrated in the sense of Definition 5.3
. Further, let 
 $\{A(t)\}_{t\in [0,T]}$
 be time parametrized collection of sets with
$\{A(t)\}_{t\in [0,T]}$
 be time parametrized collection of sets with 
 $\chi \;:\!=\;\chi _{A}$
 a distributional solution of anisotropic mean curvature flow as in Definition 2.8
. Recalling the definition of
$\chi \;:\!=\;\chi _{A}$
 a distributional solution of anisotropic mean curvature flow as in Definition 2.8
. Recalling the definition of 
 $\mathscr{E}\left [\cdot \big |\cdot \right ]$
 in (
4.28
) (with
$\mathscr{E}\left [\cdot \big |\cdot \right ]$
 in (
4.28
) (with 
 $c_0 = 1$
), the following holds:
$c_0 = 1$
), the following holds:
- 
(i) The bulk error  $\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]$
 at an arbitrary time $\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]$
 at an arbitrary time ${T^{\prime }} \in [0,T]$
 is given by ${T^{\prime }} \in [0,T]$
 is given by \begin{align*}{\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}&={\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]}+\int _{0}^{{T^{\prime }}}\int _{\Omega }\left (\chi _{A(t)}-\chi _{\mathscr{A}(t)}\right )\left (\partial _{t}\vartheta +(B\cdot \nabla )\vartheta \right )dxdt\\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{\Omega }\left (\chi _{A(t)}-\chi _{\mathscr{A}(t)}\right )\vartheta \mathrm{div} B\, dx dt \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\vartheta B\cdot (\xi -\nu )\,d{\mathcal{H}^{d-1}} dt \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\vartheta (V-B\cdot \xi )\,d{\mathcal{H}^{d-1}} dt. \end{align*} \begin{align*}{\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}&={\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]}+\int _{0}^{{T^{\prime }}}\int _{\Omega }\left (\chi _{A(t)}-\chi _{\mathscr{A}(t)}\right )\left (\partial _{t}\vartheta +(B\cdot \nabla )\vartheta \right )dxdt\\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{\Omega }\left (\chi _{A(t)}-\chi _{\mathscr{A}(t)}\right )\vartheta \mathrm{div} B\, dx dt \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\vartheta B\cdot (\xi -\nu )\,d{\mathcal{H}^{d-1}} dt \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\vartheta (V-B\cdot \xi )\,d{\mathcal{H}^{d-1}} dt. \end{align*}
- 
(ii) For every  $\delta \gt 0$
, there exists a constant $\delta \gt 0$
, there exists a constant $C(\delta )\gt 0$
, which also depends on the calibrated evolution, such that
(5.13)for all $C(\delta )\gt 0$
, which also depends on the calibrated evolution, such that
(5.13)for all \begin{align} {\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}&\leq{\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]} + C(\delta ) \int _{0}^{{T^{\prime }}}\left ({\mathscr{B}\left [\chi (t)\big |\vartheta (t)\right ]}+{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}\right )dt\nonumber \\[5pt] &+ \delta \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt \end{align} \begin{align} {\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}&\leq{\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]} + C(\delta ) \int _{0}^{{T^{\prime }}}\left ({\mathscr{B}\left [\chi (t)\big |\vartheta (t)\right ]}+{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}\right )dt\nonumber \\[5pt] &+ \delta \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt \end{align} ${T^{\prime }} \in [0,T]$
. ${T^{\prime }} \in [0,T]$
.
Proof. See [Reference Hensel and Laux35, Sections 4.2, 4.3], where the argument is carried out for isotropic mean curvature flow. The same argument applies in our anisotropic setting since the definition of the bulk error functional has remained unchanged.
To compensate for the additional error term on the right-hand side of (5.13), we make use of another stability estimate for the relative entropy:
Lemma 5.7. 
Let the hypotheses of Lemma 5.6 hold. For all 
 ${T^{\prime }} \in [0,T]$
, we have
${T^{\prime }} \in [0,T]$
, we have
 \begin{align} {\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+{ C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt}\nonumber \\[5pt] &\quad - \frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt. \end{align}
\begin{align} {\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+{ C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt}\nonumber \\[5pt] &\quad - \frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt. \end{align}
A combination of the two stability estimates yields
 \begin{align*}{\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}+{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]}+{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}\\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}\left ({\mathscr{B}\left [\chi (t)\big |\vartheta (t)\right ]}+{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}\right )dt. \end{align*}
\begin{align*}{\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}+{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{B}\left [\chi (0)\big |\vartheta (0)\right ]}+{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}\\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}\left ({\mathscr{B}\left [\chi (t)\big |\vartheta (t)\right ]}+{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}\right )dt. \end{align*}
In particular, it follows by Grönwall’s lemma that 
 ${\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}=0$
 for all
${\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta ({T^{\prime }})\right ]}=0$
 for all 
 ${T^{\prime }} \in [0,T]$
 if
${T^{\prime }} \in [0,T]$
 if 
 ${\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta (0)\right ]}+{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi (0)\right ]}=0$
, which completes the proof of Theorem 5.2.
${\mathscr{B}\left [\chi ({T^{\prime }})\big |\vartheta (0)\right ]}+{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi (0)\right ]}=0$
, which completes the proof of Theorem 5.2.
5.3 Stability of the relative entropy
The goal of this subsection is to prove Lemma 5.7.
 With the help of the divergence theorem and the surface energy (1.2) with 
 $c_0 = 1$
, one can rewrite the relative entropy functional as
$c_0 = 1$
, one can rewrite the relative entropy functional as
 \begin{equation*} {\mathscr {E}\left [\chi (t)\big |\xi (t)\right ]}=E[\chi (t)]-\int _{A(t)}\mathrm {div}\left (|\xi |\psi (|\xi |)\,D\sigma (\xi )\right )dx, \end{equation*}
\begin{equation*} {\mathscr {E}\left [\chi (t)\big |\xi (t)\right ]}=E[\chi (t)]-\int _{A(t)}\mathrm {div}\left (|\xi |\psi (|\xi |)\,D\sigma (\xi )\right )dx, \end{equation*}
which using the distributional formulation of the time derivative from (2.19) leads to
 \begin{align*}{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&={\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+E[A({T^{\prime }})]-E[A(0)]\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \mathrm{div}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )V d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\\[5pt] &\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}V^{2}d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \mathrm{div}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )V d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt. \end{align*}
\begin{align*}{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&={\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+E[A({T^{\prime }})]-E[A(0)]\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \mathrm{div}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )V d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\\[5pt] &\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}V^{2}d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \mathrm{div}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )V d{\mathcal{H}^{d-1}} dt\\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt. \end{align*}
Note, in the last step, we used the optimal energy dissipation inequality (2.20) for the weak solution 
 $\chi$
. We introduce the notation
$\chi$
. We introduce the notation 
 $F(\xi )=|\xi |\psi (|\xi |)D\sigma (\xi )$
 and
$F(\xi )=|\xi |\psi (|\xi |)D\sigma (\xi )$
 and 
 $M(\xi )\;:\!=\;D_{\xi }F(\xi )=|\xi |\psi (|\xi |)\,D^{2}\sigma (\xi )+\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )D\sigma (\xi )\otimes \xi$
 and complete squares three times to write
$M(\xi )\;:\!=\;D_{\xi }F(\xi )=|\xi |\psi (|\xi |)\,D^{2}\sigma (\xi )+\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )D\sigma (\xi )\otimes \xi$
 and complete squares three times to write
 \begin{align} \mathscr{E}&\left [\chi ({T^{\prime }}) \big |\xi ({T^{\prime }})\right ]\nonumber \\[5pt] &\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]} + \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (-\left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}\vphantom{-\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}V \right |^{2}+\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{-\left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}}-\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}V \right |^{2}+\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}\right )d{\mathcal{H}^{d-1}} dt &\quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt. \end{align}
\begin{align} \mathscr{E}&\left [\chi ({T^{\prime }}) \big |\xi ({T^{\prime }})\right ]\nonumber \\[5pt] &\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]} + \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (-\left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}\vphantom{-\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}V \right |^{2}+\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}}\right .\nonumber \\[5pt] &\hspace{8.5pt}\left .\vphantom{-\left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}}-\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}V \right |^{2}+\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}\right )d{\mathcal{H}^{d-1}} dt &\quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt. \end{align}
The second square can be trivially estimated. We will now deal with the other squared terms as well as the remaining integrals separately:
 The first square will later be used to compensate for a term in the stability estimate of the bulk error. To this end, it will be useful to estimate the term with the help of the inequality 
 $-a^{2}\leq -\frac{1}{2}(a+b)^{2}+b^{2}$
 and (4.30):
$-a^{2}\leq -\frac{1}{2}(a+b)^{2}+b^{2}$
 and (4.30):
 \begin{align} -\frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}& \left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\frac{1}{\sqrt{\mu (\nu )}}B\cdot (\nu -\xi ) \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |V-B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \frac{1}{2\min _{S^{d-1}}\mu }\|B\|_{C^{0}}^{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\nu -\xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |V-B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
\begin{align} -\frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}& \left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\frac{1}{\sqrt{\mu (\nu )}}V-\frac{1}{\sqrt{\mu (\nu )}}B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\frac{1}{\sqrt{\mu (\nu )}}B\cdot (\nu -\xi ) \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |V-B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \frac{1}{2\min _{S^{d-1}}\mu }\|B\|_{C^{0}}^{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |\nu -\xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\leq -\frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left |V-B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
 Similarly, for the third square, the inequality 
 $a^{2}\leq 2(a-b)^{2}+2b^{2}$
 (applied twice), the Lipschitz continuity of
$a^{2}\leq 2(a-b)^{2}+2b^{2}$
 (applied twice), the Lipschitz continuity of 
 $\mu$
, the compatibility condition (5.4), and finally (4.30) yield
$\mu$
, the compatibility condition (5.4), and finally (4.30) yield
 \begin{align} \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}&\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \leq \frac{1}{2\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\nu )\mathrm{div}(F(\xi ))+B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \leq \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\nu )\mathrm{div}(F(\xi ))+B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \quad + \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |B\cdot (\nu -\xi )\right |^{2}d{\mathcal{H}^{d-1}} dt\\[5pt] & \leq \frac{2}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\xi )\mathrm{div}(F(\xi ))+B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \quad + \frac{2}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |(\mu (\nu )-\mu (\xi ))M(\xi ):\nabla \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \\ & \quad + \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |B\cdot (\nu -\xi )\right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber\\[5pt]&\leq C\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\min \{1, \mathrm{dist}^{2}(\cdot,{\partial ^{*}}{\mathscr{A}}(t)) \} d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|\nu -\xi |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\leq C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
\begin{align} \frac{1}{2}\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}&\left |\sqrt{\mu (\nu )}\mathrm{div}(F(\xi ))+\frac{1}{\sqrt{\mu (\nu )}}B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \leq \frac{1}{2\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\nu )\mathrm{div}(F(\xi ))+B\cdot \nu \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \leq \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\nu )\mathrm{div}(F(\xi ))+B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \quad + \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |B\cdot (\nu -\xi )\right |^{2}d{\mathcal{H}^{d-1}} dt\\[5pt] & \leq \frac{2}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |\mu (\xi )\mathrm{div}(F(\xi ))+B\cdot \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] & \quad + \frac{2}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |(\mu (\nu )-\mu (\xi ))M(\xi ):\nabla \xi \right |^{2}d{\mathcal{H}^{d-1}} dt \\ & \quad + \frac{1}{\min _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left |B\cdot (\nu -\xi )\right |^{2}d{\mathcal{H}^{d-1}} dt\nonumber\\[5pt]&\leq C\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\min \{1, \mathrm{dist}^{2}(\cdot,{\partial ^{*}}{\mathscr{A}}(t)) \} d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\quad + C\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|\nu -\xi |^{2}d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\leq C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
It remains to show that
 \begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt \Bigg |\nonumber \\[5pt] &\qquad \qquad \leq C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
\begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt \Bigg |\nonumber \\[5pt] &\qquad \qquad \leq C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
The third integral on the left-hand side can be expanded in a way that resembles the approximate evolution equations (5.1) and (5.2):
 \begin{align} \int _{0}^{{T^{\prime }}}&\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt = \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} (\nu \otimes \partial _{t}\xi ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &= \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left ((\nu -\xi ) \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right )\right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad +\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\xi \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\nu \otimes (B\cdot \nabla )\xi \right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) d{\mathcal{H}^{d-1}} dt. \end{align}
\begin{align} \int _{0}^{{T^{\prime }}}&\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt = \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} (\nu \otimes \partial _{t}\xi ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &= \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left ((\nu -\xi ) \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi + (\nabla B){^{T}}\xi \right )\right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad +\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\xi \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\nu \otimes (B\cdot \nabla )\xi \right ) \;:\; M(\xi )\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) d{\mathcal{H}^{d-1}} dt. \end{align}
Here, the first two integrals in the right-hand side expression are already in a suitable form: For the first integral this can be seen directly from (5.1), whereas for the second term a computation yields
 \begin{align*} \left (\xi \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right ) \;:\; M(\xi )&=|\xi |\psi (|\xi |)\,\xi \cdot D^{2}\sigma (\xi )\left (\partial _{t}\xi + \left (B\cdot \nabla \right )\xi \right )\\[5pt] &\quad + \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )(D\sigma (\xi ) \cdot \xi )\left (\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi )\right )\\[5pt] &=|\xi |\psi (|\xi |)\left (\partial _{t}\xi + \left (B\cdot \nabla \right )\xi \right ) \cdot D^{2}\sigma (\xi )\xi \\[5pt] &\quad + \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\sigma (\xi )\,\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi )\\[5pt] &= \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\sigma (\xi )\,\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi ), \end{align*}
\begin{align*} \left (\xi \otimes \left (\partial _{t}\xi + (B\cdot \nabla )\xi \right )\right ) \;:\; M(\xi )&=|\xi |\psi (|\xi |)\,\xi \cdot D^{2}\sigma (\xi )\left (\partial _{t}\xi + \left (B\cdot \nabla \right )\xi \right )\\[5pt] &\quad + \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )(D\sigma (\xi ) \cdot \xi )\left (\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi )\right )\\[5pt] &=|\xi |\psi (|\xi |)\left (\partial _{t}\xi + \left (B\cdot \nabla \right )\xi \right ) \cdot D^{2}\sigma (\xi )\xi \\[5pt] &\quad + \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\sigma (\xi )\,\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi )\\[5pt] &= \left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\sigma (\xi )\,\xi \cdot (\partial _{t}\xi +(B\cdot \nabla )\xi ), \end{align*}
so that one can invoke (5.2). Here we have used a fact that follows from the positive 
 $0$
-homogeneity of
$0$
-homogeneity of 
 $D\sigma$
, namely that
$D\sigma$
, namely that 
 $D^{2}\sigma (\xi )\xi = \frac{d}{ds}\Big |_{s=0}D\sigma (\mathrm{e}^{s}\xi )=\frac{d}{ds}\Big |_{s=0}D\sigma (\xi )=0$
.
$D^{2}\sigma (\xi )\xi = \frac{d}{ds}\Big |_{s=0}D\sigma (\mathrm{e}^{s}\xi )=\frac{d}{ds}\Big |_{s=0}D\sigma (\xi )=0$
.
Furthermore, an application of the chain rule shows that
 \begin{equation*} (\nu \otimes (B\cdot \nabla )\xi )\;:\;M(\xi )=\nu \cdot (B\cdot \nabla )(F(\xi )), \end{equation*}
\begin{equation*} (\nu \otimes (B\cdot \nabla )\xi )\;:\;M(\xi )=\nu \cdot (B\cdot \nabla )(F(\xi )), \end{equation*}
and we will from now on use this slightly shorter formulation for the third right-hand side integral of (5.19).
By using (5.19) and plugging in the computations for the three right-hand side integrals as well as the weak formulation of anisotropic mean curvature flow in (2.19), we obtain
 \begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \leq \Bigg | - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right )d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \quad +C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
\begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \leq \Bigg | - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right )d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \quad +C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
It is now advisable to expand the first right-hand side integral and to add zero in order to isolate two more errors controlled by the time-integrated relative entropy:
 \begin{align} - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}&\nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right )d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &=- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\sigma (\nu )\mathrm{div} B\; d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\nu )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\\[5pt] &=- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\sigma (\nu )-F(\xi )\cdot \nu \right )\mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\nu -\xi \right ) \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt \\ &\quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\xi \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt. \end{align}
\begin{align} - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}&\nabla B \;:\; \left (\sigma (\nu )I_{d}-\nu \otimes D\sigma (\nu ) \right )d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &=- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\sigma (\nu )\mathrm{div} B\; d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\nu )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\\[5pt] &=- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\sigma (\nu )-F(\xi )\cdot \nu \right )\mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\left (\nu -\xi \right ) \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt \\ &\quad - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\xi \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt. \end{align}
 The first two integrals are controlled by 
 $\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt$
; in the case of the second integral this follows from the local Lipschitz continuity of
$\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt$
; in the case of the second integral this follows from the local Lipschitz continuity of 
 $F$
.
$F$
.
We approach the last integral in (5.21) by an application of Taylor’s theorem and show that it cancels with the second to last integral in (5.20). Indeed, one computes that
 \begin{align} \xi \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right )& B - \left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) \nonumber \\[5pt] &=\xi \cdot \left ((M(\xi )(\nu -\xi ))\cdot \nabla \right ) B - \xi \cdot (\nabla B)M(\xi ){^{T}}(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\xi \cdot (\nabla B)\left (M(\xi )-M(\xi ){^{T}} \right )(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\xi \cdot (\nabla B)\left ( D\sigma (\xi )\otimes \xi - \xi \otimes D\sigma (\xi )\right )(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\left (\xi \cdot (\nabla B)D\sigma (\xi )\right )\xi \cdot (\nu - \xi ) \nonumber \\[5pt] &\quad -\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\left (D\sigma (\xi )\cdot (\nu -\xi )\right )\xi \cdot (\xi \cdot \nabla )B \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B, \end{align}
\begin{align} \xi \cdot \left ((F(\nu )-F(\xi ))\cdot \nabla \right )& B - \left (\xi \otimes (\nu - \xi )\right ) \;:\; \left ((\nabla B)M(\xi ){^{T}}\right ) \nonumber \\[5pt] &=\xi \cdot \left ((M(\xi )(\nu -\xi ))\cdot \nabla \right ) B - \xi \cdot (\nabla B)M(\xi ){^{T}}(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\xi \cdot (\nabla B)\left (M(\xi )-M(\xi ){^{T}} \right )(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\xi \cdot (\nabla B)\left ( D\sigma (\xi )\otimes \xi - \xi \otimes D\sigma (\xi )\right )(\nu - \xi ) \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B\nonumber \\[5pt] &=\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\left (\xi \cdot (\nabla B)D\sigma (\xi )\right )\xi \cdot (\nu - \xi ) \nonumber \\[5pt] &\quad -\left (\frac{\psi (|\xi |)}{|\xi |}+\psi ^{\prime }(|\xi |)\right )\left (D\sigma (\xi )\cdot (\nu -\xi )\right )\xi \cdot (\xi \cdot \nabla )B \nonumber \\[5pt] &\quad + \xi \cdot \left (\int _{0}^{1}(1-r)\left ((\nu -\xi )\cdot \nabla \right )M(r\nu + (1-r)\xi )(\nu -\xi )dr \cdot \nabla \right )B, \end{align}
where now each summand is controlled by 
 $\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu$
 by Lemma 5.4 (iii) and (vi). Here we use that
$\sigma (\nu )-|\xi |\psi (|\xi |)D\sigma (\xi )\cdot \nu$
 by Lemma 5.4 (iii) and (vi). Here we use that 
 $\sigma \in C^{3}\big ({\mathbb{R}}^{d}\setminus \{0\}\big )$
.
$\sigma \in C^{3}\big ({\mathbb{R}}^{d}\setminus \{0\}\big )$
.
Plugging in (5.21) and (5.22) into (5.20) yields
 \begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\Bigg | \\ &\qquad \qquad =\Bigg | - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \quad +C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
\begin{align} &\Bigg | \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\frac{1}{\mu (\nu )}VB\cdot \nu d{\mathcal{H}^{d-1}} dt \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \partial _{t}\left (|\xi |\psi (|\xi |)\,D \sigma (\xi )\right )\cdot \nu d{\mathcal{H}^{d-1}} dt\Bigg | \\ &\qquad \qquad =\Bigg | - \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad \quad -\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt\Bigg |\nonumber \\[5pt] &\qquad \qquad \quad +C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt. \end{align}
The four remaining surface integrals can be written as one integral involving the divergence of a matrix field since
 \begin{equation*} \mathrm {div}\left (B\otimes F(\xi )-F(\xi )\otimes B\right )=\mathrm {div} (F(\xi ))B+(F(\xi )\cdot \nabla )B-\mathrm {div} (B)F(\xi ) - (B\cdot \nabla )(F(\xi )). \end{equation*}
\begin{equation*} \mathrm {div}\left (B\otimes F(\xi )-F(\xi )\otimes B\right )=\mathrm {div} (F(\xi ))B+(F(\xi )\cdot \nabla )B-\mathrm {div} (B)F(\xi ) - (B\cdot \nabla )(F(\xi )). \end{equation*}
As a result of an integration by parts and the symmetry relation 
 $\mathrm{div}(\mathrm{div}(a\otimes b))= \mathrm{div}(\mathrm{div}(b\otimes a))$
, one can then see that
$\mathrm{div}(\mathrm{div}(a\otimes b))= \mathrm{div}(\mathrm{div}(b\otimes a))$
, one can then see that
 \begin{align} &- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu\; \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+ \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] & + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &-\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\qquad \qquad = \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \mathrm{div}\left (B\otimes F(\xi )-F(\xi )\otimes B\right ) d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad = \int _{0}^{{T^{\prime }}}\int _{A(t)}\mathrm{div}\left (\mathrm{div}\left (B\otimes F(\xi )-F(\xi )\otimes B \right )\right )dx dt\nonumber \\[5pt] &\qquad \qquad =0. \end{align}
\begin{align} &- \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} F(\xi )\cdot \nu\; \mathrm{div} B\, d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &+ \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \left (F(\xi )\cdot \nabla \right ) B \,d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] & + \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\mathrm{div}(F(\xi ))B\cdot \nu d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &-\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)} \nu \cdot (B\cdot \nabla )\left (F(\xi )\right ) d{\mathcal{H}^{d-1}} dt \nonumber \\[5pt] &\qquad \qquad = \int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}\nu \cdot \mathrm{div}\left (B\otimes F(\xi )-F(\xi )\otimes B\right ) d{\mathcal{H}^{d-1}} dt\nonumber \\[5pt] &\qquad \qquad = \int _{0}^{{T^{\prime }}}\int _{A(t)}\mathrm{div}\left (\mathrm{div}\left (B\otimes F(\xi )-F(\xi )\otimes B \right )\right )dx dt\nonumber \\[5pt] &\qquad \qquad =0. \end{align}
Plugging in (5.24) into (5.23) yields (5.18).
In a last step, plugging in (5.16), (5.17) and (5.18) into (5.15) yields
 \begin{align*}{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+{ C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt}\\[5pt] &\quad - \frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt. \end{align*}
\begin{align*}{\mathscr{E}\left [\chi ({T^{\prime }})\big |\xi ({T^{\prime }})\right ]}&\leq{\mathscr{E}\left [\chi (0)\big |\xi (0)\right ]}+{ C\int _{0}^{{T^{\prime }}}{\mathscr{E}\left [\chi (t)\big |\xi (t)\right ]}dt}\\[5pt] &\quad - \frac{1}{4\max _{S^{d-1}}\mu }\int _{0}^{{T^{\prime }}}\int _{{\partial ^{*}} A(t)}|V-B\cdot \xi |^{2}d{\mathcal{H}^{d-1}} dt. \end{align*}
This concludes the proof of Lemma 5.7.
6. Conclusion
In this paper, we began by constructing solutions of the anisotropic Allen–Cahn equation using relatively elementary arguments, relying on convexity for instance, for a naturally associated minimizing movements scheme. With this, we showed that these solutions are precompact in an appropriate functional space and, as the interface width vanishes, converge to a solution of anisotropic mean curvature flow. In contrast to previous methods, our approach relies on control of a relative entropy, which quantifies the distance between the sharp interface and smooth interface coming from the approximation. Having access to the relative entropy naturally allows for further understanding of the BV-solution concept associated with the anisotropic curvature flow. Precisely, we proved that solutions of the anisotropic mean curvature flow, defined in terms of a distributional formulation of the curvature and an optimal energy dissipation relation, actually possess a weak–strong uniqueness property: meaning that when classical, smooth solutions exist, the weak solution with the same initial condition coincides with the smooth solution. Future questions will involve further investigation of convergence in the multiphase setting and obtaining quantitative convergence rates.
Competing interests
None.
Acknowledgements
The present paper is an extension of the third author’s master’s thesis at the University of Bonn.
Financial Support
This project had received funding from the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany’s Excellence Strategy – EXC-2047/1 – 390685813 and the Graduiertenkolleg (Research Training Group) 2339 “Interfaces, Complex Structures, and Singular Limits in Continuum Mechanics”.
 
  
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
