Asymptotic Expansion of the Homogenized Matrix in Two Weakly Stochastic Homogenization Settings

Ronan Costaouec
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引用次数: 9

Abstract

This article studies some numerical approximations of the homogenized matrix for stochastic linear elliptic partial differential equations in divergence form. We focus on the case when the underlying random field is a small perturbation of a reference periodic tensor. The size of such a perturbation is encoded by a real parameter eta. In this case, it has already been theoretically shown in the literature that the exact homogenized matrix possesses an expansion in powers of the parameter eta for both models considered in this article, the coefficients of which are deterministic. In practice, one cannot manipulate the exact terms of such an expansion. All objects are subjected to a discretization approach. Thus we need to derive a similar expansion for the approximated random homogenized matrix. In contrast to the expansion of the exact homogenized matrix, the expansion of the approximated homogenized matrix contains intrinsically random coefficients. In particular, the second order term is random in nature. The purpose of this work is to derive and study this expansion in function of the parameters of the approximation procedure (size of the truncated computational domain used, meshsize of the finite elements approximation).
渐近展开的均质两弱矩阵随机均匀化设置
本文研究了散度型随机线性椭圆型偏微分方程齐化矩阵的一些数值逼近。我们关注的是底层随机场是参考周期张量的一个小扰动的情况。这种扰动的大小由实参数eta编码。在这种情况下,从理论上讲,文献已经表明,对于本文考虑的两个模型,精确均质矩阵具有参数eta的幂展开式,其系数是确定的。在实践中,人们无法操纵这种展开的精确项。所有对象都采用离散化方法。因此,我们需要导出近似随机均匀化矩阵的类似展开式。与精确均匀化矩阵的展开式不同,近似均匀化矩阵的展开式包含本质随机系数。特别是,二阶项在本质上是随机的。本工作的目的是推导和研究近似过程参数的函数展开式(所使用的截断计算域的大小,有限元近似的网格大小)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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