多尺度问题的量化张量有限元:二维和三维扩散问题

V. Kazeev, I. Oseledets, M. Rakhuba, C. Schwab
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引用次数: 8

摘要

基于多尺度极限的均匀化通过引入$n$所谓的“快速变量”,将一个在物理域$D \subset \mathbb{R}^d$上具有$n+1$渐近分离微尺度的多尺度问题转化为在维数为$(n+1)d$的积域上的一尺度问题。此过程允许将$d$物理维度中的$n+1$尺度转换为$(n+1)d$维度中的单尺度结构。本文证明了用最近发展的量子化张量-列有限单元法(QTT-FEM)可以有效地处理原始的物理多尺度问题和相应的高维单尺度极限问题。该方法基于将计算限制在一个巨大但通用的“虚拟”(背景)离散化空间内的低维嵌套子空间序列(称为张量秩)。在计算过程中,这些子空间在运行时进行迭代和数据自适应计算,绕过任何“离线预计算”。为了进行理论分析,我们解析地构造了这样的低维子空间来约束张量的秩与误差$\tau>0$。我们考虑了一个在几个物理维度上的线性椭圆型多尺度问题模型,并从理论和实验上证明:(i)相关高维单尺度问题的解和(ii)多尺度问题解的相应逼近都允许QTT-FEM的有效逼近。因此,这些问题可以通过标准(低阶)PDE离散化与最先进的张量结构线性系统通用求解器相结合,以规模鲁棒方式进行数值求解。我们证明了尺度鲁棒指数收敛性,即QTT-FEM在$\log \tau$中有效自由度数多项式缩放时达到精度$\tau$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantized tensor FEM for multiscale problems: diffusion problems in two and three dimensions
Homogenization in terms of multiscale limits transforms a multiscale problem with $n+1$ asymptotically separated microscales posed on a physical domain $D \subset \mathbb{R}^d$ into a one-scale problem posed on a product domain of dimension $(n+1)d$ by introducing $n$ so-called "fast variables". This procedure allows to convert $n+1$ scales in $d$ physical dimensions into a single-scale structure in $(n+1)d$ dimensions. We prove here that both the original, physical multiscale problem and the corresponding high-dimensional, one-scale limiting problem can be efficiently treated numerically with the recently developed quantized tensor-train finite-element method (QTT-FEM). The method is based on restricting computation to sequences of nested subspaces of low dimensions (which are called tensor ranks) within a vast but generic "virtual" (background) discretization space. In the course of computation, these subspaces are computed iteratively and data-adaptively at runtime, bypassing any "offline precomputation". For the purpose of theoretical analysis, such low-dimensional subspaces are constructed analytically to bound the tensor ranks vs. error $\tau>0$. We consider a model linear elliptic multiscale problem in several physical dimensions and show, theoretically and experimentally, that both (i) the solution of the associated high-dimensional one-scale problem and (ii) the corresponding approximation to the solution of the multiscale problem admit efficient approximation by the QTT-FEM. These problems can therefore be numerically solved in a scale-robust fashion by standard (low-order) PDE discretizations combined with state-of-the-art general-purpose solvers for tensor-structured linear systems. We prove scale-robust exponential convergence, i.e., that QTT-FEM achieves accuracy $\tau$ with the number of effective degrees of freedom scaling polynomially in $\log \tau$.
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