Polynomial approximations of a class of stochastic multiscale elasticity problems
Viet Ha Hoang, Thanh Chung Nguyen, Bingxing Xia

TL;DR
This paper develops polynomial chaos methods for stochastic multiscale elasticity problems, providing explicit convergence rates for approximations and homogenization errors, especially for nearly incompressible materials.
Contribution
It introduces a polynomial chaos framework for multiscale stochastic elasticity problems, deriving explicit convergence and homogenization rates independent of material parameters.
Findings
Explicit convergence rates for polynomial chaos approximations.
Homogenization error bounds for multiscale stochastic elasticity.
Rates are independent of Lamé constants for nearly incompressible materials.
Abstract
We consider a class of elasticity equations in whose elastic moduli depend on separated microscopic scales, are random and expressed as a linear expansion of a countable sequence of random variables which are independently and identically uniformly distributed in a compact interval. The multiscale Hellinger-Reissner problem that allows for computing the stress directly, and the multiscale mixed problem for nearly incompressible isotropic materials are considered. The stochastic problems are studied via deterministic problems that depend on a countable number of real parameters. We study the multiscale homogenized problems that contain all the macroscopic and microscopic information, whose solutions are written as generalized polynomial chaos (gpc) expansions. We approximate these solutions by semidiscrete Galerkin approximating problems that project into the spaces…
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