2021 Quantitative estimates in stochastic homogenization for correlated coefficient fields
Antoine Gloria, Stefan Neukamm, Felix Otto
Anal. PDE 14(8): 2497-2537 (2021). DOI: 10.2140/apde.2021.14.2497

Abstract

This paper is about the homogenization of linear elliptic operators in divergence form with stationary random coefficients that have only slowly decaying correlations. It deduces optimal estimates of the homogenization error from optimal growth estimates of the (extended) corrector. In line with the heuristics, there are transitions at dimension d=2, and for a correlation-decay exponent β=2 we capture the correct power of logarithms coming from these two sources of criticality.

The decay of correlations is sharply encoded in terms of a multiscale logarithmic Sobolev inequality (LSI) for the ensemble under consideration—the results would fail if correlation decay were encoded in terms of an α-mixing condition. Among other ensembles popular in modeling of random media, this class includes coefficient fields that are local transformations of stationary Gaussian fields.

The optimal growth of the corrector ϕ is derived from bounding the size of spatial averages F=gϕ of its gradient. This in turn is done by a (deterministic) sensitivity estimate of F, that is, by estimating the functional derivative Fa of F with respect to the coefficient field a. Appealing to the LSI in form of concentration of measure yields a stochastic estimate on F. The sensitivity argument relies on a large-scale Schauder theory for the heterogeneous elliptic operator a. The treatment allows for nonsymmetric a and for systems like linear elasticity.

Citation

Download Citation

Antoine Gloria. Stefan Neukamm. Felix Otto. "Quantitative estimates in stochastic homogenization for correlated coefficient fields." Anal. PDE 14 (8) 2497 - 2537, 2021. https://doi.org/10.2140/apde.2021.14.2497

Information

Received: 11 October 2019; Revised: 8 May 2020; Accepted: 16 June 2020; Published: 2021
First available in Project Euclid: 17 February 2022

MathSciNet: MR4377865
zbMATH: 1485.35156
Digital Object Identifier: 10.2140/apde.2021.14.2497

Subjects:
Primary: 35J15 , 35J47 , 60H25 , 74Q05

Keywords: Convergence rates , fat tails , Stochastic homogenization

Rights: Copyright © 2021 Mathematical Sciences Publishers

JOURNAL ARTICLE
41 PAGES

This article is only available to subscribers.
It is not available for individual sale.
+ SAVE TO MY LIBRARY

Vol.14 • No. 8 • 2021
MSP
Back to Top