Learning homogenization for elliptic operators
DOI10.1137/23m1585015zbMATH Open1545.35007MaRDI QIDQ6583661
[[Person:6109141|Author name not available (Why is that?)]], K. Bhattacharya, Aakila Rajan, Andrew M. Stuart, Nikola B. Kovachki
Publication date: 6 August 2024
Published in: SIAM Journal on Numerical Analysis (Search for Journal in Brave)
microstructurehomogenizationapproximation theorymachine learningelliptic PDEsolution mapFourier neural operator
Artificial neural networks and deep learning (68T07) Numerical approximation of solutions of dynamical problems in solid mechanics (74H15) Homogenization in context of PDEs; PDEs in media with periodic structure (35B27) Second-order elliptic systems (35J47)
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