Learning quantities of interest from parametric PDEs: an efficient neural-weighted minimal residual approach
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Publication:6543646
DOI10.1016/J.CAMWA.2024.04.006MaRDI QIDQ6543646
K. G. van der Zee, Ignacio Muga, David Pardo, Ignacio Brevis, Oscar Córdoba Rodríguez
Publication date: 24 May 2024
Published in: Computers & Mathematics with Applications (Search for Journal in Brave)
artificial neural networksparametric PDEsresidual minimizationgoal-oriented finite elementsweighted inner-products
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