Image inversion and uncertainty quantification for constitutive laws of pattern formation
DOI10.1016/j.jcp.2021.110279OpenAlexW3138736071MaRDI QIDQ2131064
Richard D. Braatz, Martin Z. Bazant, Hong-Bo Zhao
Publication date: 25 April 2022
Published in: Journal of Computational Physics (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2010.10676
inverse problemphase field modelpattern formationMCMCuncertainty quantificationPDE-constrained optimization
Artificial intelligence (68Txx) Numerical methods for ordinary differential equations (65Lxx) Partial differential equations of mathematical physics and other areas of application (35Qxx)
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