2023
DOI: 10.48550/arxiv.2301.13547
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Machine learning of evolving physics-based material models for multiscale solid mechanics

Abstract: In this work we present a hybrid physics-based and data-driven learning approach to construct surrogate models for concurrent multiscale simulations of complex material behavior. We start from robust but inflexible physics-based constitutive models and increase their expressivity by allowing a subset of their material parameters to change in time according to an evolution operator learned from data. This leads to a flexible hybrid model combining a data-driven encoder and a physics-based decoder. Apart from in… Show more

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