Deep autoencoders for physics-constrained data-driven nonlinear materials modeling

Physics-constrained data-driven computing is an emerging computational paradigm that allows simulation of complex materials directly based on material database and bypass the classical constitutive model construction. However, it remains difficult to deal with high-dimensional applications and extra...

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Bibliographic Details
Published inComputer methods in applied mechanics and engineering Vol. 385; no. C; p. 114034
Main Authors He, Xiaolong, He, Qizhi, Chen, Jiun-Shyan
Format Journal Article
LanguageEnglish
Published Amsterdam Elsevier B.V 01.11.2021
Elsevier BV
Elsevier
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Summary:Physics-constrained data-driven computing is an emerging computational paradigm that allows simulation of complex materials directly based on material database and bypass the classical constitutive model construction. However, it remains difficult to deal with high-dimensional applications and extrapolative generalization. This paper introduces deep learning techniques under the data-driven framework to address these fundamental issues in nonlinear materials modeling. To this end, an autoencoder neural network architecture is introduced to learn the underlying low-dimensional representation (embedding) of the given material database. The offline trained autoencoder and the discovered embedding space are then incorporated in the online data-driven computation such that the search of optimal material state from database can be performed on a low-dimensional space, aiming to enhance the robustness and predictability with projected material data. To ensure numerical stability and representative constitutive manifold, a convexity-preserving interpolation scheme tailored to the proposed autoencoder-based data-driven solver is proposed for constructing the material state. In this study, the applicability of the proposed approach is demonstrated by modeling nonlinear biological tissues. A parametric study on data noise, data size and sparsity, training initialization, and model architectures, is also conducted to examine the robustness and convergence property of the proposed approach. •Autoencoder based data-driven modeling approach is proposed for nonlinear materials.•Autoencoders enable noise filtering and dimensionality reduction of material data.•Convexity-preserving interpolation is employed for enhanced stability in data search.•Improved generalization capability is demonstrated by modeling biological tissues.
Bibliography:USDOE
National Science Foundation (NSF)
PNNL-SA-160621
AC05-76RL01830; CCF-1564302
ISSN:0045-7825
1879-2138
DOI:10.1016/j.cma.2021.114034