
Open access
Date
2022-04-28Type
- Journal Article
Citations
Cited 9 times in
Web of Science
Cited 12 times in
Scopus
ETH Bibliography
yes
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Abstract
We propose an approach for data-driven automated discovery of material laws, which we call EUCLID (Efficient Unsupervised Constitutive Law Identification and Discovery), and we apply it here to the discovery of plasticity models, including arbitrarily shaped yield surfaces and isotropic and/or kinematic hardening laws. The approach is unsupervised, i.e., it requires no stress data but only full-field displacement and global force data; it delivers interpretable models, i.e., models that are embodied by parsimonious mathematical expressions discovered through sparse regression of a potentially large catalog of candidate functions; it is one-shot, i.e., discovery only needs one experiment. The material model library is constructed by expanding the yield function with a Fourier series, whereas isotropic and kinematic hardening is introduced by assuming a yield function dependency on internal history variables that evolve with the plastic deformation. For selecting the most relevant Fourier modes and identifying the hardening behavior, EUCLID employs physics knowledge, i.e., the optimization problem that governs the discovery enforces the equilibrium constraints in the bulk and at the loaded boundary of the domain. Sparsity promoting regularization is deployed to generate a set of solutions out of which a solution with low cost and high parsimony is automatically selected. Through virtual experiments, we demonstrate the ability of EUCLID to accurately discover several plastic yield surfaces and hardening mechanisms of different complexity. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000544264Publication status
publishedExternal links
Journal / series
npj Computational MaterialsVolume
Pages / Article No.
Publisher
NatureOrganisational unit
09697 - De Lorenzis, Laura / De Lorenzis, Laura
Funding
204316 - Unsupervised data-driven discovery of material laws (SNF)
Related publications and datasets
Is supplemented by: https://doi.org/10.3929/ethz-b-000534002
More
Show all metadata
Citations
Cited 9 times in
Web of Science
Cited 12 times in
Scopus
ETH Bibliography
yes
Altmetrics