Deep learning predicts path-dependent plasticity

Journal Article (2019)
Author(s)

M. Mozaffar (Northwestern University)

Ramin Bostanabad (University of California, Northwestern University)

Weizhong Chen (Northwestern University)

K. Ehmann (Northwestern University)

J Cao (Northwestern University)

M.A. Bessa (TU Delft - (OLD) MSE-5)

Research Group
(OLD) MSE-5
Copyright
© 2019 M. Mozaffar, R. Bostanabad, W. Chen, K. Ehmann, J. Cao, M.A. Bessa
DOI related publication
https://doi.org/10.1073/pnas.1911815116
More Info
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Publication Year
2019
Language
English
Copyright
© 2019 M. Mozaffar, R. Bostanabad, W. Chen, K. Ehmann, J. Cao, M.A. Bessa
Research Group
(OLD) MSE-5
Issue number
52
Volume number
116
Pages (from-to)
26414-26420
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Abstract

Plasticity theory aims at describing the yield loci and work hardening of a material under general deformation states. Most of its complexity arises from the nontrivial dependence of the yield loci on the complete strain history of a material and its microstructure. This motivated 3 ingenious simplifications that underpinned a century of developments in this field: 1) yield criteria describing yield loci location; 2) associative or nonassociative flow rules defining the direction of plastic flow; and 3) effective stress-strain laws consistent with the plastic work equivalence principle. However, 2 key complications arise from these simplifications. First, finding equations that describe these 3 assumptions for materials with complex microstructures is not trivial. Second, yield surface evolution needs to be traced iteratively, i.e., through a return mapping algorithm. Here, we show that these assumptions are not needed in the context of sequence learning when using recurrent neural networks, diverting the above-mentioned complications. This work offers an alternative to currently established plasticity formulations by providing the foundations for finding history- and microstructure-dependent constitutive models through deep learning.