Deep learning predicts path-dependent plasticity

Journal Article (2019)
Author(s)

M. Mozaffar (Northwestern University)

R. Bostanabad (University of California, Northwestern University)

W. Chen (Northwestern University)

K. Ehmann (Northwestern University)

J. Cao (Northwestern University)

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

Research Group
(OLD) MSE-5
DOI related publication
https://doi.org/10.1073/pnas.1911815116 Final published version
More Info
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Publication Year
2019
Language
English
Research Group
(OLD) MSE-5
Issue number
52
Volume number
116
Pages (from-to)
26414-26420
Downloads counter
275
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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.