English

Machine learning models of plastic flow based on representation theory

Computational Physics 2018-09-05 v1

Abstract

We use machine learning (ML) to infer stress and plastic flow rules using data from repre- sentative polycrystalline simulations. In particular, we use so-called deep (multilayer) neural networks (NN) to represent the two response functions. The ML process does not choose ap- propriate inputs or outputs, rather it is trained on selected inputs and output. Likewise, its discrimination of features is crucially connected to the chosen input-output map. Hence, we draw upon classical constitutive modeling to select inputs and enforce well-accepted symmetries and other properties. With these developments, we enable rapid model building in real-time with experiments, and guide data collection and feature discovery.

Keywords

Cite

@article{arxiv.1809.00267,
  title  = {Machine learning models of plastic flow based on representation theory},
  author = {Reese E. Jones and Jeremy A. Templeton and Clay M. Sanders and Jakob T. Ostien},
  journal= {arXiv preprint arXiv:1809.00267},
  year   = {2018}
}

Comments

32 pages, 12 figures (44 subfigures)

R2 v1 2026-06-23T03:51:48.118Z