English

Deep material network with cohesive layers: Multi-stage training and interfacial failure analysis

Materials Science 2020-02-19 v2 Computational Engineering, Finance, and Science Machine Learning Computational Physics

Abstract

A fundamental issue in multiscale materials modeling and design is the consideration of traction-separation behavior at the interface. By enriching the deep material network (DMN) with cohesive layers, the paper presents a novel data-driven material model which enables accurate and efficient prediction of multiscale responses for heterogeneous materials with interfacial effect. In the newly invoked cohesive building block, the fitting parameters have physical meanings related to the length scale and orientation of the cohesive layer. It is shown that the enriched material network can be effectively optimized via a multi-stage training strategy, with training data generated only from linear elastic direct numerical simulation (DNS). The extrapolation capability of the method to unknown material and loading spaces is demonstrated through the debonding analysis of a unidirectional fiber-reinforced composite, where the interface behavior is governed by an irreversible softening mixed-mode cohesive law. Its predictive accuracy is validated against the nonlinear path-dependent DNS results, and the reduction in computational time is particularly significant.

Keywords

Cite

@article{arxiv.1908.04858,
  title  = {Deep material network with cohesive layers: Multi-stage training and interfacial failure analysis},
  author = {Zeliang Liu},
  journal= {arXiv preprint arXiv:1908.04858},
  year   = {2020}
}

Comments

26 pages, 14 figures, 4 tables

R2 v1 2026-06-23T10:46:51.273Z