npj Computational Materials (Jul 2023)

Deep material network via a quilting strategy: visualization for explainability and recursive training for improved accuracy

  • Dongil Shin,
  • Ryan Alberdi,
  • Ricardo A. Lebensohn,
  • Rémi Dingreville

DOI
https://doi.org/10.1038/s41524-023-01085-6
Journal volume & issue
Vol. 9, no. 1
pp. 1 – 16

Abstract

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Abstract Recent developments integrating micromechanics and neural networks offer promising paths for rapid predictions of the response of heterogeneous materials with similar accuracy as direct numerical simulations. The deep material network is one such approaches, featuring a multi-layer network and micromechanics building blocks trained on anisotropic linear elastic properties. Once trained, the network acts as a reduced-order model, which can extrapolate the material’s behavior to more general constitutive laws, including nonlinear behaviors, without the need to be retrained. However, current training methods initialize network parameters randomly, incurring inevitable training and calibration errors. Here, we introduce a way to visualize the network parameters as an analogous unit cell and use this visualization to “quilt” patches of shallower networks to initialize deeper networks for a recursive training strategy. The result is an improvement in the accuracy and calibration performance of the network and an intuitive visual representation of the network for better explainability.