Physically recurrent neural network for rate and path-dependent heterogeneous materials in a finite strain framework

Journal Article (2024)
Author(s)

M.A. Marina (TU Delft - Applied Mechanics)

I. B C M Rocha (TU Delft - Applied Mechanics)

D. Kovacevic (TU Delft - Applied Mechanics)

FP van der Meer (TU Delft - Applied Mechanics)

Research Group
Applied Mechanics
DOI related publication
https://doi.org/10.1016/j.mechmat.2024.105145
More Info
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Publication Year
2024
Language
English
Research Group
Applied Mechanics
Volume number
198
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Abstract

In this work, a hybrid physics-based data-driven surrogate model for the microscale analysis of heterogeneous material is investigated. The proposed model benefits from the physics-based knowledge contained in the constitutive models used in the full-order micromodel by embedding the material models in a neural network. Following previous developments, this paper extends the applicability of the physically recurrent neural network (PRNN) by introducing an architecture suitable for rate-dependent materials in a finite strain framework. In this model, the homogenized deformation gradient of the micromodel is encoded into a set of deformation gradients serving as input to the embedded constitutive models. These constitutive models compute stresses, which are combined in a decoder to predict the homogenized stress, such that the internal variables of the history-dependent constitutive models naturally provide physics-based memory for the network. To demonstrate the capabilities of the surrogate model, we consider a unidirectional composite micromodel with transversely isotropic elastic fibers and elasto-viscoplastic matrix material. The extrapolation properties of the surrogate model trained to replace such micromodel are tested on loading scenarios unseen during training, ranging from different strain-rates to cyclic loading and relaxation. Speed-ups of three orders of magnitude with respect to the runtime of the original micromodel are obtained.