Systematic Performance Assessment of Deep Material Networks for Multiscale Material Modeling
Xiaolong He, Haoyan Wei, Wei Hu, Henan Mao, C.T. Wu

TL;DR
This paper systematically evaluates Deep Material Networks (DMNs) for multiscale material modeling, focusing on prediction accuracy, efficiency, and robustness, and compares different training strategies and model variants.
Contribution
It provides a comprehensive assessment of DMNs, highlighting how training choices affect performance and introducing a faster IMN variant with comparable accuracy.
Findings
Prediction error decreases with more training data.
Initialization and batch size significantly impact performance.
Activation regularization improves generalization.
Abstract
Deep Material Networks (DMNs) are structure-preserving, mechanistic machine learning models that embed micromechanical principles into their architectures, enabling strong extrapolation capabilities and significant potential to accelerate multiscale modeling of complex microstructures. A key advantage of these models is that they can be trained exclusively on linear elastic data and then generalized to nonlinear inelastic regimes during online prediction. Despite their growing adoption, systematic evaluations of their performance across the full offline-online pipeline remain limited. This work presents a comprehensive comparative assessment of DMNs with respect to prediction accuracy, computational efficiency, and training robustness. We investigate the effects of offline training choices, including initialization, batch size, training data size, and activation regularization on online…
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Taxonomy
TopicsMachine Learning in Materials Science · Model Reduction and Neural Networks · Block Copolymer Self-Assembly
