Learning Latent Hardening (LLH): Enhancing Deep Learning with Domain Knowledge for Material Inverse Problems
Qinyi Tian, Winston Lindqwister, Manolis Veveakis, Laura E. Dalton

TL;DR
This paper introduces Learning Latent Hardening (LLH), a two-step framework that incorporates domain knowledge into deep learning models to improve predictions of microstructural features from stress-strain data in data-scarce material inverse problems.
Contribution
The study proposes LLH, a novel two-step method that combines domain knowledge with deep learning to enhance predictive accuracy in material microstructure analysis under limited data conditions.
Findings
Models with domain knowledge achieved higher R^2 scores.
Domain-informed models captured critical stress-strain patterns.
Incorporating domain knowledge improves microstructure prediction accuracy.
Abstract
Advancements in deep learning and machine learning have improved the ability to model complex, nonlinear relationships, such as those encountered in complex material inverse problems. However, the effectiveness of these methods often depends on large datasets, which are not always available. In this study, the incorporation of domain-specific knowledge of the mechanical behavior of material microstructures is investigated to evaluate the impact on the predictive performance of the models in data-scarce scenarios. To overcome data limitations, a two-step framework, Learning Latent Hardening (LLH), is proposed. In the first step of LLH, a Deep Neural Network is employed to reconstruct full stress-strain curves from randomly selected portions of the stress-strain curves to capture the latent mechanical response of a material based on key microstructural features. In the second step of LLH,…
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Taxonomy
TopicsNeural Networks and Applications
