Automated model discovery of finite strain elastoplasticity from uniaxial experiments
Asghar A. Jadoon, Knut A. Meyer, Jan N. Fuhg

TL;DR
This paper introduces a physics-informed neural network framework for automating the discovery of finite strain elastoplasticity models from uniaxial experimental data, ensuring thermodynamic consistency and improved generalization.
Contribution
It develops a thermodynamically consistent finite strain elastoplasticity model using neural networks that incorporate physical principles, advancing automated constitutive modeling from experimental data.
Findings
Successfully models complex cyclic material behavior.
Easier training process compared to traditional models.
Demonstrates robustness and predictive power beyond training data.
Abstract
Constitutive modeling lies at the core of mechanics, allowing us to map strains onto stresses for a material in a given mechanical setting. Historically, researchers relied on phenomenological modeling where simple mathematical relationships were derived through experimentation and curve fitting. Recently, to automate the constitutive modeling process, data-driven approaches based on neural networks have been explored. While initial naive approaches violated established mechanical principles, recent efforts concentrate on designing neural network architectures that incorporate physics and mechanistic assumptions into machine-learning-based constitutive models. For history-dependent materials, these models have so far predominantly been restricted to small-strain formulations. In this work, we develop a finite strain plasticity formulation based on thermodynamic potentials to model mixed…
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Taxonomy
TopicsMetallurgy and Material Forming · Elasticity and Material Modeling · Gear and Bearing Dynamics Analysis
