Learning the physics-consistent material behavior from experimentally measurable data via PDE-constrained optimization
Xinxin Wu, Yin Zhang, Sheng Mao

TL;DR
This paper introduces a PDE-constrained optimization approach using physically augmented neural networks to construct accurate, physics-consistent constitutive models for hyperelastic materials from experimental data, enabling effective interpolation and extrapolation.
Contribution
It presents a novel data-driven method combining neural networks and PDE constraints to develop physically consistent constitutive models for complex hyperelastic materials.
Findings
Models accurately capture material behavior across diverse stress-strain states.
Method demonstrates strong interpolation and extrapolation capabilities.
Efficiently constructs models from limited experimental data.
Abstract
Constitutive models play a crucial role in materials science as they describe the behavior of the materials in mathematical forms. Over the last few decades, the rapid development of manufacturing technologies have led to the discovery of many advanced materials with complex and novel behaviors, which in the meantime, have also posed great challenges for constructing accurate and reliable constitutive models of these materials. In this work, we propose a data-driven approach to construct physics-consistent constitutive models for hyperelastic materials from experimentally measurable data, with the help of PDE-constrained optimization methods. Specifically, our constitutive models are based on the physically augmented neural networks~(PANNs), which has been shown to ensure that the models are both physically consistent but also mathematically well-posed by construction. Specimens with…
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Taxonomy
TopicsModel Reduction and Neural Networks · Metallurgy and Material Forming · Metal Forming Simulation Techniques
