Physics-constrained symbolic model discovery for polyconvex incompressible hyperelastic materials
Bahador Bahmani, WaiChing Sun

TL;DR
This paper introduces a physics-constrained machine learning framework that infers interpretable, mathematically explicit hyperelastic energy models for incompressible materials, ensuring physical plausibility and computational efficiency.
Contribution
The authors develop a polyconvex neural additive model combined with genetic programming to discover interpretable, physics-consistent hyperelastic models from sparse data, improving scalability and interpretability.
Findings
The proposed model guarantees polyconvexity, ensuring physical plausibility.
It produces more interpretable models with fewer operations than deep neural networks.
The approach demonstrates robust extrapolation capabilities outside training data.
Abstract
We present a machine learning framework capable of consistently inferring mathematical expressions of hyperelastic energy functionals for incompressible materials from sparse experimental data and physical laws. To achieve this goal, we propose a polyconvex neural additive model (PNAM) that enables us to express the hyperelastic model in a learnable feature space while enforcing polyconvexity. An upshot of this feature space obtained via the PNAM is that (1) it is spanned by a set of univariate basis that can be re-parametrized with a more complex mathematical form, and (2) the resultant elasticity model is guaranteed to fulfill the polyconvexity, which ensures that the acoustic tensor remains elliptic for any deformation. To further improve the interpretability, we use genetic programming to convert each univariate basis into a compact mathematical expression. The resultant…
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Taxonomy
TopicsModel Reduction and Neural Networks · Elasticity and Material Modeling · Tensor decomposition and applications
