The Language of Hyperelastic Materials
Georgios Kissas, Siddhartha Mishra, Eleni Chatzi, and Laura De, Lorenzis

TL;DR
This paper introduces a systematic method using formal grammars for discovering constitutive laws of hyperelastic materials from experimental data, improving automation, accuracy, and robustness over existing approaches.
Contribution
It presents a novel grammar-based approach for automatic generation and discovery of hyperelastic constitutive laws, reducing reliance on hand-crafted models and enhancing robustness.
Findings
Successfully generated a library of valid hyperelastic laws
Achieved accurate and robust model discovery from noisy data
Demonstrated flexibility and efficiency of the method
Abstract
The automated discovery of constitutive laws forms an emerging research area, that focuses on automatically obtaining symbolic expressions describing the constitutive behavior of solid materials from experimental data. Existing symbolic/sparse regression methods rely on the availability of libraries of material models, which are typically hand-designed by a human expert using known models as reference, or deploy generative algorithms with exponential complexity which are only practicable for very simple expressions. In this paper, we propose a novel approach to constitutive law discovery relying on formal grammars as an automated and systematic tool to generate constitutive law expressions. Compliance with physics constraints is partly enforced a priori and partly empirically checked a posteriori. We deploy the approach for two tasks: i) Automatically generating a library of valid…
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Taxonomy
TopicsModel-Driven Software Engineering Techniques · Material Properties and Failure Mechanisms
