Identification of Empirical Constitutive Models for Age-Hardenable Aluminium Alloy and High-Chromium Martensitic Steel Using Symbolic Regression
NeutralArtificial Intelligence
The study published on November 12, 2025, highlights the application of symbolic regression in materials science, specifically for age-hardenable aluminium alloy and high-chromium martensitic steel. By employing this method, researchers aimed to derive constitutive models that describe how these materials behave during plastic deformation under different loading conditions, such as compression and tension. The ability to predict material behavior is essential for developing new and improved materials, making this research significant for the field. The results not only showcase the benefits of symbolic regression in generating predictive equations but also acknowledge the challenges that may arise in its implementation. This work contributes to a deeper understanding of process-structure-property relationships in materials, which is fundamental for advancing engineering applications.
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