AI Meets Plasticity: A Comprehensive Survey
Hadi Bakhshan, Sima Farshbaf, Junior Ramirez Machado, Fernando Rastellini Canela, Josep Maria Carbonell

TL;DR
This survey explores how AI techniques are revolutionizing the understanding, modeling, and prediction of materials plasticity, integrating data-driven methods with traditional materials science approaches.
Contribution
It provides a comprehensive taxonomy of AI methodologies applied to materials plasticity, highlighting their roles, data needs, and predictive capabilities, thus guiding future research in the field.
Findings
AI enables better modeling of plastic deformation processes.
Deep learning improves prediction accuracy of material behavior.
Probabilistic models incorporate uncertainty in plasticity predictions.
Abstract
Artificial intelligence (AI) is rapidly emerging as a new paradigm of scientific discovery, namely data-driven science, across nearly all scientific disciplines. In materials science and engineering, AI has already begun to exert a transformative influence, making it both timely and necessary to examine its interaction with materials plasticity. In this study, we present a holistic survey of the convergence between AI and plasticity, highlighting state-of-the-art AI methodologies employed to discover, construct surrogate models for, and emulate the plastic behavior of materials. From a materials science perspective, we examine cause-and-effect relationships governing plastic deformation, including microstructural characterization and macroscopic responses described through plasticity constitutive models. From the perspective of AI methodology, we review a broad spectrum of applied…
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Taxonomy
TopicsMachine Learning in Materials Science · Model Reduction and Neural Networks · Composite Material Mechanics
