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A generalizable machine learning-assisted fast Fourier transform algorithm to simulate the large strain phenomena in polycrystalline materials

Benhour Amirian, Abhijit Brahme, Ricardo A. Lebensohn, Kaan Inal

2025International Journal of Plasticity10 citationsDOIOpen Access PDF

Abstract

Machine learning methods have shown initial promise in constitutive modeling for single crystals or homogenized polycrystals , delivering notable computational efficiency. However, existing machine learning-based constitutive models often lack generalizability, limiting their application across diverse boundary value problems . This study introduces a thermodynamics-informed artificial neural network model to accelerate rate-tangent crystal plasticity fast Fourier transform simulations for cross-scale deformation behaviors of polycrystals under complex loading. Our model integrates microstructural variability and local interactions effectively. To address local effects in each grain, we employ K-means clustering to group Gauss points within the microstructure into clusters assumed to be in similar mechanical states. This approach, based on self-clustering analysis, extends model scope from macroscopic stress response to the granular level, capturing mechanical responses and orientation evolution across grains. This reduces the number of nonlinear problems to solve, with cluster responses propagated throughout each group. The thermodynamics-based artificial neural network-extracted features are further processed using local material state clusters to account for history-dependent deformation and evolving microstructures. Additionally, representative volume element simulations with rate-tangent crystal plasticity fast Fourier transform provide reliable datasets for model training. The proposed model demonstrates high efficiency, accuracy, self-consistency, and enhanced generalizability in predicting strain–stress responses and orientation evolution at both individual grain and aggregate scales under complex loading conditions, such as biaxial tension and arbitrary loading scenarios.

Topics & Concepts

Materials scienceFourier transformCrystalliteAlgorithmFast Fourier transformStrain (injury)Composite materialMechanical engineeringComputer scienceMathematical analysisMathematicsEngineeringMetallurgyInternal medicineMedicineMicrostructure and mechanical propertiesMicrostructure and Mechanical Properties of SteelsMetal Forming Simulation Techniques
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