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From CP-FFT to CP-RNN: Recurrent neural network surrogate model of crystal plasticity

Colin Bonatti, Bekim Berisha, Dirk Mohr

2022International Journal of Plasticity106 citationsDOIOpen Access PDF

Abstract

Recurrent Neural Network (RNN) based surrogate models constitute an emerging class of reduced order models of history-dependent material behavior. Recently, the authors have proposed an alternative RNN formulation that provides stress-responses independent of the time-discretization of the input-path, making it appropriate for integration into explicit finite element (FE) frameworks. Herein, we apply the same methodology to 2D and 3D datasets corresponding to the effective mechanical behavior of an aluminum alloy as obtained through Crystal Plasticity simulations. In both cases, we obtain reasonable approximations of the behavior using RNN models of size ranging from 5'000 to 100’000 parameters. We also develop a methodology to reduce observed numerical instabilities of the finite element implementations.

Topics & Concepts

Recurrent neural networkDiscretizationFinite element methodMaterials sciencePath (computing)Fast Fourier transformPlasticitySurrogate modelApplied mathematicsComputer scienceArtificial neural networkAlgorithmArtificial intelligenceMachine learningStructural engineeringMathematicsMathematical analysisEngineeringComposite materialProgramming languageModel Reduction and Neural NetworksMetallurgy and Material FormingHigh Temperature Alloys and Creep