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An artificial neural network for surrogate modeling of stress fields in viscoplastic polycrystalline materials

Mohammad S. Khorrami, Jaber Rezaei Mianroodi, Nima H. Siboni, Pawan Goyal, Bob Svendsen, Peter Benner, Dierk Raabe

2023npj Computational Materials90 citationsDOIOpen Access PDF

Abstract

Abstract The purpose of this work is the development of a trained artificial neural network for surrogate modeling of the mechanical response of elasto-viscoplastic grain microstructures. To this end, a U-Net-based convolutional neural network (CNN) is trained using results for the von Mises stress field from the numerical solution of initial-boundary-value problems (IBVPs) for mechanical equilibrium in such microstructures subject to quasi-static uniaxial extension. The resulting trained CNN (tCNN) accurately reproduces the von Mises stress field about 500 times faster than numerical solutions of the corresponding IBVP based on spectral methods. Application of the tCNN to test cases based on microstructure morphologies and boundary conditions not contained in the training dataset is also investigated and discussed.

Topics & Concepts

Viscoplasticityvon Mises yield criterionArtificial neural networkBoundary value problemConvolutional neural networkMicrostructureComputer scienceStress fieldStress (linguistics)Materials scienceFinite element methodArtificial intelligenceMathematicsStructural engineeringMathematical analysisConstitutive equationComposite materialEngineeringPhilosophyLinguisticsMicrostructure and mechanical propertiesHydrogen embrittlement and corrosion behaviors in metalsFatigue and fracture mechanics
An artificial neural network for surrogate modeling of stress fields in viscoplastic polycrystalline materials | Litcius