2024
DOI: 10.20944/preprints202405.2044.v1
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Crystal Plasticity Parameter Optimization in Cyclically Deformed Electrodeposited Copper – A Machine Learning Approach

Karol Frydrych,
Maciej Tomczak,
Stefanos Papanikolaou

Abstract: The paper describes an application of machine learning approach for parameter optimization. The method is demonstrated for the elasto-viscoplastic model with both isotropic and kinematic hardening. It is shown that the proposed method based on long-short term memory networks enabled to obtain reasonable agreement of stress-strain curves for cyclic deformation in low-cycle fatigue regime. The main advantage of the proposed approach over traditional optimization schemes lies in the possibility to get parameters … Show more

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Cited by 2 publications
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