2023
DOI: 10.48550/arxiv.2301.07790
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Machine Learning Based Approach to Predict Ductile Damage Model Parameters for Polycrystalline Metals

Abstract: Damage models for ductile materials typically need to be parameterized, often with the appropriate parameters changing for a given material depending on the loading conditions. This can make parameterizing these models computationally expensive, since an inverse problem must be solved for each loading condition. Using standard inverse modeling techniques typically requires hundreds or thousands of high-fidelity computer simulations to estimate the optimal parameters. Additionally, the time of human expert is r… Show more

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