2024
DOI: 10.1007/s00466-023-02440-6
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Optimizing machine learning yield functions using query-by-committee for support vector classification with a dynamic stopping criterion

Ronak Shoghi,
Lukas Morand,
Dirk Helm
et al.

Abstract: In the field of materials engineering, the accurate prediction of material behavior under various loading conditions is crucial. Machine Learning (ML) methods have emerged as promising tools for generating constitutive models straight from data, capable of describing complex material behavior in a more flexible way than classical constitutive models. Yield functions, which serve as foundation of constitutive models for plasticity, can be properly described in a data-oriented manner using ML methods. However, t… Show more

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