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Tuesday, 14 September 2021

Feasible FE2 through adaptive anchoring enabled by probabilistic machine learning

 


On-the-fly construction of surrogate constitutive models for concurrent multiscale analysis through probabilistic machine learning, CMAME, 2020

I. B. C. M. Rocha (TU Delft), P. Kerfriden (MPT), F. P. van der Meer (TU Delft)

Posted by Pierre Kerfriden at 02:19
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Labels: Machine Learning, Multiscale Modelling, Spotlight

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