An adaptive domain-based POD/ECM hyper-reduced modeling framework without offline training

Journal Article (2020)
Author(s)

I. B C M Rocha (TU Delft - Applied Mechanics)

FP van der Meer (TU Delft - Applied Mechanics)

Bert Sluijs (TU Delft - Materials- Mechanics- Management & Design)

Research Group
Applied Mechanics
Copyright
© 2020 I.B.C.M. Rocha, F.P. van der Meer, Lambertus J. Sluys
DOI related publication
https://doi.org/10.1016/j.cma.2019.112650
More Info
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Publication Year
2020
Language
English
Copyright
© 2020 I.B.C.M. Rocha, F.P. van der Meer, Lambertus J. Sluys
Research Group
Applied Mechanics
Volume number
358
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Abstract

This work presents a reduced-order modeling framework that precludes the need for offline training and adaptively adjusts its lower-order solution space as the analysis progresses. The analysis starts with a fully-solved step and elements are clustered based on their strain response. Elements with the highest strains are solved with a local/global approach in which degrees of freedom from elements undergoing the highest amount of nonlinearity are fully-solved and the rest is approximated by a Proper Orthogonal Decomposition (POD) reduced model with full integration. Elements belonging to the remaining clusters are subjected to a hyper-reduction step using the Empirical Cubature Method (ECM). Online error estimators are used to trigger a retraining process once the reduced solution space becomes inadequate. The performance of the framework is assessed through a series of numerical examples featuring a material model with pressure-dependent plasticity.