An efficient goal‐oriented sampling strategy using reduced basis method for parametrized elastodynamic problems

In this article, we study the class of linear elastodynamic problems with affine parameter dependence using a goal-oriented approach by finite element (FE) and reduced basis (RB) methods. The main contribution of this article is the “goal-oriented” proper orthogonal decomposition (POD)–Greedy sampling strategy within the RB approximation context. The proposed sampling strategy looks for the parameter points such that the output error approximation will be minimized by Greedy iterations. In estimating such output error approximation, the standard POD–Greedy algorithm is invoked to provide enriched RB approximations for the FE outputs. We propose a so-called “cross-validation” process to choose adaptively the dimension of the enriched RB space corresponding with the dimension of the RB space under consideration. Numerical results show that the new goal-oriented POD–Greedy sampling procedure with the cross-validation process improves significantly the space-time output computations in comparison with the ones computed by the standard POD–Greedy algorithm. The method is thus ideally suited for repeated, rapid, and reliable evaluations of input-output relationships in the space-time setting. © 2014 Wiley Periodicals, Inc. Numer Methods Partial Differential Eq 31: 575–608, 2015

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