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Published in: Computational Mechanics 3/2015

01-09-2015 | Original Paper

Efficient uncertainty quantification in stochastic finite element analysis based on functional principal components

Authors: Ilaria Bianchini, Raffaele Argiento, Ferdinando Auricchio, Ettore Lanzarone

Published in: Computational Mechanics | Issue 3/2015

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Abstract

The great influence of uncertainties on the behavior of physical systems has always drawn attention to the importance of a stochastic approach to engineering problems. Accordingly, in this paper, we address the problem of solving a Finite Element analysis in the presence of uncertain parameters. We consider an approach in which several solutions of the problem are obtained in correspondence of parameters samples, and propose a novel non-intrusive method, which exploits the functional principal component analysis, to get acceptable computational efforts. Indeed, the proposed approach allows constructing an optimal basis of the solutions space and projecting the full Finite Element problem into a smaller space spanned by this basis. Even if solving the problem in this reduced space is computationally convenient, very good approximations are obtained by upper bounding the error between the full Finite Element solution and the reduced one. Finally, we assess the applicability of the proposed approach through different test cases, obtaining satisfactory results.

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Appendix
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Metadata
Title
Efficient uncertainty quantification in stochastic finite element analysis based on functional principal components
Authors
Ilaria Bianchini
Raffaele Argiento
Ferdinando Auricchio
Ettore Lanzarone
Publication date
01-09-2015
Publisher
Springer Berlin Heidelberg
Published in
Computational Mechanics / Issue 3/2015
Print ISSN: 0178-7675
Electronic ISSN: 1432-0924
DOI
https://doi.org/10.1007/s00466-015-1185-7

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