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

机译:基于功能主成分的随机有限元分析中的有效不确定性量化

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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.
机译:不确定性对物理系统行为的巨大影响一直引起人们对采用随机方法解决工程问题的重要性的关注。因此,在本文中,我们解决了在存在不确定参数的情况下求解有限元分析的问题。我们考虑一种在参数样本的对应关系中获得问题的几种解决方案的方法,并提出一种新颖的非侵入式方法,该方法利用功能主成分分析来获得可接受的计算成果。实际上,所提出的方法允许构造解空间的最佳基础,并将整个有限元问题投影到由此基础所跨越的较小空间中。即使在此缩小的空间中解决问题在计算上很方便,也可以通过将完整有限元解决方案与缩小的解决方案之间的误差上限进行上限来获得非常好的近似值。最后,我们通过不同的测试案例评估了该方法的适用性,获得了令人满意的结果。

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