Inverse Subspace Iteration for Spectral Stochastic Finite Element Methods
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Sousedik, Bedrich; Elman, Howard C.; Inverse Subspace Iteration for Spectral Stochastic Finite Element Methods ; SIAM/ASA Journal on Uncertainty Quantification, 4(1), 163–189, 25 February, 2016; https://doi.org/10.1137/140999359
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© 2019, Society for Industrial and Applied Mathematics and American Statistical Association.
© 2019, Society for Industrial and Applied Mathematics and American Statistical Association.
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Abstract
We study random eigenvalue problems in the context of spectral stochastic finite elements. In particular, given a parameter-dependent, symmetric positive-definite matrix operator, we explore the performance of algorithms for computing its eigenvalues and eigenvectors represented using polynomial chaos expansions. We formulate a version of stochastic inverse subspace iteration, which is based on the stochastic Galerkin finite element method, and we compare its accuracy with that of Monte Carlo and stochastic collocation methods. The coefficients of the eigenvalue expansions are computed from a stochastic Rayleigh quotient. Our approach allows the computation of interior eigenvalues by deflation methods, and we can also compute the coefficients of multiple eigenvectors using a stochastic variant of the modified Gram--Schmidt process. The effectiveness of the methods is illustrated by numerical experiments on benchmark problems arising from vibration analysis.
