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A comparison of matrix-free isogeometric Galerkin and collocation methods for Karhunen--Loève expansion (2101.00629v1)

Published 3 Jan 2021 in cs.CE

Abstract: Numerical computation of the Karhunen--Lo`eve expansion is computationally challenging in terms of both memory requirements and computing time. We compare two state-of-the-art methods that claim to efficiently solve for the K--L expansion: (1) the matrix-free isogeometric Galerkin method using interpolation based quadrature proposed by the authors in [1] and (2) our new matrix-free implementation of the isogeometric collocation method proposed in [2]. Two three-dimensional benchmark problems indicate that the Galerkin method performs significantly better for smooth covariance kernels, while the collocation method performs slightly better for rough covariance kernels.

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