Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6930643 | Journal of Computational Physics | 2016 | 16 Pages |
Abstract
Compressive sensing has become a powerful addition to uncertainty quantification in recent years. This paper identifies new bases for random variables through linear mappings such that the representation of the quantity of interest is more sparse with new basis functions associated with the new random variables. This sparsity increases both the efficiency and accuracy of the compressive sensing-based uncertainty quantification method. Specifically, we consider rotation-based linear mappings which are determined iteratively for Hermite polynomial expansions. We demonstrate the effectiveness of the new method with applications in solving stochastic partial differential equations and high-dimensional (O(100)) problems.
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Physical Sciences and Engineering
Computer Science
Computer Science Applications
Authors
Xiu Yang, Huan Lei, Nathan A. Baker, Guang Lin,