Ensemble Grouping Strategies for Embedded Stochastic Collocation Methods Applied to Anisotropic Diffusion Problems
Author(s) -
Marta D’Elia,
Harold Edwards,
Jonathan Joseph Hu,
Eric Phipps,
S. Rajamanickam
Publication year - 2018
Publication title -
siam/asa journal on uncertainty quantification
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.094
H-Index - 29
ISSN - 2166-2525
DOI - 10.1137/16m1066324
Subject(s) - solver , parameterized complexity , mathematics , mathematical optimization , metric (unit) , measure (data warehouse) , computer science , collocation (remote sensing) , diffusion , algorithm , physics , data mining , operations management , economics , machine learning , thermodynamics
Previous work has demonstrated that propagating groups of samples, called ensembles, together through forward simulations can dramatically reduce the aggregate cost of sampling-based uncertainty propagation methods [E. Phipps, M. D'Elia, H. C. Edwards, M. Hoemmen, J. Hu, and S. Rajamanickam, SIAM J. Sci. Comput., 39 (2017), pp. C162--C193]. However, critical to the success of this approach when applied to challenging problems of scientific interest is the grouping of samples into ensembles to minimize the total computational work. For example, the total number of linear solver iterations for ensemble systems may be strongly influenced by which samples form the ensemble when applying iterative linear solvers to parameterized and stochastic linear systems. In this work we explore sample grouping strategies for local adaptive stochastic collocation methods applied to PDEs with uncertain input data, in particular canonical anisotropic diffusion problems where the diffusion coefficient is modeled by truncated ...
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