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research article

Implementation of optimal Galerkin and Collocation approximations of PDEs with Random Coefficients

Back, Joakim
•
Nobile, Fabio  
•
Tamellini, Lorenzo  
Show more
2011
ESAIM Proceedings

In this work we first focus on the Stochastic Galerkin approximation of the solution u of an elliptic stochastic PDE. We rely on sharp estimates for the decay of the coefficients of the spectral expansion of u on orthogonal polynomials to build a sequence of polynomial subspaces that features better convergence properties compared to standard polynomial subspaces such as Total Degree or Tensor Product. We consider then the Stochastic Collocation method, and use the previous estimates to introduce a new effective class of Sparse Grids, based on the idea of selecting a priori the most profitable hierarchical surpluses, that, again, features better convergence properties compared to standard Smolyak or tensor product grids.

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Type
research article
DOI
10.1051/proc/201133002
Author(s)
Back, Joakim
Nobile, Fabio  
Tamellini, Lorenzo  
Tempone, Raul
Date Issued

2011

Published in
ESAIM Proceedings
Volume

33

Start page

10

End page

21

Subjects

Uncertainty Quantification

•

PDEs with random data

•

elliptic equations

•

multivariate polynomial approximation

•

Best M-Terms approximation

•

Stochastic Galerkin methods

•

Smolyak approximation

•

Sparse grids

•

Stochastic Collocation methods

Note

CANUM 2010, 40e Congrès National d'Analyse Numérique

Editorial or Peer reviewed

REVIEWED

Written at

OTHER

EPFL units
CSQI  
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/79591
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