Spectral methods for uncertainty quantification : with applications to computational fluid dynamics
- Authors
- Olivier Le Maı̂treOmar Knio
- Journal
- Springer eBooks
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About Spectral methods for uncertainty quantification : with applications to computational fluid dynamics
This paper, published in 2010, received 440 indexed citations . Written by Olivier Le Maı̂tre and Omar Knio covering the research area of Control and Systems Engineering and Statistics, Probability and Uncertainty. It is primarily cited by scholars working on Statistics, Probability and Uncertainty (331 citations), Environmental Engineering (117 citations), Civil and Structural Engineering (104 citations), Computational Mechanics (88 citations) and Computational Theory and Mathematics (84 citations). Published in Springer eBooks.
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This paper is also available at doi.org/w7917238.