Muti-fidelity Stochastic Collocation methods using Model Reduction techniques

dc.contributor.advisorSeshaiyer, Padmanabhan
dc.contributor.authorRaissi, Maziar
dc.creatorRaissi, Maziar
dc.date.accessioned2013-08-19T21:16:34Z
dc.date.available2013-08-19T21:16:34Z
dc.date.issued2013-08
dc.description.abstractOver the last few years there have been dramatic advances in our understanding of mathematical and computational models of complex systems in the presence of uncertainty. This has led to a growth in the area of uncertainty quantification as well as the need to develop efficient, scalable, stable and convergent computational methods for solving differential equations with random inputs. Stochastic Galerkin methods based on polynomial chaos expansions have shown superiority to other non-sampling and many sampling techniques. However, for complicated governing equations numerical implementations of stochastic Galerkin methods can become non-trivial. On the other hand, Monte Carlo and other traditional sampling methods, are straightforward to implement. However, they do not offer as fast convergence rates as stochastic Galerkin. Other numerical approaches are the stochastic collocation (SC) methods, which inherit both, the ease of implementation of Monte Carlo and the robustness of stochastic Galerkin to a great deal. However, stochastic collocation and its powerful extensions, e.g. sparse grid stochastic collocation, can simply fail to handle more levels of complication. The seemingly innocent Burgers equation driven by Brownian motion is such an example. In this work we propose a novel enhancement to stochastic collocation methods using deterministic model reduction techniques that can handle this pathological example and hopefully other more complicated equations like Stochastic Navier Stokes. Our numerical results show the efficiency of the proposed technique. We also perform a mathematically rigorous study of linear parabolic partial differential equations with random forcing terms. Justified by the truncated Karhunen-Lo\`{e}ve expansions, the input data are assumed to be represented by a finite number of random variables. A rigorous convergence analysis of our method applied to parabolic partial differential equations with random forcing terms, supported by numerical results, shows that the proposed technique is not only reliable and robust but also very efficient.
dc.format.extent80 pages
dc.identifier.urihttps://hdl.handle.net/1920/8364
dc.language.isoen
dc.rightsCopyright 2013 Maziar Raissi
dc.subjectApplied mathematics
dc.subjectMathematics
dc.subjectStatistics
dc.subjectFinite Element
dc.subjectProper Orthogonal Decomposition
dc.subjectSmolyak Algorithm
dc.subjectSparse Grids
dc.subjectStochastic Collocation
dc.subjectStochastic Partial Differential Equations
dc.titleMuti-fidelity Stochastic Collocation methods using Model Reduction techniques
dc.typeDissertation
thesis.degree.disciplineMathematics
thesis.degree.grantorGeorge Mason University
thesis.degree.levelDoctoral

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