Hybridized Reduced Basis Method and Generalized Polynomial Chaos for Solving Partial Differential Eq

来源 :第八届工业与应用数学国际大会 | 被引量 : 0次 | 上传用户:mosalin
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  The generalized Polynomial Chaos(gPC)method is a popular method for solving partial differential equations(PDEs)with random parameters.However,when the probability space has high dimensionality,the solution ensemble size required for an accurate gPC approximation can be large.We show that this process can be made more efficient by closely hybridizing gPC with Reduced Basis Method(RBM).Since the reduced model is more efficient,costs are significantly reduced.
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