Optimality of adaptive Galerkin methods for random parabolic partial differential equations
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摘要
Galerkin discretizations of a class of parametric and random parabolic partial differential equations (PDEs) are considered. The parabolic PDEs are assumed to depend on a vector y=(y1,y2,…) of possibly countably many parameters yj which are assumed to take values in [−1,1]. Well-posedness of weak formulations of these parametric equations in suitable Bochner spaces is established. Adaptive Galerkin discretizations of the equation based on a tensor product of a generalized polynomial chaos in the parameter domain Γ=[−1,1]N, and of suitable wavelet bases in the time interval I=[0,T] and the spatial domain D⊂Rd are proposed and their optimality is established.
论文关键词:35R60,47B80,60H35,65C20,65N12,65N22,65J10,65Y20,Partial differential equations with random coefficients,Parabolic differential equations,Uncertainty quantification,Stochastic finite element methods,Adaptive methods,Wavelets
论文评审过程:Received 7 April 2013, Revised 30 September 2013, Available online 21 December 2013.
论文官网地址:https://doi.org/10.1016/j.cam.2013.12.031