Explicit cost bounds of stochastic Galerkin approximations for parameterized PDEs with random coefficients
Nick Dexter, Clayton Webster, and Guannan Zhang

TL;DR
This paper provides a detailed complexity analysis of stochastic Galerkin finite element methods for parameterized PDEs with random coefficients, establishing explicit cost bounds and comparing efficiency with stochastic collocation methods.
Contribution
It introduces rigorous cost estimates for SGFEM, including nonlinear coefficients, and compares its efficiency with stochastic collocation methods.
Findings
SGFEM is more efficient for affine coefficients.
Cost bounds are explicitly derived in terms of FLOPs.
Nonlinear coefficients significantly increase computational cost.
Abstract
This work analyzes the overall computational complexity of the stochastic Galerkin finite element method (SGFEM) for approximating the solution of parameterized elliptic partial differential equations with both affine and non-affine random coefficients. To compute the fully discrete solution, such approaches employ a Galerkin projection in both the deterministic and stochastic domains, produced here by a combination of finite elements and a global orthogonal basis, defined on an isotopic total degree index set, respectively. To account for the sparsity of the resulting system, we present a rigorous cost analysis that considers the total number of coupled finite element systems that must be simultaneously solved in the SGFEM. However, to maintain sparsity as the coefficient becomes increasingly nonlinear in the parameterization, it is necessary to also approximate the coefficient by an…
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