Accelerating stochastic collocation methods for partial differential equations with random input data
Diego Galindo, Peter Jantsch, Clayton G. Webster, Guannan Zhang

TL;DR
This paper introduces an acceleration technique for stochastic collocation methods solving PDEs with random inputs, significantly reducing computational complexity by predicting solutions at collocation points to improve solver efficiency.
Contribution
The work develops a novel acceleration approach for stochastic collocation that leverages hierarchical interpolant predictions to reduce solver iterations in PDEs with random data.
Findings
Reduces total solver iterations in stochastic collocation
Demonstrates effectiveness on linear and nonlinear PDEs
Provides rigorous complexity analysis
Abstract
This work proposes and analyzes a generalized acceleration technique for decreasing the computational complexity of using stochastic collocation (SC) methods to solve partial differential equations (PDEs) with random input data. The SC approaches considered in this effort consist of sequentially constructed multi-dimensional Lagrange interpolant in the random parametric domain, formulated by collocating on a set of points so that the resulting approximation is defined in a hierarchical sequence of polynomial spaces of increasing fidelity. Our acceleration approach exploits the construction of the SC interpolant to accelerate the underlying ensemble of deterministic solutions. Specifically, we predict the solution of the parametrized PDE at each collocation point on the current level of the SC approximation by evaluating each sample with a previously assembled lower fidelity interpolant,…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Advanced Numerical Methods in Computational Mathematics · Wind and Air Flow Studies
