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Adaptive multi-index collocation for uncertainty quantification and sensitivity analysis
Authors:John D Jakeman  Michael S Eldred  Gianluca Geraci  Alex Gorodetsky
Affiliation:1. Optimization and Uncertainty Quantification, Sandia National Laboratories, Albuquerque;2. Department of Aerospace Engineering, University of Michigan Ann Arbor, Ann Arbor
Abstract:In this paper, we present an adaptive algorithm to construct response surface approximations of high-fidelity models using a hierarchy of lower fidelity models. Our algorithm is based on multi-index stochastic collocation and automatically balances physical discretization error and response surface error to construct an approximation of model outputs. This surrogate can be used for uncertainty quantification (UQ) and sensitivity analysis (SA) at a fraction of the cost of a purely high-fidelity approach. We demonstrate the effectiveness of our algorithm on a canonical test problem from the UQ literature and a complex multiphysics model that simulates the performance of an integrated nozzle for an unmanned aerospace vehicle. We find that, when the input-output response is sufficiently smooth, our algorithm produces approximations that can be over two orders of magnitude more accurate than single fidelity approximations for a fixed computational budget.
Keywords:decision making  modeling  multifidelity  sensitivity analysis  simulation  uncertainty quantification  validation
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