4.7 Article

Multifidelity probability estimation via fusion of estimators

Journal

JOURNAL OF COMPUTATIONAL PHYSICS
Volume 392, Issue -, Pages 385-402

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2019.04.071

Keywords

Multifidelity modeling; Uncertainty quantification; Information fusion; Reduced-order modeling; Failure probability estimation; Turbulent jet

Funding

  1. Defense Advanced Research Projects Agency [EQUiPS program] [W911NF-15-2-0121]
  2. Air Force [Center of Excellence on Multi-Fidelity Modeling of Rocket Combustor Dynamics] [FA9550-17-1-0195]
  3. US Department of Energy, Office of Advanced Scientific Computing Research (ASCR) [Applied Mathematics Program] [DE-FG02-08ER2585, DE-SC0009297]

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This paper develops a multifidelity method that enables estimation of failure probabilities for expensive-to-evaluate models via information fusion and importance sampling. The presented general fusion method combines multiple probability estimators with the goal of variance reduction. We use low-fidelity models to derive biasing densities for importance sampling and then fuse the importance sampling estimators such that the fused multifidelity estimator is unbiased and has mean-squared error lower than or equal to that of any of the importance sampling estimators alone. By fusing all available estimators, the method circumvents the challenging problem of selecting the best biasing density and using only that density for sampling. A rigorous analysis shows that the fused estimator is optimal in the sense that it has minimal variance amongst all possible combinations of the estimators. The asymptotic behavior of the proposed method is demonstrated on a convection-diffusion-reaction partial differential equation model for which 10(5) samples can be afforded. To illustrate the proposed method at scale, we consider a model of a free plane jet and quantify how uncertainties at the flow inlet propagate to a quantity of interest related to turbulent mixing. Compared to an importance sampling estimator that uses the high-fidelity model alone, our multifidelity estimator reduces the required CPU time by 65% while achieving a similar coefficient of variation. (C) 2019 Elsevier Inc. All rights reserved.

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