An Information Geometry Approach to Robustness Analysis for the Uncertainty Quantification of Computer Codes
收藏Taylor & Francis Group2022-01-31 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/An_Information_Geometry_Approach_to_Robustness_Analysis_for_the_Uncertainty_Quantification_of_Computer_Codes/14248538/1
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资源简介:
Robustness analysis is an emerging field in the uncertainty quantification domain. It involves analyzing the response of a computer model—which has inputs whose exact values are unknown—to the perturbation of one or several of its input distributions. Practical robustness analysis methods therefore require a coherent methodology for perturbing distributions; we present here one such rigorous method, based on the Fisher distance on manifolds of probability distributions. Further, we provide a numerical method to calculate perturbed densities in practice which comes from Lagrangian mechanics and involves solving a system of ordinary differential equations. The method introduced for perturbations is then used to compute quantile-related robustness indices. We illustrate these “perturbed-law based” indices on several numerical models. We also apply our methods to an industrial setting: the simulation of a loss of coolant accident in a nuclear reactor, where several dozen of the model’s physical parameters are not known exactly, and where limited knowledge on their distributions is available.
提供机构:
Iooss, Bertrand; Gauchy, Clement; Sueur, Roman; Stenger, Jerome
创建时间:
2021-03-19



