Fast parallel kriging-based stepwise uncertainty reduction with application to the identification of an excursion setReportar como inadecuado




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* Corresponding author 1 IMSV - Institute of Mathematical Statistics and Actuarial Science Bern 2 GdR MASCOT-NUM - Méthodes d-Analyse Stochastique des Codes et Traitements Numériques 3 E3S - Supélec Sciences des Systèmes Gif-sur-Yvette 4 CERFACS - Centre Européen de Recherche et de Formation Avancée en Calcul Scientifique 5 IRSN - Institut de radioprotection et de sûreté nucléaire

Abstract : Stepwise Uncertainty Reduction SUR strategies aim at constructing a sequence of sampling points for a function f : Rd → R, in such a way that the residual uncertainty about a quantity of interest becomes small. In the context of Gaussian Process-based approximation of computer experiments, these strategies have been shown to be particularly efficient for the problem of estimating the volume of excursion of a function f above a threshold. However, these strategies remain difficult to use in practice because of their high computational complexity, and they only deliver at each iteration a single point to evaluate. In this paper we introduce parallel sampling criteria, which allow selecting several sampling points simultaneously. Such criteria are of particular interest when the function f is expensive to evaluate and many CPUs are available. We also manage to drastically reduce the computational cost of these strategies using closed form expressions. We illustrate their performances in various numerical experiments, including a nuclear safety test case.

Keywords : Computer experiments Gaussian processes Sequential design Probability of failure estimation Metamodel-based inversion Active learning





Autor: Clément Chevalier - Julien Bect - David Ginsbourger - Emmanuel Vazquez - Victor Picheny - Yann Richet -

Fuente: https://hal.archives-ouvertes.fr/



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