4.7 Article

Rare event estimation with sequential directional importance sampling

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STRUCTURAL SAFETY
卷 100, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.strusafe.2022.102291

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Reliability analysis; Directional sampling; Markov chain; Rare event; Coordinate transformation

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This paper proposes a sequential directional importance sampling (SDIS) method for rare event estimation. The method expresses a small failure probability in terms of a sequence of auxiliary failure probabilities, estimated using Monte Carlo simulation and directional importance sampling. The method outperforms existing sequential sampling reliability methods, as demonstrated by experiments.
In this paper, we propose a sequential directional importance sampling (SDIS) method for rare event estimation. SDIS expresses a small failure probability in terms of a sequence of auxiliary failure probabilities, defined by magnifying the input variability. The first probability in the sequence is estimated with Monte Carlo simulation in Cartesian coordinates, and all the subsequent ones are computed with directional importance sampling in polar coordinates. Samples from the directional importance sampling densities used to estimate the intermediate probabilities are drawn in a sequential manner through a resample-move scheme. The latter is conveniently performed in Cartesian coordinates and directional samples are obtained through a suitable transformation. For the move step, we discuss two Markov Chain Monte Carlo (MCMC) algorithms for application in low and high -dimensional problems. Finally, an adaptive choice of the parameters defining the intermediate failure proba-bilities is proposed and the resulting coefficient of variation of the failure probability estimate is analyzed. The proposed SDIS method is tested on five examples in various problem settings, which demonstrate that the method outperforms existing sequential sampling reliability methods.

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