Bayesian active learning line sampling with log-normal process for rare-event probability estimation

Chao Dang, Marcos A. Valdebenito, Pengfei Wei, Jingwen Song, Michael Beer

Research output: Contribution to journalArticlepeer-review

14 Scopus citations

Abstract

Line sampling (LS) stands as a powerful stochastic simulation method for structural reliability analysis, especially for assessing small failure probabilities. To further improve the performance of traditional LS, a Bayesian active learning idea has recently been pursued. This work presents another Bayesian active learning alternative, called ‘Bayesian active learning line sampling with log-normal process’ (BAL-LS-LP), to traditional LS. In this method, we assign an LP prior instead of a Gaussian process prior over the distance function so as to account for its non-negativity constraint. Besides, the approximation error between the logarithmic approximate distance function and the logarithmic true distance function is assumed to follow a zero-mean normal distribution. The approximate posterior mean and variance of the failure probability are derived accordingly. Based on the posterior statistics of the failure probability, a learning function and a stopping criterion are developed to enable Bayesian active learning. In the numerical implementation of the proposed BAL-LS-LP method, the important direction can be updated on the fly without re-evaluating the distance function. Four numerical examples are studied to demonstrate the proposed method. Numerical results show that the proposed method can estimate extremely small failure probabilities with desired efficiency and accuracy.

Original languageEnglish
Article number110053
JournalReliability Engineering and System Safety
Volume246
DOIs
StatePublished - Jun 2024

Keywords

  • Bayesian active learning
  • Gaussian process
  • Line sampling
  • Log-normal process
  • Numerical uncertainty
  • Structural reliability analysis

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