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Multi-point Bayesian active learning reliability analysis

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autorschaft

  • Tong Zhou
  • Xujia Zhu
  • Tong Guo
  • You Dong
  • Michael Beer

Externe Organisationen

  • Hong Kong University of Science and Technology
  • CentraleSupélec
  • Universität Paris-Saclay
  • CNRS Open Research Data Department (DDOR)
  • Southeast University (SEU)
  • Hong Kong Polytechnic University
  • The University of Liverpool
  • Tongji University
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Details

OriginalspracheEnglisch
Aufsatznummer102557
Seitenumfang24
FachzeitschriftStructural safety
Jahrgang114
Frühes Online-Datum6 Dez. 2024
PublikationsstatusElektronisch veröffentlicht (E-Pub) - 6 Dez. 2024

Abstract

This manuscript presents a novel Bayesian active learning reliability method integrating both Bayesian failure probability estimation and Bayesian decision-theoretic multi-point enrichment process. First, an epistemic uncertainty measure called integrated margin probability (IMP) is proposed as an upper bound for the mean absolute deviation of failure probability estimated by Kriging. Then, adhering to the Bayesian decision theory, a look-ahead learning function called multi-point stepwise margin reduction (MSMR) is defined to quantify the possible reduction of IMP brought by adding a batch of new samples in expectation. The cost-effective implementation of MSMR-based multi-point enrichment process is conducted by three key workarounds: (a) Thanks to analytical tractability of the inner integral, the MSMR reduces to a single integral. (b) The remaining single integral in the MSMR is numerically computed with the rational truncation of the quadrature set. (c) A heuristic treatment of maximizing the MSMR is devised to fastly select a batch of best next points per iteration, where the prescribed scheme or adaptive scheme is used to specify the batch size. The proposed method is tested on two benchmark examples and two dynamic reliability problems. The results indicate that the adaptive scheme in the MSMR gains a good balance between the computing resource consumption and the overall computational time. Then, the MSMR fairly outperforms those existing leaning functions and parallelization strategies in terms of the accuracy of failure probability estimate, the number of iterations, as well as the number of performance function evaluations, especially in complex dynamic reliability problems.

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Multi-point Bayesian active learning reliability analysis. / Zhou, Tong; Zhu, Xujia; Guo, Tong et al.
in: Structural safety, Jahrgang 114, 102557, 05.2025.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Zhou, T., Zhu, X., Guo, T., Dong, Y., & Beer, M. (2025). Multi-point Bayesian active learning reliability analysis. Structural safety, 114, Artikel 102557. Vorabveröffentlichung online. https://doi.org/10.1016/j.strusafe.2024.102557
Zhou T, Zhu X, Guo T, Dong Y, Beer M. Multi-point Bayesian active learning reliability analysis. Structural safety. 2025 Mai;114:102557. Epub 2024 Dez 6. doi: 10.1016/j.strusafe.2024.102557
Zhou, Tong ; Zhu, Xujia ; Guo, Tong et al. / Multi-point Bayesian active learning reliability analysis. in: Structural safety. 2025 ; Jahrgang 114.
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AU - Zhou, Tong

AU - Zhu, Xujia

AU - Guo, Tong

AU - Dong, You

AU - Beer, Michael

N1 - Publisher Copyright: © 2024

PY - 2024/12/6

Y1 - 2024/12/6

N2 - This manuscript presents a novel Bayesian active learning reliability method integrating both Bayesian failure probability estimation and Bayesian decision-theoretic multi-point enrichment process. First, an epistemic uncertainty measure called integrated margin probability (IMP) is proposed as an upper bound for the mean absolute deviation of failure probability estimated by Kriging. Then, adhering to the Bayesian decision theory, a look-ahead learning function called multi-point stepwise margin reduction (MSMR) is defined to quantify the possible reduction of IMP brought by adding a batch of new samples in expectation. The cost-effective implementation of MSMR-based multi-point enrichment process is conducted by three key workarounds: (a) Thanks to analytical tractability of the inner integral, the MSMR reduces to a single integral. (b) The remaining single integral in the MSMR is numerically computed with the rational truncation of the quadrature set. (c) A heuristic treatment of maximizing the MSMR is devised to fastly select a batch of best next points per iteration, where the prescribed scheme or adaptive scheme is used to specify the batch size. The proposed method is tested on two benchmark examples and two dynamic reliability problems. The results indicate that the adaptive scheme in the MSMR gains a good balance between the computing resource consumption and the overall computational time. Then, the MSMR fairly outperforms those existing leaning functions and parallelization strategies in terms of the accuracy of failure probability estimate, the number of iterations, as well as the number of performance function evaluations, especially in complex dynamic reliability problems.

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