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A double-loop Kriging model algorithm combined with importance sampling for time-dependent reliability analysis

  • 11-08-2023
  • Original Article
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Abstract

The article discusses the challenges of random uncertainties in the service and manufacturing processes of structures, highlighting the need for time-dependent reliability analysis. It reviews various existing methods, including the quasi-static method, crossing rate method, minimum value method, and surrogate model-based method. The focus is on the double-loop Kriging (DLK) model algorithm, which is combined with importance sampling (IS) to improve the efficiency and robustness of time-dependent reliability analysis. The improved expected improvement learning strategy in the inner loop and the adaptive learning strategy in the outer loop are key innovations. The IS-DLK method is validated through several examples, demonstrating its superiority in terms of computational efficiency and accuracy compared to existing methods. The article concludes by emphasizing the advantages of the IS-DLK method and its potential applications in high-dimensional problems.

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Title
A double-loop Kriging model algorithm combined with importance sampling for time-dependent reliability analysis
Authors
Hengchao Li
Zhenzhou Lu
Kaixuan Feng
Publication date
11-08-2023
Publisher
Springer London
Published in
Engineering with Computers / Issue 3/2024
Print ISSN: 0177-0667
Electronic ISSN: 1435-5663
DOI
https://doi.org/10.1007/s00366-023-01879-8
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