Parallelizing Adaptive Reliability Analysis through Penalizing the Learning Function

File Type:
PDFItem Type:
Journal ArticleDate:
2024Access:
openAccessCitation:
Guangchen Wang, Michael Monaghan and Mimi Zhang, Parallelizing Adaptive Reliability Analysis through Penalizing the Learning Function, IEEE Transactions on Reliability, 2024Abstract:
Structural reliability analysis is essential for evaluating system failure probabilities under uncertainties, yet it often
faces computational efficiency challenges. While surrogate model
based techniques, including Kriging, are known for their high accuracy and efficiency, they typically employ a sequential learning
strategy, which limits their potential for parallel computation.
This paper introduces the Local Penalization Adaptive Learning
(LP-AL) method, which facilitates parallel adaptive reliability
analysis; LP-AL introduces a penalty function that emulates
the process of sequential learning strategies, thereby achieving
parallelization. The method also integrates a global error-based
stopping criterion and a sample pool reduction strategy to
enhance efficiency. We tested LP-AL with five commonly used
learning functions across various engineering scenarios. The
results demonstrate that LP-AL achieves high accuracy and
significantly reduces computational costs, making it a viable
approach for diverse structural reliability analysis tasks.
Sponsor
Grant Number
European Union’s Horizon 2021 doctoral network programme
Marie Sklodowska-Curie grant agreement No.101073507
Author's Homepage:
http://people.tcd.ie/zhangm3Description:
ACCEPTEDSponsor:
European Union’s Horizon 2021 doctoral network programmeType of material:
Journal ArticleCollections
Series/Report no:
IEEE Transactions on Reliability;Availability:
Full text availableMetadata
Show full item recordThe following license files are associated with this item: