4.7 Article

Reliability analysis using adaptive Polynomial-Chaos Kriging and probability density evolution method

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.ress.2021.108283

关键词

Polynomial-Chaos Kriging; Probability density evolution method; PDEM-oriented expected improvement function; Active learning; Reliability analysis

资金

  1. National Natural Science Foundation of China [51878505]
  2. Natural Science Foundation of Shanghai [21ZR1425500]
  3. Ministry of Science and Technology of China [SLDRCE19-B-26]
  4. China Scholarship Council [202006260201]

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In this paper, an efficient reliability method called APCK-PDEM is developed, which combines adaptive Polynomial-Chaos Kriging and probability density evolution method. By proposing the notation of region of interest, this method can accurately estimate the failure probability and has high computational efficiency.
An efficient reliability method that combines adaptive Polynomial-Chaos Kriging (PC-Kriging) and probability density evolution method (PDEM) is developed, which is abbreviated as the APCK-PDEM. First, according to the relative contributions of different representative points to the failure probability calculated by the PDEM, the notation of region of interest (ROI) is proposed, in which the representative points make critical contributions to the resultant failure probability. Then, three key aspects involved in the proposed APCK-PDEM are addressed: (a) A new learning function called PDEM-oriented expected improvement function (PEIF) is devised to cater for the demand of PDEM on the PC-Kriging accuracy; (b) A pertinent convergence criterion is defined in terms of the bound of failure probability estimated by the APCK-PDEM; (c) Since the true value of the boundary of ROI is unknown in the PEIF, an iterative determination scheme of this metric is performed at each iteration during the adaptive sampling process. Three examples are studied to showcase the performance of APCK-PDEM, and comparisons are made against other existing reliability methods. Numerical analyses and results show that the APCK-PDEM gains satisfactory estimation accuracy and high computational efficiency.

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