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Reliability Sensitivity Algorithm Based on Stratified Importance Sampling Method for Multiple Failure Modes Systems 被引量:7

Reliability Sensitivity Algorithm Based on Stratified Importance Sampling Method for Multiple Failure Modes Systems
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摘要 Combining the advantages of the stratified sampling and the importance sampling, a stratified importance sampling method (SISM) is presented to analyze the reliability sensitivity for structure with multiple failure modes. In the presented method, the variable space is divided into several disjoint subspace by n-dimensional coordinate planes at the mean point of the random vec- tor, and the importance sampling functions in the subspaces are constructed by keeping the sampling center at the mean point and augmenting the standard deviation by a factor of 2. The sample size generated from the importance sampling function in each subspace is determined by the contribution of the subspace to the reliability sensitivity, which can be estimated by iterative simulation in the sampling process. The formulae of the reliability sensitivity estimation, the variance and the coefficient of variation are derived for the presented SISM. Comparing with the Monte Carlo method, the stratified sampling method and the importance sampling method, the presented SISM has wider applicability and higher calculation efficiency, which is demonstrated by numerical examples. Finally, the reliability sensitivity analysis of flap structure is illustrated that the SISM can be applied to engineering structure. Combining the advantages of the stratified sampling and the importance sampling, a stratified importance sampling method (SISM) is presented to analyze the reliability sensitivity for structure with multiple failure modes. In the presented method, the variable space is divided into several disjoint subspace by n-dimensional coordinate planes at the mean point of the random vec- tor, and the importance sampling functions in the subspaces are constructed by keeping the sampling center at the mean point and augmenting the standard deviation by a factor of 2. The sample size generated from the importance sampling function in each subspace is determined by the contribution of the subspace to the reliability sensitivity, which can be estimated by iterative simulation in the sampling process. The formulae of the reliability sensitivity estimation, the variance and the coefficient of variation are derived for the presented SISM. Comparing with the Monte Carlo method, the stratified sampling method and the importance sampling method, the presented SISM has wider applicability and higher calculation efficiency, which is demonstrated by numerical examples. Finally, the reliability sensitivity analysis of flap structure is illustrated that the SISM can be applied to engineering structure.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2010年第6期660-669,共10页 中国航空学报(英文版)
基金 National Natural Science Foundation of China (10572117,10802063,50875213) Aeronautical Science Foundation of China (2007ZA53012) New Century Program For Excellent Talents of Ministry of Education of China (NCET-05-0868) National High-tech Research and Development Program (2007AA04Z401)
关键词 multiple failure modes reliability sensitivity Monte Carlo simulation stratified sampling method importance sam-piing method stratified importance sampling method (SISM) multiple failure modes reliability sensitivity Monte Carlo simulation stratified sampling method importance sam-piing method stratified importance sampling method (SISM)
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  • 1冯元生,结构可靠性,1991年
  • 2冯元生,Reliability End Sys Safety,1990年,27卷,323页
  • 3杨为民,系统可靠性数字仿真,1990年
  • 4裴鹿成,计算机随机模拟,1989年

共引文献7

同被引文献104

  • 1洪林雄,李华聪,彭凯,肖红亮,张煦.基于高效搜索方法的可靠性分析改进响应面法[J].北京航空航天大学学报,2020,46(1):95-102. 被引量:7
  • 2张峰,吕震宙.串联结构模糊可靠性灵敏度分析的自适应重要抽样法[J].西北工业大学学报,2009,27(2):162-167. 被引量:2
  • 3庞宝才,吕震宙,吕媛波.变量正态相关时模糊可靠性灵敏度分析的矩方法[J].西北工业大学学报,2009,27(4):486-491. 被引量:1
  • 4金伟良.结构可靠度数值模拟的新方法[J].建筑结构学报,1996,17(3):63-72. 被引量:23
  • 5Gargama H, Chaturvedi S K. Criticality assessment models for failure mode effects and criticality analysis using fuzzy logic[J]. IEEE Trans. on Reliability ,2010,60 (1) :102 - 110.
  • 6Ahammed M, Melehers R E. Gradient and parameter sensitivity esti- mation for systems evaluated using Monte Carlo analysis[J]. Relia- bility Engineering and System Safety, 2006,91 (5) : 594 - 601.
  • 7Chen L, Lti Z Z. A new numerical method for general failure proba- bility with fuzzy failure region [J]. Key Engineering Materials, 2007,102(3) :353 - 358.
  • 8Ni Z, Qiu Z P. Hybrid probabilistic fuzzy and non-probabilistic model of structural reliability[J]. Computers & Industrial Engi- neering ,2010,58(3) :463 - 467.
  • 9Dong Y G, Wang A N. A fuzzy reliability analysis based on the transformation between discrete fuzzy variables and discrete ran- dom variables[J]. International Journal of Reliability, Quality and Safety Engineering, 2006,10 (3) :25 - 35.
  • 10Fabio B, Franco B, Pier Giorgio M. Fuzzy reliability analysis of concrete structures[J]. Computers & Structures, 2004,82 (13) : 1033 - 1052.

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