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粒子群优化的Kriging近似模型及其在可靠性分析中的应用
引用本文:陈志英,任远,白广忱,高阳.粒子群优化的Kriging近似模型及其在可靠性分析中的应用[J].航空动力学报,2011,26(7):1522-1530.
作者姓名:陈志英  任远  白广忱  高阳
作者单位:1. 北京航空航天大学能源与动力工程学院,北京,100191
2. 中国航空工业集团公司贵州航空发动机研究所,贵州平坝,561102
基金项目:国家高技术研究发展计划(2006AA04Z405)
摘    要:将粒子群优化(PSO)算法引入Kriging建模过程,依靠PSO算法的群体搜索能力克服了模式搜索法单点序列搜索方式的局限性以及严重依赖于初猜解的缺点,保证了在任意初始条件下都能获取极大似然意义下的最优相关参数,从而有效确保了Kriging预测结果的最优无偏性.涡轮盘低循环疲劳可靠性分析实例表明,粒子群优化的Krigin...

关 键 词:粒子群优化  近似模型  Kriging方法  涡轮盘  疲劳可靠性
收稿时间:2010/6/23 0:00:00
修稿时间:2010/11/26 0:00:00

Particle swarm optimized Kriging approximate model and its application to reliability analysis
CHEN Zhi-ying,REN Yuan,BAI Guang-chen and GAO Yang.Particle swarm optimized Kriging approximate model and its application to reliability analysis[J].Journal of Aerospace Power,2011,26(7):1522-1530.
Authors:CHEN Zhi-ying  REN Yuan  BAI Guang-chen and GAO Yang
Institution:School of Jet Propulsion, Beijing University of Aeronautics and Astronautics,Beijing 100191,China;School of Jet Propulsion, Beijing University of Aeronautics and Astronautics,Beijing 100191,China;School of Jet Propulsion, Beijing University of Aeronautics and Astronautics,Beijing 100191,China;Guizhou Aeroengine Research Institute, Aviation Industry Corporation of China,Pingba Guizhou 561102,China
Abstract:Particle swarm optimization (PSO) algorithm was introduced into Kriging modeling process.By taking advantage of PSO's multi-point search ability,the limits of pattern search method's single-point search approach as well as its heavy dependence on the initial guess solution were overcome,so that the optimal correlation parameters in the maximum likelihood sense could be guaranteed under any initial conditions,and the optimal unbiased characteristic for the Kriging prediction could also be assured.A turbine disk low cycle fatigue(LCF)reliability analysis example indicates that the accuracy of the proposed PSO-Kriging in predicting the circumferential strain amplitude of the weakest point is higher than that of neural network on the order of magnitude,i.e.the maximum error decreases from 5.94% to 0.09%,so that it can replace the finite element program in Monte Carlo simulation without sacrificing the accuracy.Meanwhile,the time for PSO-Kriging's modeling and predicting is less than 1/10 consumed by a single finite element run.Due to high-accuracy prediction (the optimal unbiased characteristic assured by PSO) and relative low expense,the proposed PSO-Kriging is valuable for the reliability analysis of real engineering structures.
Keywords:particle swarm optimization  approximate model  Kriging method  turbine disk  fatigue reliability
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