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NUMERICAL SIMULATION ALGORITHM FOR RELIABILITY ANALYSIS OF COMPLEX STRUCTURAL SYSTEM BASED ON INTELLIGENT OPTIMIZATION

机译:基于智能优化的复杂结构系统可靠性数值模拟算法

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摘要

An efficient importance sampling algorithm is presented to analyze reliability of complex structural system with multiple failure modes and fuzzy-random uncertainties in basic variables and failure modes. In order to improve the sampling efficiency, the simulated annealing algorithm is adopted to optimize the density center of the importance sampling for each failure mode, and results that the more significant contribution the points make to fuzzy failure probability, the higher occurrence possibility the points are sampled. For the system with multiple fuzzy failure modes, a weighted and mixed importance sampling function is constructed. The contribution of each fuzzy failure mode to the system failure probability is represented by the appropriate factors, and the efficiency of sampling is improved furthermore. The variances and the coefficients of variation are derived for the failure probability estimations. Two examples are introduced to illustrate the rationality of the present method. Comparing with the direct Monte-Carlo method, the improved efficiency and the precision of the method are verified by the examples.
机译:提出了一种有效的重要性抽样算法,用于分析具有多种失效模式以及基本变量和失效模式具有模糊随机不确定性的复杂结构系统的可靠性。为了提高采样效率,采用模拟退火算法对每种失效模式的重要性采样的密度中心进行了优化,结果表明这些点对模糊失效概率的贡献越大,该点出现的可能性就越高。采样。对于具有多个模糊故障模式的系统,构造了加权混合重要性抽样函数。每种模糊失效模式对系统失效概率的贡献均由适当的因素表示,采样效率得到进一步提高。得出方差和变异系数,以进行故障概率估计。引入两个例子来说明本方法的合理性。通过实例验证了与直接蒙特卡洛方法相比,该方法的改进效率和精度。

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