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A new adaptive importance sampling scheme for reliability calculations

机译:一种用于可靠性计算的新的自适应重要性抽样方案

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An adaptive importance sampling methodology is proposed to compute the multidimensional integrals encountered in reliability analysis. It is based on a Markov simulation algorithm due to Metropolis et al. (Metropolis, Rosenbluth, Rosenbluth and Teller, Equations of state calculatons by fast computing machines. Journal of Chemical Physics, 1953,21(6): 1087- 1092). In the proposed methodology, samples are simulated as the states of a Markov chain and are distributed asymptotically according to the optimal importance sampling density. A kernel sampling density is then constructed from these samples which is used as the sampling density in an importance sampling simulation. The Markov chain samples populate the region of higher probability density in the failure region and so the kernel sampling density approx- imates the optimal importance sampling density for a large variety of shapes of the failure region. This adaptive feature is insensitive to the probability level to be estimated. A variety of numerical examples demonstrates the accuracy, efficiency and robustness of the methodology.
机译:提出了一种自适应重要性抽样方法,以计算可靠性分析中遇到的多维积分。它基于Metropolis等人的马尔可夫仿真算法。 (Metropolis,Rosenbluth,Rosenbluth和Teller,通过快速计算机的状态计算方程。化学物理学报,1953,21(6):1087-1092)。在所提出的方法中,将样本模拟为马尔可夫链的状态,并根据最佳重要性抽样密度渐近分布。然后从这些样本中构造内核采样密度,该重要性采样密度在重要性采样模拟中用作采样密度。马尔可夫链样本填充了故障区域中较高概率密度的区域,因此核采样密度近似于各种形状的故障区域的最佳重要性采样密度。该自适应特征对要估计的概率水平不敏感。各种数值示例证明了该方法的准确性,效率和鲁棒性。

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