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A subset multicanonical Monte Carlo method for simulating rare failure events

机译:用于模拟稀有失效事件的子集多谐像蒙特卡罗方法

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Estimating failure probabilities of engineering systems is an important problem in many engineering fields. In this work we consider such problems where the failure probability is extremely small (e.g. <= 10(-10)). In this case, standard Monte Carlo methods are not feasible due to the extraordinarily large number of samples required. To address these problems, we propose an algorithm that combines the main ideas of two very powerful failure probability estimation approaches: the subset simulation (SS) and the multicanonical Monte Carlo (MMC) methods. Unlike the standard MMC which samples in the entire domain of the input parameter in each iteration, the proposed subset MMC algorithm adaptively performs MMC simulations in a subset of the state space, which improves the sampling efficiency. With numerical examples we demonstrate that the proposed method is significantly more efficient than both of the SS and the MMC methods. Moreover, like the standard MMC, the proposed algorithm can reconstruct the complete distribution function of the parameter of interest and thus can provide more information than just the failure probabilities of the systems. (C) 2017 Elsevier Inc. All rights reserved.
机译:估算工程系统的失败概率是许多工程领域的重要问题。在这项工作中,我们考虑失败概率非常小的问题(例如<= 10(-10))。在这种情况下,由于所需的大量样品,标准蒙特卡罗方法是不可行的。为了解决这些问题,我们提出了一种算法,该算法结合了两个非常强大的失效概率估计方法的主要思想:子集仿真(SS)和多谐形蒙特卡罗(MMC)方法。与在每次迭代中输入参数的整个域中的标准MMC不同,所提出的子集MMC算法在状态空间的子集中自适应地执行MMC模拟,这提高了采样效率。利用数值示例,我们证明所提出的方法比SS和MMC方法都显着更有效。此外,与标准MMC一样,所提出的算法可以重建感兴趣的参数的完整分发功能,因此可以提供比系统的故障概率更多的信息。 (c)2017年Elsevier Inc.保留所有权利。

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