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Rare event simulation in finite-infinite dimensional space

机译:有限-无限维空间中的稀有事件模拟

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Modern engineering systems are becoming increasingly complex. Assessing their risk by simulation is intimately related to the efficient generation of rare failure events. Subset Simulation is an advanced Monte Carlo method for risk assessment and it has been applied in different disciplines. Pivotal to its success is the efficient generation of conditional failure samples, which is generally non-trivial. Conventionally an independent-component Markov Chain Monte Carlo (MCMC) algorithm is used, which is applicable to high dimensional problems (i.e., a large number of random variables) without suffering from 'curse of dimension'. Experience suggests that the algorithm may perform even better for high dimensional problems. Motivated by this, for any given problem we construct an equivalent problem where each random variable is represented by an arbitrary (hence possibly infinite) number of 'hidden' variables. We study analytically the limiting behavior of the algorithm as the number of hidden variables increases indefinitely. This leads to a new algorithm that is more generic and offers greater flexibility and control. It coincides with an algorithm recently suggested by independent researchers, where a joint Gaussian distribution is imposed between the current sample and the candidate. The present work provides theoretical reasoning and insights into the algorithm. (C) 2015 Elsevier Ltd. All rights reserved.
机译:现代工程系统变得越来越复杂。通过仿真评估其风险与有效生成罕见故障事件密切相关。子集模拟是一种用于风险评估的高级蒙特卡洛方法,已应用于不同学科。成功的关键在于条件失败样本的有效生成,这通常是不重要的。常规上,使用独立分量的马尔可夫链蒙特卡洛(MCMC)算法,该算法适用于高维问题(即大量随机变量),而不会遭受“维数诅咒”。经验表明,该算法在处理高维问题时可能会表现更好。因此,对于任何给定的问题,我们都会构造一个等效问题,其中每个随机变量都由任意(因此可能是无限个)“隐藏”变量表示。随着隐藏变量数量的无限增加,我们分析地研究了该算法的极限行为。这导致了一种更通用的新算法,并提供了更大的灵活性和控制力。它与独立研究人员最近提出的算法相吻合,该算法在当前样本和候选对象之间施加了联合高斯分布。本工作提供了理论推理和对该算法的见解。 (C)2015 Elsevier Ltd.保留所有权利。

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