罕见事件情景下直径约束可靠性估计的统计方法

María Elisa Bertinat, H. Cancela, Maria Fernanda Gonzalez, F. Robledo, P. Romero
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引用次数: 2

摘要

所研究的对象是与每个图相关联的度量,称为直径约束可靠性。直径约束可靠度的精确评估属于NP-Hard问题,在大型图中变得难以实现。在文献中,受统计学、组合学、代数和其他知识分支的启发,已经开发了几种估计方法。本文主要研究罕见事件情景下直径约束可靠性的统计评估。在这些假设(高可靠网络)下,粗糙蒙特卡罗方法是不准确的。更复杂的方法同时满足精度和有界相对误差。我们比较了近似零方差重要抽样(AZVIS)和递归方差约简(RVR)两种方差约简方法的性能。这些方法在精度和计算量方面与粗糙蒙特卡罗方法进行了比较。数值比较显示了这些替代统计方法在全局性能上的改进。本文最后讨论了一种新的混合方法来解决鲁棒网络中罕见故障情况下的网络可靠性分析问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical methods for diameter constrained reliability estimation in rare event scenarios
The object under study is a metric associated to each graph, called diameter constrained reliability. The exact evaluation of the diameter constrained reliability belongs to the class of NP-Hard problems, and becomes prohibitive in large graphs. In the literature, several estimation methods have been developed, inspired in statistics, combinatorics, algebra and other branches of knowledge. We are focused on the statistical evaluation of the diameter constrained reliability under rare event scenarios. Under these assumptions (highly reliable networks), Crude Monte Carlo method is not accurate. More sophisticated methods meet both accuracy and bounded relative error. We compare the performance of two variance reduction methods, to know, Approximate Zero Variance Importance Sampling (AZVIS) and Recursive Variance Reduction (RVR). These methods are compared to Crude Monte Carlo in terms of accuracy and computational effort. Numerical comparisons show the improvement in the global performance of these alternative statistical methods. The paper is closed with a discussion of novel hybrid methods to address network reliability analysis in robust networks, when failures represent a rare event.
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