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A practical non-parametric copula algorithm for system reliability with correlations

机译:具有相关性的系统可靠性的实用非参数copula算法

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摘要

System reliability analysis involving correlated random variables is challenging because the failure probability cannot be uniquely determined under the given probability information. This paper proposes a system reliability evaluation method based on non-parametric copulas. The approximated joint probability distribution satisfying the constraints specified by correlations has the maximal relative entropy with respect to the joint probability distribution of independent random variables. Thus the reliability evaluation is unbiased from the perspective of information theory. The estimation of the non-parametric copula parameters from Pearson linear correlation, Spearman rank correlation, and Kendall rank correlation are provided, respectively. The approximated maximum entropy distribution is then integrated with the first and second order system reliability method. Four examples are adopted to illustrate the accuracy and efficiency of the proposed method. It is found that traditional system reliability method encodes excessive dependence information for correlated random variables and the estimated failure probability can be significantly biased. (C) 2019 Elsevier Inc. All rights reserved.
机译:涉及相关随机变量的系统可靠性分析具有挑战性,因为无法根据给定的概率信息唯一确定故障概率。提出了一种基于非参数关联的系统可靠性评估方法。满足相关性指定约束的近似联合概率分布相对于独立随机变量的联合概率分布具有最大的相对熵。因此,从信息论的角度来看,可靠性评估是公正的。分别提供了从皮尔森线性相关,斯皮尔曼等级相关和肯德尔等级相关对非参数copula参数的估计。然后,将近似的最大熵分布与一阶和二阶系统可靠性方法相结合。通过四个例子来说明所提方法的准确性和有效性。发现传统的系统可靠性方法对相关的随机变量编码了过多的依赖信息,并且估计的故障概率可能会明显偏差。 (C)2019 Elsevier Inc.保留所有权利。

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