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The effect of copulas on time-variant reliability involving time-continuous stochastic processes

机译:copula对涉及时间连续随机过程的时变可靠性的影响

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In structural reliability the dependence structure between random variables is almost exclusively modeled by Gauss (normal or Gaussian) copula; however, this implicit assumption is typically not corroborated. This paper is focusing on time-variant reliability problems with continuous stochastic processes, which are collection of dependent random variables and to our knowledge are not modeled by other than Gauss copula in structural reliability. Therefore, the aim of this contribution is to qualitatively and quantitatively analyze the impact of this copula assumption on failure probability. Three illustrative examples are studied considering bivariate Gauss, t, rotated Clayton, Gumbel, and rotated Gumbel copulas. Time variant actions are modeled as stationary, ergodic, continuous stochastic processes, and the PHI2 method is adopted for the analyses. The calculations show that the copula function has significant effect on failure probability. In the studied examples, application of Gauss copula can four times underestimate or even 10 times overestimate failure probabilities obtained by other copulas. For normal structures agreement on copula type is recommended, while for safety critical ones inference of copula type from observations is advocated. If data are scare, multiple copula functions and model averaging could be used to explore this uncertainty. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在结构可靠性上,随机变量之间的依存关系几乎完全由高斯(正态或高斯)copula建模。但是,这种隐含假设通常无法得到证实。本文关注具有连续随机过程的时变可靠性问题,这些问题是因变量的集合,据我们所知,除结构可靠性之外,高斯copula算不上其他模型。因此,该贡献的目的是定性和定量地分析该copula假设对失效概率的影响。研究了三个说明性示例,其中考虑了双变量高斯,t,旋转的Clayton,Gumbel和旋转的Gumbel copulas。将时变动作建模为平稳,遍历,连续的随机过程,并采用PHI2方法进行分析。计算表明,copula函数对失效概率有显着影响。在所研究的示例中,高斯copula的应用可能会低估其他copula所获得的故障概率四倍,甚至高估十倍。对于正常结构,建议对copula类型达成一致,而对于安全性至关重要的结构,则建议从观察中推断copula类型。如果数据不足,可以使用多个copula函数和模型平均来探索这种不确定性。 (C)2017 Elsevier Ltd.保留所有权利。

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