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Distribution modeling for reliability analysis: Impact of multiple dependences and probability model selection

机译:可靠性分析的分布模型:多重依赖和概率模型选择的影响

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摘要

Reliability analysis requires modeling of joint probability distribution of uncertain parameters, which can be a challenge since the random variables representing the parameter uncertainties may be correlated. For convenience, a Gaussian data dependence is commonly assumed for correlated random variables. This paper first investigates the effect of multidimensional non-Gaussian data dependences underlying the multivariate probability distribution on reliability results. Using different bivariate copulas in a vine structure, various data dependences can be modeled. The associated copula parameters are identified from available statistical information by moment matching techniques. After the development of the vine copula model for representing the multivariate probability distribution, the reliability involving correlated random variables is evaluated based on the Rosenblatt transformation. The impact of data dependence is significant because a large deviation in failure probability is observed, which emphasizes the need for accurate dependence characterization. A practical method for dependence modeling based on limited data is thus provided. The result demonstrates that the non-Gaussian data dependences can be real in practice, and the reliability can be biased if the Gaussian dependence is used inappropriately. Moreover, the effect of conditioning order on reliability should not be overlooked except that the vine structure contains only one type of copula.
机译:可靠性分析需要对不确定参数的联合概率分布进行建模,这可能是一个挑战,因为代表参数不确定性的随机变量可能是相关的。为了方便起见,通常假设相关随机变量为高斯数据相关性。本文首先研究了多维概率分布基础上的多维非高斯数据依赖性对可靠性结果的影响。在藤蔓结构中使用不同的双变量系脉,可以对各种数据依赖性进行建模。通过矩匹配技术从可用的统计信息中识别关联的copula参数。在建立用于表示多元概率分布的葡萄系模型后,基于Rosenblatt变换评估了涉及相关随机变量的可靠性。数据依赖性的影响是重要的,因为观察到故障概率有很大的偏差,这强调了对准确的依赖性表征的需求。因此,提供了一种基于有限数据的依赖关系建模的实用方法。结果表明,非高斯数据依赖关系在实践中是真实存在的,如果不恰当地使用高斯依赖关系,则可靠性可能存在偏差。此外,调理顺序对可靠性的影响不容忽视,除了葡萄树结构仅包含一种系铃。

著录项

  • 来源
    《Applied Mathematical Modelling》 |2018年第7期|483-499|共17页
  • 作者

    Fan Wang; Heng Li;

  • 作者单位

    Department of Building and Real Estate, The Hong Kong Polytechnic University,Department of Civil Engineering and Mechanics, Huazhong University of Science and Technology,School of Resources and Civil Engineering, Wuhan Institute of Technology;

    Department of Building and Real Estate, The Hong Kong Polytechnic University;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Reliability; Data dependence; Probability distribution; Copula;

    机译:可靠性;数据依赖性;概率分布;Copula;

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