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Correlation and Dependency in Multivariate Process Risk Assessment

机译:多元过程风险评估中的相关性和依赖性

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摘要

Process safety and risk assessment are often multidimensional and hence require the joint modeling of several potentially correlated random variables. Any effort to address the correlation among the input variables is important and could improve the accuracy in practical applications of risk assessment models. This paper discusses the problems with correlated variables used in risk assessment and presents a copula-based technique to model dependency among variables to improve uncertainty analysis. Using the copula approach, capturing the dependence structure among different risk factors and estimating the univariate risk marginals can be separated. This advantage simplifies the overall risk estimation for systems with multiple dependent risk sources. The advantage of the copula-based framework for generalization over the traditional correlation analysis technique is demonstrated using a case study. Methods are also presented for copula selection and estimation of the copula parameters.
机译:过程安全性和风险评估通常是多维的,因此需要对几个潜在相关的随机变量进行联合建模。解决输入变量之间的相关性的任何努力都是重要的,并且可以提高风险评估模型在实际应用中的准确性。本文讨论了风险评估中使用的相关变量存在的问题,并提出了一种基于copula的技术来对变量之间的依赖性进行建模,以改进不确定性分析。使用copula方法,可以分离不同风险因素之间的依赖关系结构并估计单变量风险边际。此优势简化了具有多个从属风险源的系统的总体风险估算。通过案例研究,证明了基于copula的泛化框架优于传统的相关分析技术。还提出了一些方法,用于选择和评估copula参数。

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