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2D Monte Carlo versus 2D fuzzy Monte Carlo health risk assessment

机译:二维蒙特卡洛与二维模糊蒙特卡洛健康风险评估

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Risk estimates can be calculated using crisp estimates of the exposure variables (i.e., contaminant concentration, contact rate, exposure frequency and duration, body weight, and averaging time). However, aggregate and cumulative exposure studies require a better understanding of exposure variables and uncertainty and variability associated with them. Probabilistic risk assessment (PRA) studies use probability distributions for one or more variables of the risk equation in order to quantitatively characterize variability and uncertainty. Two-dimensional Monte Carlo Analysis (2D MCA) is one of the advanced modeling approaches that may be used to conduct PRA studies. In this analysis the variables of the risk equation along with the parameters of these variables (for example mean and standard deviation for a normal distribution) are described in terms of probability density functions (PDFs). A variable described in this way is called a "second order random variable." Significant data or considerable insight to uncertainty associated with these variables is necessary to develop the appropriate PDFs for these random parameters. Typically, available data and accuracy and reliability of such data are not sufficient for conducting a reliable 2D MCA. Thus, other theories and computational methods that propagate uncertainty and variability in exposure and health risk assessment are needed. One such theory is possibility analysis based on fuzzy set theory, which allows the utilization of incomplete information (incomplete information includes vague and imprecise information that is not sufficient to generate probability distributions for the parameters of the random variables of the risk equation) together with expert judgment. In this paper, as an alternative to 2D MCA, we are proposing a 2D Fuzzy Monte Carlo Analysis (2D FMCA) to overcome this difficulty. In this approach, instead of describing the parameters of PDFs used in defining the variables of the risk equation as random variables, we describe them as fuzzy numbers. This approach introduces new concepts and risk characterization methods. In this paper we provide a comparison of these two approaches relative to their computational requirements, data requirements and availability. For a hypothetical case, we also provide a comperative interpretation of the results generated.
机译:可以使用暴露变量的明晰估计来计算风险估计(即污染物浓度,接触率,暴露频率和持续时间,体重和平均时间)。但是,汇总和累积暴露研究需要更好地了解暴露变量以及与之相关的不确定性和可变性。概率风险评估(PRA)研究使用风险方程的一个或多个变量的概率分布,以便定量地描述变异性和不确定性。二维蒙特卡洛分析(2D MCA)是可用于进行PRA研究的高级建模方法之一。在此分析中,风险方程的变量以及这些变量的参数(例如,正态分布的均值和标准差)以概率密度函数(PDF)进行描述。以这种方式描述的变量称为“二阶随机变量”。要为这些随机参数开发适当的PDF,需要大量数据或对与这些变量相关的不确定性的深入了解。通常,可用数据以及此类数据的准确性和可靠性不足以进行可靠的2D MCA。因此,需要传播传播暴露和健康风险评估的不确定性和可变性的其他理论和计算方法。一种这样的理论是基于模糊集理论的可能性分析,它允许与专家一起利用不完全信息(不完全信息包括模糊的和不精确的信息,这些信息不足以生成风险方程的随机变量的参数的概率分布)。判断。在本文中,作为2D MCA的替代方案,我们提出了2D模糊蒙特卡洛分析(2D FMCA)来克服这一困难。在这种方法中,我们没有将用于定义风险方程变量的PDF参数描述为随机变量,而是将它们描述为模糊数。这种方法引入了新的概念和风险表征方法。在本文中,我们提供了这两种方法相对于其计算要求,数据要求和可用性的比较。对于一个假设的案例,我们还提供了对生成结果的补充解释。

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