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Quantitative Analysis of Variability and Uncertainty in Emission Estimation: An Illustration of Methods Using Mixture Distributions

机译:排放估计变异性和不确定性的定量分析:混合分布的方法的说明

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Air pollutant emission inventories are a vital component of environmental decision-making. Errors in emission factor estimation can lead to errors in emission inventory estimation. Potential sources of error include unaccounted for variability and uncertainty. Variability refers to diversity over time or space. Uncertainty is a lack of knowledge about the true value of a quantity. Probability distribution models can be used to describe variability in a data set and as a starting point for characterizing uncertainty, such as for mean values. Mixture distributions have the potential to be useful in the quantification of variability and uncertainty because they can improve the goodness of fit to a dataset compared to the use of a single parametric distribution. In this paper, parameter estimation of mixture distributions is discussed. An approach for quantifying the variability and uncertainty based on mixture distributions by using Bootstrap simulation is developed. An emission factor case study based upon NO_x emissions from coal- fired tangential boilers with low NO_x burners and overfire air is used to illustrate the method. Results from the use of single parametric distributions are compared with results from the use of a mixture distribution. The case study results indicate that a mixture lognormal distribution is a better fit to the selected case compared to single distributions. Furthermore, the estimate of the range of uncertainty in the mean is narrower with the mixture distribution than with the single component distribution, indicating that the mixture distribution has the potential to yield more "efficient" statistical estimates. This project is one component of a larger effort aimed at developing improved methods for characterizing uncertainty in emission inventories.
机译:空气污染物排放库存是环境决策的重要组成部分。排放因子估计中的误差可能导致排放库存估计中的错误。潜在的误差来源包括无变异性和不确定性。可变性是指随时间或空间的多样性。不确定性是对数量的真实价值的知识缺乏了解。概率分布模型可用于描述数据集中的可变性以及用于表征不确定性的起点,例如用于平均值。混合分布具有可用于可变性和不确定性的量化,因为它们可以改善与使用单个参数分布的数据集的适合度。在本文中,讨论了混合分布的参数估计。开发了一种通过使用引导仿真来量化基于混合分布的变异性和不确定性的方法。基于低NO_X燃烧器的燃煤切向锅炉和溢出空气的燃煤切向锅炉排放的排放因子案例研究用于说明该方法。将使用单个参数分布的结果与使用混合分布的结果进行比较。案例研究结果表明,与单个分布相比,混合逻辑分布与所选案例更好。此外,平均值的不确定性范围的估计与混合分布比单一组分分布较窄,表明混合分布具有产生更多“有效”统计估计的可能性。该项目是旨在开发出现排放库存不确定性的改进方法的更大努力的一个组成部分。

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