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Uncertainty Analysis of a GHG Emission Model Output Using the Block Bootstrap and Monte Carlo Simulation

机译:运用Block Bootstrap和蒙特卡洛模拟对温室气体排放模型输出的不确定性分析

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Uncertainty analysis of greenhouse gas (GHG) emissions is becoming increasingly necessary in order to obtain a more accurate estimation of their quantities. The Monte Carlo simulation (MCS) and non-parametric block bootstrap (BB) methods were tested to estimate the uncertainty of GHG emissions from the consumption of feedstuffs and energy by dairy cows. In addition, the contribution to variance (CTV) approach was used to identify significant input variables for the uncertainty analysis. The results demonstrated that the application of the non-parametric BB method to the uncertainty analysis, provides a narrower confidence interval (CI) width, with a smaller percentage uncertainty (U) value of the GHG emission model compared to the MCS method. The CTV approach can reduce the number of input variables needed to collect the expanded number of data points. Future studies can expand on these results by treating the emission factors (EFs) as random variables.
机译:为了更准确地估算其排放量,对温室气体(GHG)排放量进行不确定性分析变得越来越必要。测试了蒙特卡罗模拟(MCS)和非参数块自举(BB)方法,以估算奶牛饲料和能源消耗所产生的温室气体排放的不确定性。另外,使用方差贡献(CTV)方法来识别不确定性分析的重要输入变量。结果表明,与MCS方法相比,将非参数BB方法应用于不确定性分析可提供更窄的置信区间(CI)宽度,以及较小的温室气体排放模型百分比不确定性(U)值。 CTV方法可以减少收集扩展数量的数据点所需的输入变量的数量。通过将排放因子(EFs)视为随机变量,可以进一步研究这些结果。

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