基于蒙特卡罗(MC)仿真的不确定性分析在生命周期库存(LCI)中的应用

D. Sala, B. Bieda
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引用次数: 1

摘要

为了评估生命周期清单研究中的不确定性,提出了蒙特卡罗(MC)模拟的应用。MCmethod被认为是环境科学中的一个重要工具,可以被认为是最有效的不确定性量化方法。数据的不确定性可以通过数据概率分布的定义来表示(例如,通过标准偏差或方差)。本研究中提出的案例是基于波兰Kraków综合钢铁发电厂(ISPP)在能源生产过程中产生的二氧化硫排放的例子。MC模拟使用软件Crystal Ball®(CB),软件与Microsoft®Excel相关联,用于不确定度分析。描述了评估参数不确定性的MC方法。MCsimulation的分析参数(SO2)服从对数正态分布。最后,以频率图和汇总统计的形式给出了MC模拟在10000次运行后比确定性方法更可靠的结果。通过不确定度分析,以取值范围的形式得到最终结果。本研究的结果将鼓励其他研究人员在他们的项目中考虑这种方法,本研究的结果将鼓励其他LCA研究人员考虑他们项目中的不确定性,并使其更接近工业应用。
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Application of uncertainty analysis based on Monte Carlo (MC) simulation for life cycle inventory (LCI)
The use of Monte Carlo (MC) simulation was presented inorder to assess uncertainty in life cycle inventory (LCI) studies. The MCmethod is finded as an important tool in environmental science and can beconsidered the most effective quantification approach for uncertainties.Uncertainty of data can be expressed through a definition of probabilitydistribution of that data (e.g. through standard deviation or variance). Thepresented case in this study is based on the example of the emission ofSO2, generated during energy production in Integrated Steel Power Plant(ISPP) in Kraków, Poland. MC simulation using software Crystal Ball®(CB), software, associated with Microsoft® Excel, was used for theuncertainties analysis. The MC approach for assessing parameteruncertainty is described. Analysed parameter (SO2,) performed in MCsimulation were assigned with log-normal distribution. Finally, the resultsobtained using MC simulation, after 10,000 runs, more reliable than thedeterministic approach, is presented in form of the frequency charts andsummary statistics. Thanks to uncertainty analysis, a final result is obtainedin the form of value range. The results of this study will encourage otherresearchers to consider this approach in their projects, and the results ofthis study will encourage other LCA researchers to consider the uncertaintyin their projects and bring closer to industrial application.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
44
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