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首页> 外文期刊>The International Journal of Life Cycle Assessment >A methodology for separating uncertainty and variability in the life cycle greenhouse gas emissions of coal-fueled power generation in the USA
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A methodology for separating uncertainty and variability in the life cycle greenhouse gas emissions of coal-fueled power generation in the USA

机译:分离美国燃煤发电生命周期温室气体排放的不确定性和可变性的方法

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Purpose Results of life cycle assessments (LCAs) of power generation technologies are increasingly reported in terms of typical values and possible ranges. Extents of these ranges result from both variability and uncertainty. Uncertainty may be reduced via additional research. However, variability is a characteristic of supply chains as they exist; as such, it cannot be reduced without modifying existing systems. The goal of this study is to separately quantify uncertainty and variability in LCA. Methods In this paper, we present a novel method for differentiating uncertainty from variability in life cycle assessments of coal-fueled power generation, with a specific focus on greenhouse gas emissions. Individual coal supply chains were analyzed for 364 US coal power plants. Uncertainty in CO_2 and CH_4 emissions throughout these supply chains was quantified via Monte Carlo simulation. The method may be used to identify key factors that drive the range of life cycle emissions as well as the limits of precision of an LCA. Results and discussion Using this method, we statistically characterized the carbon footprint of coal power in the USA in 2009. Our method reveals that the average carbon footprint of coal power (100 year time horizon) ranges from 0.97 to 1.69 kg CO_2eq/kWh of generated electricity (95 % confidence interval), primarily due to variability in plant efficiency. Uncertainty in the carbon footprints of individual plants spans a factor of 1.04 for the least uncertain plant footprint to a factor of 1.2 for the most uncertain plant footprint (95 % uncertainty intervals). The uncertainty in the total carbon footprint of all US coal power plants spans a factor of 1.05. Conclusions We have developed and successfully implemented a framework for separating uncertainty and variability in the carbon footprint of coal-fired power plants. Reduction of uncertainty will not substantially reduce the range of predicted emissions. The range can only be reduced via substantial changes to the US coal power infrastructure. The finding that variability is larger than uncertainty can obviously not be generalized to other product systems and impact categories. Our framework can, however, be used to assess the relative influence of uncertainty and variability for a whole range of product systems and environmental impacts.
机译:目的越来越多地根据典型值和可能的范围来报告发电技术的生命周期评估(LCA)结果。这些范围的很大程度是由可变性和不确定性引起的。不确定性可以通过其他研究来减少。但是,可变性是存在的供应链的特征。这样,如果不修改现有系统就无法减少它。这项研究的目的是分别量化LCA中的不确定性和可变性。方法在本文中,我们提出了一种新的方法,用于区分燃煤发电生命周期评估中的不确定性和可变性,特别关注温室气体的排放。分析了美国364家燃煤电厂的单个煤炭供应链。通过蒙特卡洛模拟量化了这些供应链中CO_2和CH_4排放的不确定性。该方法可用于识别驱动生命周期排放范围以及LCA精度极限的关键因素。结果与讨论使用此方法,我们对2009年美国燃煤发电的碳足迹进行了统计表征。我们的方法显示,燃煤发电的平均碳足迹(100年时间范围)为0.97至1.69 kg产生的CO_2eq / kWh电(95%置信区间),主要是由于工厂效率的差异。单个工厂的碳足迹的不确定性范围从不确定性最小的工厂足迹到1.04,到不确定性最大的工厂足迹(95%不确定区间)到1.2。美国所有燃煤电厂的总碳足迹的不确定性范围为1.05。结论我们已经开发并成功实施了一个框架,用于分离燃煤电厂碳足迹的不确定性和可变性。减少不确定性不会大大减少预计排放量的范围。只能通过对美国煤电基础设施进行重大更改来缩小范围。可变性大于不确定性的发现显然不能推广到其他产品系统和影响类别。但是,我们的框架可用于评估不确定性和可变性对整个产品系统和环境影响的相对影响。

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