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Uncertainty in well-to-tank with combustion greenhouse gas emissions of transportation fuels derived from North American crudes

机译:源自北美原油的运输燃料的燃烧温室气体排放所产生的不确定性

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摘要

Many studies have calculated deterministic point estimates of well-to-combustion (WTC) emissions of transportation fuels from crude oil in an attempt to determine which crude oils have lower or higher emissions. However, there is considerable variation in the published results, resulting in uncertainty. The purpose of this study is to identify GHG emissions ranges for five conventional and two unconventional crudes by performing an uncertainty analysis using an improved version of the FUNdamental ENgineering PrinciplEs-based ModeL for Estimation of GreenHouse Gases (FUNNEL-GHG). Distributions for key inputs in the Monte Carlo simulation were determined based on values obtained from the literature. Eleven scenarios were developed, nine historical and two current, the former using life-long average production data from the oil fields studied and the latter using recent production data to illustrate how WTC emissions change as the fields age. The mean WTC emissions ranges for the eleven scenarios are 97.5-140 gCO(2)eq/MJ. The uncertainty in the WTC emissions ranges from +/- 3% to +/- 11%. The largest source of uncertainty in the WTC emissions is from the venting, fugitive, and flaring volumes, fluid injection rates, and refinery yields. (C) 2017 Elsevier Ltd. All rights reserved.
机译:许多研究已经计算出原油运输燃料的燃烧至燃烧(WTC)排放的确定点估计,以试图确定哪些原油排放较低或较高。但是,已发布的结果差异很大,导致不确定性。本研究的目的是通过使用基于FUNdamental工程原理的ModeL估算温室气体的ModeL(FUNNEL-GHG)进行改进的不确定性分析,确定五种常规和两种非常规原油的温室气体排放范围。基于从文献中获得的值,确定了蒙特卡洛模拟中关键输入的分布。制定了11种情景,9种历史情景和2种当前情景,前者使用所研究油田的终生平均产量数据,后者使用最新产量数据来说明WTC排放随着油田老化而变化。在这11种情况下,平均WTC排放范围为97.5-140 gCO(2)eq / MJ。 WTC排放的不确定性范围为+/- 3%至+/- 11%。 WTC排放量最大的不确定性来源是排气量,逃逸量和燃烧量,流体注入速率和炼油厂产量。 (C)2017 Elsevier Ltd.保留所有权利。

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