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提高城市交通温室气体和空气污染清单中车辆排放特征的准确性。

Improving the accuracy of vehicle emissions profiles for urban transportation greenhouse gas and air pollution inventories.

机构信息

Civil, Environmental, & Sustainable Engineering, Arizona State University , College Avenue Commons, 660 South College Avenue, Mail Code: 3005, Tempe, Arizona 85281, United States.

出版信息

Environ Sci Technol. 2015 Jan 6;49(1):369-76. doi: 10.1021/es5023575. Epub 2014 Dec 11.

Abstract

Metropolitan greenhouse gas and air emissions inventories can better account for the variability in vehicle movement, fleet composition, and infrastructure that exists within and between regions, to develop more accurate information for environmental goals. With emerging access to high quality data, new methods are needed for informing transportation emissions assessment practitioners of the relevant vehicle and infrastructure characteristics that should be prioritized in modeling to improve the accuracy of inventories. The sensitivity of light and heavy-duty vehicle greenhouse gas (GHG) and conventional air pollutant (CAP) emissions to speed, weight, age, and roadway gradient are examined with second-by-second velocity profiles on freeway and arterial roads under free-flow and congestion scenarios. By creating upper and lower bounds for each factor, the potential variability which could exist in transportation emissions assessments is estimated. When comparing the effects of changes in these characteristics across U.S. cities against average characteristics of the U.S. fleet and infrastructure, significant variability in emissions is found to exist. GHGs from light-duty vehicles could vary by -2%-11% and CAP by -47%-228% when compared to the baseline. For heavy-duty vehicles, the variability is -21%-55% and -32%-174%, respectively. The results show that cities should more aggressively pursue the integration of emerging big data into regional transportation emissions modeling, and the integration of these data is likely to impact GHG and CAP inventories and how aggressively policies should be implemented to meet reductions. A web-tool is developed to aide cities in improving emissions uncertainty.

摘要

大都市温室气体和空气排放清单可以更好地说明区域内和区域之间车辆行驶、车队构成和基础设施的变化,为环境目标制定更准确的信息。随着高质量数据的不断涌现,需要新的方法来告知交通排放评估从业者,在建模中应优先考虑哪些与车辆和基础设施相关的特征,以提高清单的准确性。本文利用高速公路和主干道上自由流和拥堵情景下的逐秒速度剖面,研究了轻型和重型车辆温室气体(GHG)和常规空气污染物(CAP)排放对速度、重量、年龄和道路坡度的敏感性。通过为每个因素创建上限和下限,估计了在交通排放评估中可能存在的潜在变化。当比较美国各城市这些特征变化的影响与美国车队和基础设施的平均特征时,发现排放存在显著的差异。与基线相比,轻型车辆的 GHG 排放可能减少 2%至 11%,CAP 排放减少 47%至 228%。对于重型车辆,分别为-21%至 55%和-32%至 174%。结果表明,城市应更积极地将新兴大数据纳入区域交通排放模型,并且这些数据的整合可能会影响 GHG 和 CAP 清单,以及应如何积极实施政策以实现减排。开发了一个网络工具来帮助城市降低排放不确定性。

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