An approach of localizing MOVES to estimate emission factors of trucks

Jiashuo Lei , Chao Yang , Qingyan Fu , Yuan Chao , Jie Dai , Quan Yuan
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Abstract

Freight has become one of the major contributors to air pollution. This research proposes a method to systematically estimate truck vehicle emissions at the road segment level through localizing MOVES, a widely-used vehicle emission estimation model. We first design a protocol of converting percentage values of rotating speed and torque of engine to second-by-second vehicle speed to accommodate the differences between driving cycles adopted in local emission standards and those used in MOVES. In order to identify the best model year for estimating emissions under different local emission standards, we propose an approach of comparing emission outcomes rather than emission factors, considering the differences in unit used between MOVES and emission standards. To calculate road segment level emission factors, we weight original factors by integrating vehicle fleet information which contains the shares of vehicles under different emission standards and at different ages. We apply the approach to a major freight corridor area in Shanghai and calculate emission factors by air pollutant, average speed of road sections, and road type. Dynamic emissions of each road section per hour are calculated to reflect the spatial distribution of truck emissions. The research outcomes may help local departments, especially in developing countries, better estimate freight vehicle emissions and make policies correspondingly to control their impacts on public health.

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一种基于局部move的卡车排放系数估算方法
货运已成为造成空气污染的主要因素之一。本研究提出了一种方法,通过将广泛使用的车辆排放估算模型 MOVES 本地化,在路段层面系统地估算卡车的车辆排放。我们首先设计了一种将发动机转速和扭矩的百分比值转换为逐秒车速的协议,以适应地方排放标准所采用的驾驶周期与 MOVES 所采用的驾驶周期之间的差异。为了确定在不同地方排放标准下估算排放量的最佳车型年份,考虑到 MOVES 和排放标准在使用单位上的差异,我们提出了一种比较排放结果而非排放因子的方法。为了计算路段水平的排放因子,我们通过整合车队信息对原始因子进行加权,车队信息包含不同排放标准和不同车龄的车辆比例。我们将该方法应用于上海的一个主要货运通道区域,并按空气污染物、路段平均速度和道路类型计算排放因子。我们还计算了各路段每小时的动态排放量,以反映卡车排放的空间分布。研究成果可帮助地方部门,尤其是发展中国家的地方部门更好地估算货运车辆的排放量,并制定相应的政策来控制其对公众健康的影响。
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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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