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首页> 外文期刊>International journal of sustainable transportation >A novel approach to estimate emissions from large transportation networks: Hierarchical clustering-based link-driving-schedules for EPA-MOVES using dynamic time warping measures
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A novel approach to estimate emissions from large transportation networks: Hierarchical clustering-based link-driving-schedules for EPA-MOVES using dynamic time warping measures

机译:一种估算大型交通网络排放的新颖方法:采用动态时间规整措施的基于层次聚类的EPA-MOVES链接驱动时间表

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EPA-MOVES (Motor Vehicle Emission Simulator) is often integrated with traffic simulators to assess emission levels of large-scale urban networks with signalized intersections. High variations in speed profiles exist in the context of congested urban networks with signalized intersections. The traditional average-speed-based emission estimation technique with EPA-MOVES provides faster execution while underestimates the emissions in most cases because of ignoring the speed variation at congested networks with signalized intersections. In contrast, the atomic second-by-second speed profile (i.e., the trajectory of each vehicle)-based technique provides accurate emissions at the cost of excessive computational power and time. We addressed this issue by developing a novel method to determine the link-driving-schedules (LDSs) for the EPA-MOVES tool. Our research developed a hierarchical clustering technique with dynamic time warping similarity measures (HC-DTW) to find the LDS for EPA-MOVES that is capable of producing emission estimates better than the average-speed-based technique with execution time faster than the atomic speed profile approach. We applied the HC-DTW on a sample data from a signalized corridor and found that HC-DTW can significantly reduce computational time without compromising the accuracy. The developed technique in this research can substantially contribute to the EPA-MOVES-based emission estimation process for large-scale urban transportation network by reducing the computational time with reasonably accurate estimates. This method is highly appropriate for transportation networks with higher variation in speed such as signalized intersections. Experimental results show error difference ranging from 2% to 8% for most pollutants except PM10.
机译:EPA-MOVES(机动车排放模拟器)通常与交通模拟器集成在一起,以评估带有信号交叉口的大型城市网络的排放水平。在拥挤的信号交叉口城市网络中,速度曲线存在很大差异。传统的基于EPA-MOVES的基于平均速度的排放估算技术可提供更快的执行速度,而在大多数情况下却会低估排放量,这是因为忽略了带有信号交叉口的拥挤网络中的速度变化。相反,基于原子的每秒第二速度分布图(即,每辆车的轨迹)的技术提供了精确的排放,但付出了过多的计算能力和时间。我们通过开发一种新颖的方法来确定EPA-MOVES工具的链接驱动时间表(LDS),解决了此问题。我们的研究开发了一种具有动态时间规整相似性度量(HC-DTW)的分层聚类技术,以找到用于EPA-MOVES的LDS,该LDS能够比基于平均速度的技术更好地产生排放估算,并且执行时间比原子速度快。轮廓法。我们将HC-DTW应用于信号走廊的样本数据,发现HC-DTW可以显着减少计算时间而不会影响准确性。通过合理合理的估算减少计算时间,这项研究中开发的技术可以大大有助于基于EPA-MOVES的大型城市交通网络排放估算过程。此方法非常适用于速度变化较大的交通网络,例如信号交叉口。实验结果表明,除PM10外,大多数污染物的误差差异在2%至8%之间。

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