估计拼车和车辆调度在拼车出行中的减排

Ximing Chang, Jianjun Wu, Zifan Kang, Jianju Pan, Huijun Sun, Der-Horng Lee
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引用次数: 0

摘要

网约车服务通过移动应用程序将乘客与附近的司机联系起来,提供按需运输解决方案。然而,拼车往往不能像预期的那样吸引乘客,因为低效的订单匹配策略。本研究估计了拼车机动性中订单匹配和车辆调度的减排。构造了一个层次结构的可解释机器学习模型来预测到达时间。考虑预期出发时间内的上下车地点,建立按需订单匹配和车辆调度优化模型,确定最小车队规模和高效路线规划。现实世界的实验是在中国北京进行的大规模拼车订单。与目前的运作相比,船队规模减少了25.25%,同时污染物排放量减少了21.65%。结果表明,拼车和车辆调度过程导致乘客等待时间略有增加,同时提高了网约车服务的运营效率并减少了污染物排放。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating emissions reductions with carpooling and vehicle dispatching in ridesourcing mobility

Estimating emissions reductions with carpooling and vehicle dispatching in ridesourcing mobility
Ride-hailing services provide on-demand transportation solutions by connecting passengers with nearby drivers through mobile applications. However, carpooling often fails to attract passengers as expected due to inefficient order-matching strategies. This study estimates emissions reductions with order matching and vehicle dispatching in ridesourcing mobility. An explainable machine learning with a hierarchical framework is constructed for arrival time prediction. Considering pick-up and drop-off locations within the expected departure time, on-demand order matching and vehicle dispatching optimization models are built to determine the minimum fleet size and efficient route planning. Real-world experiments are conducted with large-scale ridesharing orders in Beijing, China. In comparison to the current operations, a reduction of 25.25% in fleet size and a simultaneous decrease of 21.65% in pollutant emissions are achieved. Results demonstrate that carpooling and vehicle dispatching processes lead to a slight increase in passenger waiting time while enhancing the operational efficiency of ride-hailing services and reducing pollutant emissions.
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