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首页> 外文期刊>Journal of advanced transportation >Dynamic Eco-Driving on Signalized Arterial Corridors during the Green Phase for the Connected Vehicles
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Dynamic Eco-Driving on Signalized Arterial Corridors during the Green Phase for the Connected Vehicles

机译:在连接车辆的绿色阶段,动态生态驾驶动态生态驱动

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摘要

Inappropriate driving behaviours can result in additional fuel consumption and emissions. Drivers can be informed of the accurate signal phase and timing (SPaT) and distance information of the current intersection and downstream intersections via vehicle-to-everything (V2X) communications. The real-time information has been utilized to assist drivers in taking reasonable manoeuvres and gain lots of benefits on fuel consumption and emissions in some existing studies. In order to cooperatively address the optimization problem on the signalized arterial corridors, this paper presents an eco-driving optimization model considering preceding SPaT and position information. This model can be applied to pass two successive traffic signals cooperatively during green phase. In this study, a multi-stage optimal approach is proposed to minimize the fuel consumption. Field experiments are carried out for comparative analysis between the connected vehicle with speed advisory and the uninformed vehicle without speed advisory. The results indicate that the fuel saving of the connected vehicle guided by the dynamic optimization algorithm shows significant improvement. In addition, the rolling optimization among three signalized intersections is conducted and the results show that a considerable improvement can be obtained compared with the one-by-one optimization.
机译:不恰当的驾驶行为可能导致额外的燃料消耗和排放。通过车辆到一切(V2X)通信,可以通过车辆到一切(V2X)通信来通知电流交叉点和下游交叉点的准确信号相位和定时(SPAT)和距离信息。已经利用实时信息来帮助驾驶员采取合理的演习,并对一些现有研究中的燃料消耗和排放产生很大的益处。为了协同地解决信号动脉走廊上的优化问题,本文介绍了考虑前面的斯帕特和位置信息的生态驾驶优化模型。该模型可以应用于在绿色阶段协同地通过两个连续的交通信号。在该研究中,提出了一种多级最佳方法来最小化燃料消耗。在没有速度咨询的情况下,在连接的车辆与不合意的车辆之间进行比较分析的现场实验。结果表明,由动态优化算法引导的连接车辆的燃料节省显着改善。另外,进行三个信号交叉点之间的滚动优化,结果表明,与一对一优化相比,可以获得相当大的改进。

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