考虑交通动力学的纯电动汽车速度优化

Liuwang Kang, Haiying Shen, Ankur Sarker
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引用次数: 17

摘要

随着电动汽车(ev)的日益普及,其电池相关问题(如行驶里程短、电池重量大)必须尽快解决。对电动汽车进行速度优化以实现行驶能耗最小化是解决这些问题的有效途径。然而,以往的速度优化方法假设车辆在绿灯处立即通过交通信号灯。实际上,车辆通过绿灯时仍然可能会遇到延误,因为有车辆在红绿灯前排队等候。在本文中,我们首次提出了一种速度优化系统,使电动汽车能够立即通过绿灯而不延误。我们收集了US-25高速公路4.0公里路段的真实驾驶数据,进行了广泛的轨迹驾驶模拟研究。基于Matlab和SUMO交通模拟器的实验结果表明,该速度优化系统在不增加行驶时间的情况下,与实际驾驶模式相比,能耗降低了17.5%。
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Velocity Optimization of Pure Electric Vehicles with Traffic Dynamics Consideration
As Electric Vehicles (EVs) become increasingly popular, their battery-related problems (e.g., short driving range and heavy battery weight) must be resolved as soon as possible. Velocity optimization of EVs to minimize energy consumption in driving is an effective alternative to handle these problems. However, previous velocity optimization methods assume that vehicles will pass through traffic lights immediately at green traffic signals. Actually, a vehicle may still experience a delay to pass a green traffic light due to a vehicle waiting queue in front of the traffic light. In this paper, for the first time, we propose a velocity optimization system which enables EVs to immediately pass green traffic lights without delay. We collected real driving data on a 4.0 km long road section of US-25 highway to conduct extensive trace-driven simulation studies. The experimental results from Matlab and Simulation for Urban MObility (SUMO) traffic simulator show that our velocity optimization system reduces energy consumption by up to 17.5% compared with real driving patterns without increasing trip time.
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