bCharge: Data-Driven Real-Time Charging Scheduling for Large-Scale Electric Bus Fleets

Guang Wang, Xiaoyan Xie, Fan Zhang, Yunhuai Liu, Desheng Zhang
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引用次数: 57

Abstract

We are witnessing a rapid growth of electrified vehicles because of the ever-increasing concerns over urban air quality and energy security. Compared with other electric vehicles, electric buses have not yet been prevailingly adopted worldwide due to the high owning and operating costs, long charging time, and the uneven distribution of charging facilities. Moreover, the highly dynamic environment factors such as the unpredictable traffic congestions, different passenger demands, and even changing weather, can significantly affect electric bus charging efficiency and potentially hinder further development of large-scale electric bus fleets. To deal with these issues, in this paper, we first analyze a real-world dataset including massive data from 16,359 electric buses, 1,400 bus lines and 5,562 bus stops, which is obtained from the Chinese city Shenzhen, who has the first and the largest full electric bus network for public transit. Then we investigate the electric bus network to understand its operating and charging patterns, and further verify the feasibility and necessity of a real-time charging scheduling. With such understanding, we design bCharge, a real-time charging scheduling system based on Markov Decision Process to reduce the overall charging and operating costs for city-scale electric bus fleets, taking the time-variant electricity pricing into account. To show the effectiveness of bCharge, we implement it with the real-world streaming dataset from Shenzhen, which includes GPS data of the electric bus fleet, the bus lines and stops data, coupled with the 376 electric bus charging stations data. The evaluation results show that bCharge can dramatically reduce the charging cost by 23.7% and 12.8% electricity usage simultaneously.
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bCharge:大型电动公交车队数据驱动的实时充电调度
由于对城市空气质量和能源安全的日益关注,我们正在目睹电动汽车的快速增长。与其他电动汽车相比,由于拥有和运营成本高、充电时间长、充电设施分布不均匀等原因,电动公交车尚未在全球范围内得到普遍采用。此外,不可预测的交通拥堵、不同的乘客需求、甚至多变的天气等高度动态的环境因素会显著影响电动公交车的充电效率,并可能阻碍大规模电动公交车车队的进一步发展。为了解决这些问题,在本文中,我们首先分析了一个真实世界的数据集,包括来自中国城市深圳的16,359辆电动公交车,1,400条公交线路和5,562个公交站点的大量数据,深圳拥有第一个也是最大的公共交通全电动公交网络。然后对电动公交网络进行调查,了解其运行和充电模式,进一步验证实时充电调度的可行性和必要性。在此基础上,我们设计了基于马尔可夫决策过程的实时充电调度系统bCharge,以降低城市规模电动公交车队的整体充电和运营成本,同时考虑时变电价。为了证明bCharge的有效性,我们使用深圳的现实世界流数据集来实现它,其中包括电动公交车队的GPS数据,公交线路和站点数据,以及376个电动公交充电站的数据。评价结果表明,bCharge可同时大幅降低充电成本23.7%和12.8%的用电量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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