Collaborative strategy for electric vehicle charging scheduling and route planning

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IET Smart Grid Pub Date : 2024-04-26 DOI:10.1049/stg2.12170
Jingyi Zhang, Wenpeng Jing, Zhaoming Lu, Haotian Wu, Xiangming Wen
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Abstract

Due to varying energy demands and supply levels in different regions, the distribution of power load exhibits an imbalanced state. It contributes to increased power loss and poses a threat to the security constraints of the electrical grid. Simultaneously, the global energy transition has led to a continuous increase in the proportion of renewable energy integrated into the grid. Electric vehicles (EVs), serving as representative of renewable energy, further magnify this load imbalance with their charging requirements, which poses a significant challenge to the stable operation of the grid. Therefore, to ensure the smooth operation of the grid under the context of renewable energy integration, the authors investigate the coordinated strategies of EV charging scheduling and route planning. The authors first model the coupling of the transportation network with the smart grid as a cyber-physical system. Subsequently, the authors simulate and analyse the daily charging load curve of the network, capturing the travel characteristics of EVs. Based on this, the authors research the EV charging scheduling in both individual and collective travel scenarios during peak and off-peak hours. For the off-peak travel period of EVs, a charging schedule strategy based on travel plans is proposed, which reduces the time cost of EV owners' travel. Furthermore, for the collective travel of a large number of EVs within the system, a multi-EV charging scheduling strategy based on charging station load balancing is presented. This strategy effectively balances the load levels of various charging stations while reducing the overall system travel time. Ultimately, through experimental results, the authors demonstrate that by deploying appropriate charging scheduling strategies, EVs cease to be a burden on the grid and can be transformed into tools for balancing the loads across different regions.

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电动汽车充电调度和路线规划的协作策略
由于不同地区的能源需求和供应水平不同,电力负荷的分布呈现出不平衡状态。这导致电力损耗增加,并对电网的安全约束构成威胁。与此同时,全球能源转型导致可再生能源并入电网的比例不断增加。电动汽车(EV)作为可再生能源的代表,其充电需求进一步放大了这种负载失衡,对电网的稳定运行构成了巨大挑战。因此,为了确保可再生能源整合背景下电网的平稳运行,作者研究了电动汽车充电调度和路线规划的协调策略。作者首先将交通网络与智能电网的耦合建模为一个网络物理系统。随后,作者模拟并分析了网络的每日充电负荷曲线,捕捉到了电动汽车的出行特征。在此基础上,作者研究了高峰和非高峰时段个人和集体出行场景下的电动汽车充电调度。针对电动汽车的非高峰出行时段,提出了基于出行计划的充电调度策略,降低了电动汽车车主出行的时间成本。此外,针对系统内大量电动汽车的集体出行,提出了基于充电站负载平衡的多电动汽车充电调度策略。该策略有效地平衡了不同充电站的负载水平,同时减少了整个系统的出行时间。最终,通过实验结果,作者证明了通过部署适当的充电调度策略,电动汽车不再是电网的负担,而是可以转化为平衡不同区域负载的工具。
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来源期刊
IET Smart Grid
IET Smart Grid Computer Science-Computer Networks and Communications
CiteScore
6.70
自引率
4.30%
发文量
41
审稿时长
29 weeks
期刊最新文献
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