私人电动汽车快速协调充电策略

Hengjie Li, L. Wen, Wei Chen, Xu Gong, Xianqiang Zeng
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引用次数: 1

摘要

为解决私人电动汽车快速协调充电问题,在快速充电模式下制定了两种协调充电策略。一是建立以电动汽车总充电时间最小、功率标准差最小、配电网峰谷差最小为目标的协调充电策略。采用加权求和法将多目标函数归一化为单目标解。二是以电动汽车总充电时间为约束条件,实现配电网的削峰填充。以收集到的兰州市工作日和节假日交通数据为例,分别在工作日和节假日条件下对两种协调优化方案进行了仿真分析,并采用遗传算法进行了求解。结果表明:充电方式为非协调充电时,总充电时间最短,配网削峰充峰效果最差;当电动汽车不考虑协调充电的时间目标时,配电网削峰充能效果最好,总充电时间最长;当电动汽车包含协调充电的时间目标时,配电网的削峰和充电效果是中等的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Rapid and Coordinated Charging Strategy for Private Electric Vehicles
In order to solve the problem of the rapid and coordinated charging of private electric vehicles, two coordinated charging strategies were formulated under the rapid charging mode. One is to establish a coordinated charging strategy that minimizes the total charging time of electric vehicles, the minimum of power standard deviation and the peak-valley difference of distribution networks. The multi-objective function is normalized to a single-target solution by weighted summation method. The other is to use the total charging time of electric vehicles as a constraint to achieve peak clipping and filling of the distribution network. Taking the collected traffic data of weekdays and holidays in Lanzhou City as an example, two kinds of coordinated optimization schemes were simulated and analyzed on weekdays and holidays conditions respectively, and the genetic algorithm was used to solve the problem. The results show that the total charging time is the smallest when charging is uncoordinated charging, and peak clipping and filling effect of the distribution network is the worst; when electric vehicles do not consider the time target for coordinated charging, peak clipping and filling effect of the distribution network is the best and the total charging time is the longest; when electric vehicles contain the time target for coordinated charging, peak clipping and filling effect of the distribution network is intermediate.
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