校园微电网内电动汽车充放电优化研究

Yong-Qing Huang, M. Gamil, H. Masrur, Junchao Cheng, Hongjing He, T. Senjyu
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引用次数: 4

摘要

由于电动汽车的普及和人们的出行方式,电动汽车正越来越多地融入电网。特别是在大学,校园在短时间内有大量的人,这增加了电动汽车的充电负荷。本文提出了一种优化的校园微电网内电动汽车充放电方式,可显著提高电网运行稳定性。本文采用概率密度函数和蒙特卡罗方法对电动汽车的无序充电问题进行了研究。通过分析电动汽车车主在校园内的充电意愿、车辆的SOC分布以及电动汽车在校园内的停留时间,估算电动汽车的充电量。为了实现适合校园微电网的充电场景,采用遗传算法对分析参数进行编码和优化。根据高校上课时间的特点,预计进入校园的车辆的充电会产生高峰负荷。在6点到24点期间,将有1000辆符合这些计划的电动汽车存在。采用遗传算法为电动汽车分配最佳充电时间,从而调节校园电网的峰谷间隙。进一步,对四种遗传算法进行了比较,发现输入参数对结果有显著影响。结果表明,优化充电对提高微网稳定性和降低充电成本具有重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Charging and Discharging of Electric Vehicles within Campus Microgrids
Electric vehicles (EVs) are being increasingly integrated into the electric grid as a result of their popularity and people's travel patterns. Especially in Universities, the campuses have a large number of people in a short period of time, which increases the electric vehicles' charging load. In this paper, an optimized charging and discharging method of EVs within a campus microgrid is proposed, which would significantly improve grid operation stability. This article used the disorderly charging of EVs using probability density functions and the Monte Carlo (MC) method. By analyzing the EVs owners' willingness to charge in the campus area, the distribution of start-of-charge (SOC) of the vehicles, and the EVs' stay time on campus, the amount of charge is estimated. To achieve a suitable charging scenario for a campus microgrid, the analysis parameters are coded and optimized using the Genetic Algorithm (GA). According to the characteristics of university class-times, it is expected that the charging of vehicles entering campus will cause peak-load periods. During the time period from 6:00 to 24:00, 1,000 EVs that follow these plans will exist. The GA algorithm is used to allocate the best charging time for the EVs, thereby adjusting the peak-to-valley gap of the campus power grid. Further, four types of GA are compared and it is realized that the input parameters have a significant impact on the outcomes. The results demonstrate the impact of optimized charging on improving microgrid stability and reducing charging costs.
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