基于真实充电负荷数据的电动汽车充电行为仿真与分析

Gangheng Ge, Jinrui Tang, Jianchao Liu, Hong-Gang Yang
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引用次数: 0

摘要

准确的充电站充电负荷短期负荷预测结果对提高配电系统的可靠性和安全性至关重要。在现代电动汽车优化调度中,除了需要准确的STLF结果外,还需要及时了解每个用户的电动汽车状态,以及用户的充电行为。本文提出并讨论了一种电动汽车STLF充电方法。我们首先基于数据驱动的方法得到准确的STLF结果。利用车辆行驶距离概率函数和蒙特卡罗方法生成一定数量的不同状态的电动汽车。采用两段填充法,将第一步每个时间点充电的电动汽车数量设置为模型参数,然后对模型进行多次使能,以保留与数据驱动法所得结果接近的结果。将第二步中某时间点充电的电动汽车数量作为模型参数。在第一步的基础上,对负荷进行填充,最终得到准确的模型驱动STLF结果和充电行为信息。因此,这些信息被用于规范电动汽车的充电行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EV Charging Behavior Simulation and Analysis Using Real-World Charging Load Data
Accurate short-term load forecasting (STLF) results for charging station charging load are essential to improve the reliability and safety of power distribution systems. In modern electric vehicle (EV) optimization dispatching, in addition to accurate STLF results, it is necessary to know the status of each user's EV, and user charging behavior promptly. In this paper, an EV charging STLF method is proposed and discussed. We first derive accurate STLF results based on a data-driven method. Using the driving distance probability function of vehicle and Monte Carlo method to generate a certain number of different states of EV. Using the two-stage filling method, the number of the EVs charging at each time point in the first step is set as the model's parameters, and then the model is enabled with multiple times to retain the results which are close to results obtained by the data-driven method. The number of the EVs charging at some time point in the second step are set as the model's parameters. Based on the first step, the load is filled, and the accurate model-driven STLF results and charging behavior information are finally obtained. Thus, this information is used to regulate the charging behavior of EVs.
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