一种表征配备现场光伏系统的电动汽车充电站净负荷的先进方法

A. Bracale, P. Caramia, P. De Falco
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引用次数: 0

摘要

预计在未来数年营运的电动汽车数目会大幅增加,因此政府须大力推广及在全港各地安装新的电动汽车充电站。从电力系统的角度来看,这些被配置为中低压配电网的附加不确定负荷。在配备现场光伏(PV)系统的evcs情况下,由于充电能量和可再生能源产生的能量的不确定性影响了总体净负荷,因此问题变得复杂。对此类evcs的净负载进行适当的统计表征是管理和操作网络,解决增加的负载及其随机行为的必要条件。本文通过开发一种基于概率蒙特卡罗的方法为这一领域做出了贡献,该方法考虑了三个随机特征:单个电动汽车充电点(evcp)的预期使用情况、使用EVCS的电动汽车车队的组成以及EVCS位置的太阳能资源特征。基于实际数据的数值实验验证了所提出的方法,并进行了不同的案例研究和充电事件建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Advanced Methodology for Characterizing the Net Load of Electric Vehicle Charging Stations Equipped with Onsite PV Systems
The number of Electric Vehicles (EVs) in service is expected to vastly increase in the next years, requiring an adequate effort in promoting and installing new EV Charging Stations (EVCSs) spread around the territory. From a power system perspective, these are configured as additional uncertain loads of MV and LV distribution grids. The problem is complicated in the case of EVCSs equipped with onsite Photovoltaic (PV) systems, as the overall net load is affected by the uncertainties of the charging energy and of the energy generated from the renewable source. A proper statistical characterization of the net load of such EVCSs is mandatory to manage and operate the networks, addressing the increased load and its random behavior. This paper contributes to this field by developing a probabilistic Monte Carlo based methodology that considers three random features: the expected usage of the individual EV Charging Points (EVCPs), the composition of the EV fleet that uses the EVCS, and the features of the solar resource at the EVCS location. Numerical experiments based on actual data are presented to validate the proposed methodology, with different case studies and modeling of the charging events.
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