Hosting Capacity Assessment of South African Residential Low-Voltage Networks for Electric Vehicle Charging

V. Umoh, Abayomi Adebiyi, K. Moloi
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Abstract

The necessity for environmentally friendly transportation systems has prompted the proliferation of electric vehicles (EVs) in low-voltage (LV) distribution networks. However, large-scale integration and simultaneous charging of EVs can create power quality challenges for the distribution grid. It is therefore important to assess the impact of connecting EVs for charging in existing distribution networks and determine the hosting capacity (HC) of such a network. This paper uses a deterministic time-series method and stochastic method based on a simplified Monte Carlo simulation to estimate the HC of single-phase and three-phase EV charging, respectively, for a South African low-voltage distribution network containing 21 households. Voltage drop and equipment loading are the performance indices (PI) considered for the impact assessment and HC estimation in this study. The impact assessment result confirms that increasing EV charging penetration will result in a corresponding movement of the PIs toward the allowable limits. The results show that the HC is 5–8 three-phase EVs charging simultaneously for the worst-case scenario and 9–13 EVs for the best-case scenario. Furthermore, the single-phase HC for the popular 3.7 kW EV charger is 15 and 8 EVs for the best-case and worst-case scenarios, respectively. The result showing the seasonal variation in HC and for other EV charging power is also presented. The difference in HC for the worst-case and best-case scenarios portrays the effect that the location of charging has on the HC.
南非住宅低压电动汽车充电网络承载能力评估
对环境友好型交通系统的需求促使电动汽车(ev)在低压(LV)配电网中的普及。然而,电动汽车的大规模集成和同时充电会给配电网带来电能质量挑战。因此,评估在现有配电网络中连接电动汽车充电的影响并确定这种网络的托管容量(HC)非常重要。本文采用确定性时间序列法和基于简化蒙特卡罗模拟的随机方法,分别估算了南非21户低压配电网中单相和三相电动汽车充电的HC。电压降和设备负荷是本研究中影响评估和HC估计所考虑的性能指标。影响评价结果证实,电动汽车充电普及率的提高会导致pi相应向允许限值移动。结果表明,最坏情况下的混合动力为5-8辆三相电动汽车同时充电,最佳情况下为9-13辆电动汽车同时充电。此外,在最佳情况和最坏情况下,流行的3.7 kW电动汽车充电器的单相HC分别为15辆和8辆电动汽车。并给出了充电功率的季节变化规律。在最坏情况和最佳情况下,电荷衡差反映了充电位置对电荷衡差的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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