Electric Vehicle Smart-Charging Control for Parking Lots Based on Individual State of Charge Priority

Energy Storage Pub Date : 2024-08-21 DOI:10.1002/est2.70017
Frederico Haasis, Oscar Solano, Daniel Dias, Bruno Borba
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引用次数: 0

Abstract

The integration of electric vehicles (EVs) into the power grid could pose challenges to power quality (PQ) depending on quantity of EVs and when they are connected. To mitigate these impacts without using drastic measures, such as disconnecting EVs, this study investigates centralized control strategies within parking facilities that prioritize EV charging based on individual State of Charge (SoC) levels. The study utilizes the IEEE 34 Bus system and conducts 3888 simulations for different scenarios to assess the impact of the quantity and placement of EVs in parking lots. The study applies the Monte Carlo method to compare the performance of different proposed controls: (i) limiting the charging current to a fixed level and (ii) varying the current based on the voltage droop step. Furthermore, Power Hardware-in-the-Loop (PHIL) simulations were carried out to validate the hierarchical control using the droop step control, demonstrating the best average performance in the previous scenarios. The findings indicated that the control responded within the expected timeframe and successfully addressed voltage sag issues, maintaining PQ in the distribution system in most cases, with its performance being influenced by the placement of parking lots in the network. Additionally, it was confirmed through quartiles that the classification based on SoC leads to a more balanced charging time for different SoC levels.

基于个人充电状态优先级的停车场电动汽车智能充电控制
将电动汽车(EV)并入电网可能会对电能质量(PQ)带来挑战,这取决于电动汽车的数量和连接时间。为了在不采取断开电动汽车连接等严厉措施的情况下减轻这些影响,本研究调查了停车设施内的集中控制策略,该策略可根据单个充电状态 (SoC) 级别对电动汽车充电进行优先排序。该研究利用 IEEE 34 总线系统,针对不同场景进行了 3888 次模拟,以评估停车场中电动汽车数量和位置的影响。研究采用蒙特卡洛法比较了不同控制建议的性能:(i) 将充电电流限制在固定水平;(ii) 根据电压下降阶跃改变电流。此外,还进行了电源硬件在环(PHIL)仿真,以验证使用下垂阶跃控制的分层控制,结果表明在前几种情况下平均性能最佳。结果表明,该控制在预期时间内做出响应,成功解决了电压下陷问题,在大多数情况下保持了配电系统的 PQ,其性能受到网络中停车场位置的影响。此外,通过四分法证实,基于 SoC 的分类使不同 SoC 水平的充电时间更加均衡。
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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CiteScore
2.90
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