电动汽车充电站与单元承诺模型的集成

Diaa Salman, Nasser Al Musalhi, M. Kuşaf, Erbuğ Çelebi
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引用次数: 0

摘要

插电式电动汽车(pev)的迅速普及给国家电网带来了巨大的影响和负荷,特别是在低压和中压配电基础设施中。这对电动汽车的进一步大规模普及造成了重大障碍。本文研究了电动汽车充电站对电力系统短期规划和控制的有效性,并采用动态规划-遗传算法(DP-GA)作为混合优化方法,使电力系统运行成本最小化。IEEE 14总线测试系统被用来评估建议的方法。长期短期记忆(LSTM)作为一种深度学习方法,正在被用于预测电动汽车充电站前一天的性能,以便与电网整合。结果表明,LSTM预测EV的均方误差(mean square error, MSE)在0.045左右,可以实现UC的计划,实现未来一天的最低生产成本为514707${\$}$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Electric Vehicle Charging Stations into the Unit Commitment Modeling
The rapid proliferation of plug-in electric vehicles (PEVs) has resulted in a significant impact and load being placed on the nation’s power grid as a result of the charging of a number of PEVs, especially at the low and medium voltage distribution infrastructure. This creates a significant obstacle to the further mass distribution of electric vehicles (EVs). In this study, the effectiveness of the EV charging stations on the short-term power system planning and control is being studied, and the dynamic programming-genetic algorithm (DP-GA) as a hybrid optimization approach is being used to minimize the power system operational costs. IEEE 14-bus test system is being used to evaluate the suggested methodology. Long short-term memory (LSTM) as a deep learning approach is being utilized to forecast the day ahead performance of EV charging stations in order to be integrated with the power grid. The result shows that the mean square error (MSE) of LSTM is around 0.045 for EV prediction to achieve the plan of UC with minimum production costs of 514707${\$}$ for the day ahead.
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