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Revolutionizing photovoltaic consumption and electric vehicle charging: A novel approach for residential distribution systems

Qinglin MengKey Laboratory of Smart Energy & Information Technology of Tianjin Municipality Tianjin University Tianjin ChinaXinyu TongState Grid Tianjin Electric Power Company Tianjin ChinaSheharyar HussainThe Institute of Marine Electronic and Intelligent System Ocean College Zhejiang University Zhoushan ChinaFengzhang LuoKey Laboratory of Smart Grid of Ministry of Education Tianjin University Tianjin ChinaFei ZhouInstitute of Computing and Application (Artificial Intelligence Analysis Research Center) State Grid Smart Grid Research Institute Co., Ltd. Beijing ChinaLei LiuState Grid Tianjin Electric Power Company Tianjin ChinaYing HeGreen Hydropower Research Institute School of Mechanical Engineering Tianjin Renai College Tianjin ChinaXiaolong JinKey Laboratory of Smart Energy & Information Technology of Tianjin Municipality Tianjin University Tianjin ChinaBotong LiKey Laboratory of Smart Grid of Ministry of Education Tianjin University Tianjin China
2024en
ABI

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Abstract Electric vehicles (EVs) and small photovoltaic (PV) installations advance residential power grids by lowering charging costs and fostering eco‐friendly operations. Yet, the variable nature of EV charging presents challenges to grid reliability. This research introduces a Monte Carlo‐based simulation for predicting EV charging loads and a systematic charging method that integrates a ‘green electricity’ pricing scheme with a joint optimization model for PV and EV management. By applying an improved ant lion optimizer (IALO) algorithm enriched with differential evolution features, an optimization strategy that markedly enhances grid performance is devised. In a park scenario, this ‘green electricity’ model reduced the mean square error of EV charging load by 11.82%, smoothed the power load curve, and improved grid stability. When compared with particle swarm optimization (PSO) and grey wolf optimizer (GWO) algorithms, the IALO algorithm boosted overall revenue by 16.8% and 12.8%, increased PV utilization by 162.3% and 37.1%, and significantly cut carbon emissions by 159.6% and 31.6%, respectively. These outcomes affirm the financial, environmental, and functional benefits of our proposed approach.

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