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Power forecasting-based coordination dispatch of PV power generation and electric vehicles charging in microgrid

机译:基于PV发电和电动汽车充电的电力预测协调调度

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We propose herein an extended power forecasting-based coordination dispatch method for PV power generation microgrid with plug-in EVs (PVEVM) to improve the local consumption of renewable energy in the microgrid by guiding electric vehicle (EV) orderly charging. In this method, we use a clustering algorithm and neural network to build a power forecasting model (PFM) based on real data which can effectively characterise the uncertainty of PV power generation and EV charging load. Based on the interaction between the energy control centre (ECC) of the PVEVM and the EV users, a one-leader multiple-follower Stackelberg game is formulated, and the Stackelberg equilibrium is determined by using a power forecasting-based genetic algorithm (GA). As a main contribution of this paper, the PV power generation and EV charging load output from the PFM are used to generate a better quality initial population of the GA to improve its performance. A case study using real data from the Aifeisheng PV power station in China and EV charging stations in the UK verifies the good performance of the proposed extended coordination dispatch algorithm. (C) 2020 Elsevier Ltd. All rights reserved.
机译:我们在此提出了一种基于电力预测的基于电力预测的基于电力预测的PV发电微电网,通过引导电动车(EV)有序充电来改善微电网中可再生能量的局部消耗。在该方法中,我们使用聚类算法和神经网络基于实际数据来构建功率预测模型(PFM),这可以有效地表征光伏发电和EV充电负荷的不确定性。基于PVEVM和EV用户的能量控制中心(ECC)之间的相互作用,配制了一个领导的多个跟随器Stackelberg游戏,并且通过使用基于功率预测的遗传算法(GA)来确定Stackelberg平衡。作为本文的主要贡献,PFM的PV发电和EV充电负荷输出用于产生GA的更好的初始群,以提高其性能。使用来自中国的Aifisheng PV发电站的真实数据的案例研究和英国的EV充电站验证了所提出的扩展协调调度算法的良好性能。 (c)2020 elestvier有限公司保留所有权利。

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