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Cluster Control for EVs Participating in Grid Frequency Regulation by Using Virtual Synchronous Machine with Optimized Parameters

机译:使用具有优化参数的虚拟同步机参与网格频率调节的EV的群集控制

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摘要

In this paper, a control method for electric vehicles (EVs) participating in grid Frequency regulation is proposed. Firstly, considering dispatching large-scale electric vehicles, the K-means clustering algorithm is applied to cluster EVs with different battery state of charge and with different average vehicle daily travel miles. Then, for each class of electric vehicle group, a multi-objective optimization model considering reducing power imbalance and feeding the driving power demand for electric vehicles is proposed. Multi-Objective Particle Swarm Optimization (MOPSO) algorithm is applied to solve the optimization model and obtain the best control parameters for “virtual synchronous machine”, which is functioned as the power controller between EVs and the power grid. At last, based on a Monte Carlo sampling, the simulation analysis of 50 EVs with the normal distribution of battery state of charge and average vehicle daily travel miles is carried out by using the proposed method. The results show that the proposed method can effectively classify the electric vehicles with different battery state of charge and different average vehicle daily travel miles. The parameters of the power converter controller for different classes of electric vehicles are optimized considering power grid frequency, their battery state of charge and their average daily travel miles, so as to maintain the balance of power grid frequency, and to meet the power needs of EV daily drive.
机译:本文提出了参与网格频率调节的电动车辆(EVS)的控制方法。首先,考虑调度大规模电动车辆,K-Means聚类算法应用于具有不同电池充电状态的集群EV,以及不同的平均车辆日常行驶里程。然后,对于每类电动车辆组,提出了考虑降低功率不平衡和馈送电动车辆的驱动电力需求的多目标优化模型。应用多目标粒子群优化(MOPSO)算法应用于解决优化模型,并获得“虚拟同步机器”的最佳控制参数,其作为EVS和电网之间的电源控制器。最后,基于蒙特卡罗采样,通过使用所提出的方法对50eV的电池充电状态和平均车辆日常行驶里程进行模拟分析。结果表明,该方法可以有效地将电动汽车与不同电池充电状态和不同的普通车辆日常行驶里程进行分类。考虑电网频率,电池充电状态及其平均日常行驶里程,优化电力转换器控制器的参数经过优化,以维持电网频率的平衡,并满足电网的平衡,并满足电网的平衡,并满足电力需求EV日常开车。

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    Dongqi Liu;

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  • 年度 2019
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  • 原文格式 PDF
  • 正文语种 eng
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