Multi-Agent System for Electric Vehicle Charging Scheduling in Parking Lots

Mao Tan;Zhonglin Zhang;Yuling Ren;Irampaye Richard;Yuzhou Zhang
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Abstract

As the number of electric vehicles (EVs) increases, massive numbers of EVs have started to gather in commercial parking lots to charge and discharge, which may significantly impact the operation of the grid. There may also be a deviation in the departure time of charged and discharged EVs in commercial parking lots. This deviation can lead to insufficient battery energy when the EVs leave the parking lot. This study uses the simulation software AnyLogic to build a commercial parking lot multi-agent simulation model, and the agent-based model can fully reflect the autonomy of individual EVs. Based on this simulation model, we propose an EV scheduling algorithm. The algorithm contains two main agents. The first is the power distribution center agent (PDCA), which is used to coordinate the energy output of photovoltaic (PV), energy storage system (ESS), and distribution station (DS) to solve the problem of grid overload. The second is the scheduling center agent (SCA), which is used to solve the insufficient battery energy problem due to EVs' random departures. The SCA includes two stages. In the first stage, a priority scheduling algorithm is proposed to emphasize the fairness of EV charging. In the second stage, a genetic algorithm is used to accurately determine the time interval between charging and discharging to ensure the maximum benefit of EV owner. Finally, simulation experiments are conducted in AnyLogic, and the results demonstrate the superiority of the algorithm over the classical algorithm.
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停车场电动汽车充电调度的多Agent系统
随着电动汽车数量的增加,大量电动汽车开始聚集在商业停车场进行充放电,这可能会对电网的运行产生重大影响。商业停车场电动汽车充电和放电的出发时间也可能存在偏差。这种偏差可能导致电动汽车离开停车场时电池能量不足。本研究使用仿真软件AnyLogic构建商业停车场多智能体仿真模型,基于智能体的模型能够充分体现个体电动汽车的自主性。在此仿真模型的基础上,提出了一种电动汽车调度算法。该算法包含两个主要代理。第一种是配电中心代理(PDCA),用于协调光伏(PV)、储能系统(ESS)和配电站(DS)的能量输出,以解决电网过载问题。二是调度中心代理(SCA),用于解决电动汽车随机发车导致电池电量不足的问题。SCA包括两个阶段。第一阶段,提出一种优先级调度算法,强调电动汽车充电的公平性;第二阶段采用遗传算法精确确定充放电时间间隔,保证电动汽车车主利益最大化。最后,在AnyLogic中进行了仿真实验,结果证明了该算法相对于经典算法的优越性。
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Front Cover Contents Research on Digital Twin System Platform Framework and Key Technologies of Unmanned Ground Equipment Hierarchical Disturbance Propagation Mechanism and Improved Contract Net Protocol for Satellite TT&C Resource Dynamic Scheduling Modeling and Analysis of Risk Propagation and Loss Causing Capacity for Key Nodes in Cyber-Physical Coupled Power Network
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