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Spatial-Temporal Distribution Model of Electric Vehicle Charging Demand Based on a Dynamic Evolution Process

机译:基于动态演化过程的电动汽车充电需求时空分布模型

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Electric vehicles (EV) comprise one of the foremost components of the smart grid and tightly link the power system with the road network. Spatial and temporal randomness in electric charging distribution will exert negative impacts on power grid dispatch. Existing research focuses mainly on mathematical inferences from statistical data, and the dynamic movement of an individual vehicle traveling in a traffic system is rarely taken into account. This paper proposes a charging demand simulation method based on the Agent-Cellular Automata model to describe the changes in location and the state of charge (SOC) of a moving EV. CRUISE software is used to analyze power consumption in different scenarios. Then, the Monte Carlo algorithm models the dynamic fluctuation of EV traffic and charging demands. Case studies are conducted on a typical composite system consisting of a 54-node distribution system and a 25-node traffic network, and the simulation results demonstrate the effectiveness of the proposed method.
机译:电动汽车(EV)构成智能电网的最重要组成部分之一,并将电力系统与道路网络紧密相连。电荷分配的时空随机性将对电网调度产生负面影响。现有研究主要集中在从统计数据得出的数学推论上,很少考虑在交通系统中行驶的单个车辆的动态运动。本文提出了一种基于Agent-Cellular Automata模型的充电需求仿真方法,以描述移动电动汽车的位置和充电状态(SOC)的变化。 CRUISE软件用于分析不同情况下的功耗。然后,蒙特卡洛算法对电动汽车流量和充电需求的动态波动进行建模。在一个典型的由54个节点的配电系统和一个25个节点的交通网络组成的复合系统上进行了案例研究,仿真结果证明了该方法的有效性。

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