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Multiobjective Optimization of Large-Scale EVs Charging Path Planning and Charging Pricing Strategy for Charging Station

机译:大型EVS充电路径规划和充电站充电定价策略的多目标优化

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With the increasing number of electric vehicles (EVs), the charging demand of EVs has brought many new research hotspots, i.e., charging path planning and charging pricing strategy of the charging stations. In this paper, an integrated framework is proposed for multiobjective EV path planning with varied charging pricing strategies, considering the driving distance, total time consumption, energy consumption, charging fee such factors, while the charging pricing strategy is designed based on the objectives of maximizing the total revenues of the charging stations and balancing the profits of the charging stations. First, the energy consumption model of EVs, the M/M/S queuing model of charging stations, and the charging model of charging piles are established. A novel charging path planning algorithm is proposed based on bidirectional Martins’ algorithm, which can assist EV users to select charging stations and plan charging paths. Then, a particle swarm optimization (PSO) algorithm is applied to solve the optimal solution of charging station pricing designation. Finally, the method proposed in the paper is simulated on the street map of Shenzhen to verify the efficacy of the multiobjective charging path planning for EVs and the feasibility of the charging pricing strategy.
机译:随着越来越多的电动汽车(EVS),EVS的充电需求带来了许多新的研究热点,即充电站的充电路径规划和充电定价策略。在本文中,提出了一种具有各种充电定价策略的多目标EV路径规划的集成框架,考虑到驾驶距离,总时间消耗,能耗,充电费等因素,而计费定价策略是基于最大化的目标设计充电站的总收入和平衡充电站的利润。首先,建立了EVS的能量消耗模型,充电站的M / M / S排队模型和充电桩的充电模型。基于双向小管算法提出了一种新的充电路径规划算法,可以帮助推荐用户选择充电站和计划充电路径。然后,应用粒子群优化(PSO)算法来解决充电站定价指定的最佳解决方案。最后,在深圳的街道地图上模拟了本文提出的方法,以验证EVS的多目标充电路径规划的功效以及充电定价策略的可行性。

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