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A charging-scheme decision model for electric vehicle battery swapping station using varied population evolutionary algorithms

机译:电动汽车电池交换站的充电方案决策模型使用各种群体进化算法

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This paper proposes a new battery swapping station (BSS) model to determine the optimized charging scheme for each incoming Electric Vehicle (EV) battery. The objective is to maximize the BSS's battery stock level and minimize the average charging damage with the use of different types of chargers. An integrated objective function is defined for the multi-objective optimization problem. The genetic algorithm (GA), differential evolution (DE) algorithm and three versions of particle swarm optimization (PSO) algorithms have been implemented to solve the problem, and the results show that GA and DE perform better than the PSO algorithms, but the computational time of GA and DE are longer than using PSO. Hence, the varied population genetic algorithm (VPGA) and varied population differential evolution (VPDE) algorithm are proposed to determine the optimal solution and reduce the computational time of typical evolutionary algorithms. The simulation results show that the performances of the proposed algorithms are comparable with the typical GA and DE, but the computational times of the VPGA and VPDE are significantly shorter. A 24-h simulation study is carried out to examine the feasibility of the model. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的电池交换站(BSS)模型,用于确定每个进入电动车辆(EV)电池的优化充电方案。目的是最大限度地提高BSS的电池储存水平,并最大限度地减少使用不同类型的充电器的平均充电损坏。为多目标优化问题定义了集成的目标函数。已经实施了遗传算法(GA),差分演进(DE)算法和三个版本的粒子群优化(PSO)算法来解决问题,结果表明GA和DE比PSO算法更好,但计算GA和DE的时间比使用PSO更长。因此,提出了各种群体遗传算法(VPGA)和各种种群差分演进(VPDE)算法来确定最佳解决方案并降低典型进化算法的计算时间。仿真结果表明,所提出的算法的性能与典型的GA和DE相当,但VPGA和VPDE的计算时间明显较短。进行了24小时模拟研究以检查模型的可行性。 (c)2017 Elsevier B.v.保留所有权利。

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