电动汽车路径问题的蚁群优化

Michalis Mavrovouniotis, G. Ellinas, M. Polycarpou
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引用次数: 24

摘要

蚁群优化算法已被证明是解决复杂优化问题的有力工具。本文将蚁群算法应用于电动汽车路径问题。由于电动汽车的能量水平受到几个不确定因素的影响,因此考虑使用电动汽车代替传统汽车带来了新的挑战。因此,电动汽车的可行路线必须考虑其在日常运行过程中(如有需要)对充电站的访问次数。在提出的EVRP蚁群算法(ACO-EVRP)中加入了一种前瞻性策略,该策略可以估计电动汽车在其行驶里程内是否有充电站。对几个基准问题的仿真结果表明,所提出的ACO-EVRP方法能够为电动汽车车队输出能量方面的可行路线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ant Colony optimization for the Electric Vehicle Routing Problem
Ant colony optimization (ACO) algorithms have proved to be powerful tools to solve difficult optimization problems. In this paper, ACO is applied to the electric vehicle routing problem (EVRP). New challenges arise with the consideration of electric vehicles instead of conventional vehicles because their energy level is affected by several uncertain factors. Therefore, a feasible route of an electric vehicle (EV) has to consider visit(s) to recharging station(s) during its daily operation (if needed). A look ahead strategy is incorporated into the proposed ACO for EVRP (ACO-EVRP) that estimates whether at any time EVs have within their range a recharging station. From the simulation results on several benchmark problems it is shown that the proposed ACO-EVRP approach is able to output feasible routes, in terms of energy, for a fleet of EVs.
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