Electric vehicles (EVs) have been adopted in urban areas to reduce environmental pollution and global warming as a result of the increasing number of freight vehicles. However, there are still deficiencies in routing the trajectories of last-mile logistics that continue to impact social and economic sustainability. For that reason, in this paper, a hyper-heuristic (HH) approach called Hyper-heuristic Adaptive Simulated Annealing with Reinforcement Learning (HHASA$_{RL}$) is proposed. It is composed of a multi-armed bandit method and the self-adaptive Simulated Annealing (SA) metaheuristic algorithm for solving the problem called Capacitated Electric Vehicle Routing Problem (CEVRP). Due to the limited number of charging stations and the travel range of EVs, the EVs must require battery recharging moments in advance and reduce travel times and costs. The HH implemented improves multiple minimum best-known solutions and obtains the best mean values for some high-dimensional instances for the proposed benchmark for the IEEE WCCI2020 competition.
翻译:由于货运车辆数量不断增加,城市地区采用了超湿适应性模拟安纳林法,以减少环境污染和全球升温,不过,在继续影响社会和经济可持续性的最后一英里物流轨迹的路线方面仍然存在缺陷,因此,在本文件中,采用了超湿(HHH)法,称为超湿适应性模拟安纳林加强化学习(HHHASA$ ⁇ RL}$),由多臂土匪法和自行调整的安纳林模拟(SA)计量经济学算法组成,以解决所谓 " 电动车辆排出问题 " 的问题,由于充电站数量有限,而且EVs的旅行范围有限,EV必须提前电池充电,减少旅行时间和费用,HH改进了多种最起码已知的解决方案,并为拟议的IEEWCCI20竞赛基准的一些高维度实例获得最佳平均值。