Azadi Amir Hossein Sheikh, Khalilzadeh Mohammad, Antucheviciene Jurgita, Heidari Ali, Soon Amirhossein
School of Industrial Engineering, College of Engineering, University of Tehran, Tehran 1417614411, Iran.
Industrial Engineering Department, Faculty of Engineering and Natural Sciences, Istinye University, Sarıyer, Istanbul 34396, Turkey.
Biomimetics (Basel). 2024 Apr 18;9(4):242. doi: 10.3390/biomimetics9040242.
Due to the high pollution of the transportation sector, nowadays the role of electric vehicles has been noticed more and more by governments, organizations, and environmentally friendly people. On the other hand, the problem of electric vehicle routing (EVRP) has been widely studied in recent years. This paper deals with an extended version of EVRP, in which electric vehicles (EVs) deliver goods to customers. The limited battery capacity of EVs causes their operational domains to be less than those of gasoline vehicles. For this purpose, several charging stations are considered in this study for EVs. In addition, depending on the operational domain, a full charge may not be needed, which reduces the operation time. Therefore, partial recharging is also taken into account in the present research. This problem is formulated as a multi-objective integer linear programming model, whose objective functions include economic, environmental, and social aspects. Then, the preemptive fuzzy goal programming method (PFGP) is exploited as an exact method to solve small-sized problems. Also, two hybrid meta-heuristic algorithms inspired by nature, including MOSA, MOGWO, MOPSO, and NSGAII_TLBO, are utilized to solve large-sized problems. The results obtained from solving the numerous test problems demonstrate that the hybrid meta-heuristic algorithm can provide efficient solutions in terms of quality and non-dominated solutions in all test problems. In addition, the performance of the algorithms was compared in terms of four indexes: time, MID, MOCV, and HV. Moreover, statistical analysis is performed to investigate whether there is a significant difference between the performance of the algorithms. The results indicate that the MOSA algorithm performs better in terms of the time index. On the other hand, the NSGA-II-TLBO algorithm outperforms in terms of the MID, MOCV, and HV indexes.
由于交通运输部门的高污染问题,如今电动汽车的作用越来越受到政府、组织和环保人士的关注。另一方面,近年来电动汽车路径规划(EVRP)问题得到了广泛研究。本文研究了EVRP的一个扩展版本,其中电动汽车为客户送货。电动汽车有限的电池容量导致其运营范围小于汽油车。为此,本研究考虑了多个电动汽车充电站。此外,根据运营范围,可能不需要完全充电,这减少了运营时间。因此,本研究也考虑了部分充电。该问题被表述为一个多目标整数线性规划模型,其目标函数包括经济、环境和社会方面。然后,采用抢占式模糊目标规划方法(PFGP)作为精确方法来解决小规模问题。此外,还利用了两种受自然启发的混合元启发式算法,包括MOSA、MOGWO、MOPSO和NSGAII_TLBO,来解决大规模问题。通过求解大量测试问题得到的结果表明,混合元启发式算法能够在质量方面提供高效的解决方案,并在所有测试问题中提供非支配解。此外,从时间、MID、MOCV和HV这四个指标对算法性能进行了比较。此外,还进行了统计分析,以研究算法性能之间是否存在显著差异。结果表明,MOSA算法在时间指标方面表现更好。另一方面,NSGA-II-TLBO算法在MID、MOCV和HV指标方面表现更优。