The electric vehicle routing problem (EVRP) has garnered great interest from researchers and industrialists in an attempt to move from fuel-based vehicles to healthier and more efficient electric vehicles (EVs). While it seems that the EVRP should not be much different from traditional vehicle routing problems (VRPs), challenges like limited cruising time, long charging times, and limited availability of charging facilities for electric vehicles makes all the difference. Previous works target logistics and delivery-related solutions wherein a homogeneous fleet of commercial EVs have to return to the initial point after making multiple stops. On the opposing front, we solve a personal electric vehicle routing problem and provide an optimal route for a single vehicle in a long origin-destination (OD) trip. We perform multi-objective optimization - minimizing the total trip time and the cumulative cost of charging. In addition, we incorporate external and real-life elements like traffic at charging stations, detour distances for reaching a charging station, and variable costs of electricity at different charging stations into the problem formulation. In particular, we define a multi-objective mixed integer non-linear programming (MINLP) problem and obtain a feasible solution using the $\epsilon$-constraint algorithm. We further implement meta-heuristic techniques such as Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) to obtain the most optimal route and hence, the objective values. The experiment is carried out for multiple self-generated data instances and the results are thereby compared.
翻译:电动车辆路由问题引起了研究人员和工业家的极大兴趣。 电动车辆路线问题引起了研究人员和工业家的极大兴趣,试图从燃料车辆转向更健康、更高效的电动车辆(EVs ) 。虽然看来EVRP不应该与传统的车辆路线问题(VRPs)大不相同,但挑战也大不相同,如游轮时间有限、收费时间长,电动车辆收费设施有限等。先前的工作目标是后勤和与交付有关的解决方案,即商业车辆的车队在多站后必须回到最初点。在对面,我们解决个人电动车辆路线问题,为长期原地目的地旅行的单一车辆提供最佳路线。我们进行多目标优化,尽量减少总行程时间和累计收费费用。 此外,我们将外部和现实生活要素,如充电站的交通、到达收费站的距离,以及不同收费站的电费可变点的电费在形成问题中,特别是,我们定义了多目标混合的非线电子车辆路由多线路段驱动(MINPP),从而为长期目的地旅行的单一车辆提供了最佳路径规划(MER-ASimalimalimal-alalal-al-al-alisti),从而进一步使用最佳算方法,从而进一步获取了一个可操作。