Comparative Path Planning Analysis for the Recommended E-Vehicle Charging Station

Achuta Hari Priya Nair, M. Sujith
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引用次数: 1

Abstract

Automotive consumers easily adapt to E-vehicles, and this is because of their low-cost maintenance and stable electricity charge rates. Apart from designing and manufacturing E-vehicles, there is an essential need to build an infrastructure that can provide an interface to communicate with the charging stations and also enhance the conveyance. The proposed design features the ideology of enhancing the EV-infrastructure, where a charging station is recommended and E-vehicle is scheduled using the FCFS algorithm by considering different scenarios and metrics, keeping SOC as a constraint. Also, the shortest path for the same is proposed by comparing the Dijkstra and ACO algorithms. The model is anticipated to devise an optimal and feasible path for an E-vehicle to travel towards the recommended charging station by providing optimal information to the EV-driver to recharge the E-vehicle during his journey. The entire simulation for the proposed design is carried out in MATLAB R2021b.
推荐式电动汽车充电站路径规划比较分析
汽车消费者很容易适应电动汽车,这是因为它们的维护成本低,充电价格稳定。除了设计和制造电动汽车外,还需要建立一个基础设施,提供与充电站通信的接口,并增强传输能力。该设计的主要思想是增强电动汽车基础设施,在考虑不同场景和指标的情况下,推荐充电站,并使用FCFS算法调度电动汽车,同时保持SOC作为约束。同时,通过比较Dijkstra算法和蚁群算法,给出了最短路径。该模型通过向电动汽车驾驶员提供旅途中充电的最优信息,设计出电动汽车向推荐充电站行驶的最优可行路径。在MATLAB R2021b中对所提出的设计进行了整个仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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