Department of Electrical and Electronics Engineering, Jai Shriram Engineering College, Tirupur, Tamil Nadu, India.
Department of Electrical and Electronics Engineering, KIT-Kalaignar karunanidhi Institute of Technology, Coimbatore, Tamil Nadu, India.
PLoS One. 2023 Jul 26;18(7):e0284421. doi: 10.1371/journal.pone.0284421. eCollection 2023.
India's expanding population has necessitated the development of alternate transportation methods with electric vehicles (EVs) being the most indigenous and need for the current scenario. The major hindrance is the undue influence on the power distribution system caused by incorrect charging station setup. Renewable Energy Sources (RES) have a lower environmental impact than the non-renewable sources of energy and due to which Plug-in Hybrid Electric Vehicles (PHEV) charging stations are installed in the highest-ranking buses to facilitate their effective placements. Based on meta-heuristic optimization, this study offers an effective PHEV charging stations allocation approach for RES applications. The primary objective of the developed system is to create a charging network at a reasonable cost while maintaining the operational features of the distribution network. These troublesare handled by applying meta-heuristic algorithms and optimum planning based on renewable energy systems to satisfy the outcomes of the variables. As a result, by adding charging station parameters, this research proposes to conceptualize the distribution of optimal charging stationsas multiple-objectives of the problem. Furthermore, the PHEV RES and charging station location problem is handled in this study by deploying a novel hybrid algorithm termed as Atom Search Woven Aquila Optimization Algorithm (AT-AQ) that includes the ideas of both Aquila Optimizer (AO) and Atom Search Optimization (ASO) Algorithms. In reality, Aquila Optimizer is a unique population-based optimization approach energized by Aquila's behaviour when seeking prey and it solves the problems of slow convergence and local optimum trapping. According to the findings of the experiments, the proposed model outperformed the other methods in terms of minimized cost function.
印度不断增长的人口使得开发替代交通方式变得必要,电动汽车 (EV) 是最本土的选择,也是当前情况下的迫切需求。主要的障碍是充电站设置不当对配电系统的不当影响。与不可再生能源相比,可再生能源对环境的影响更小,因此插电式混合动力电动汽车 (PHEV) 充电站被安装在排名最高的公共汽车上,以方便其有效安置。本研究基于元启发式优化,为可再生能源应用提供了一种有效的 PHEV 充电站分配方法。所开发系统的主要目标是在保持配电网运行特性的同时,以合理的成本创建一个充电网络。这些问题通过应用元启发式算法和基于可再生能源系统的最佳规划来解决,以满足变量的结果。因此,通过添加充电站参数,本研究提出将最优充电站的分布概念化为问题的多个目标。此外,本研究通过部署一种名为原子搜索编织天鹰优化算法 (AT-AQ) 的新型混合算法来处理 PHEV 可再生能源和充电站位置问题,该算法包含了天鹰优化器 (AO) 和原子搜索优化器 (ASO) 算法的思想。实际上,天鹰优化器是一种独特的基于群体的优化方法,它受天鹰在寻找猎物时的行为启发,并解决了收敛速度慢和局部最优陷阱的问题。根据实验结果,所提出的模型在最小化成本函数方面优于其他方法。