Authors: Pan Subrata, Indian Institute of Engineering Science and Technology; Shibpur Maity Santi Prasad, Indian Institute of Engineering Science and Technology, ShibpurIacovos Ioannou, Department of Computer Science, University of Cyprus, and CYENS - Centre of Excellence, 1678 Nicosia, Cyprus; Vassiliou Vasos, Department of Computer Science, University of Cyprus, and CYENS - Centre of Excellence, 1678 Nicosia, Cyprus Adhvaryu Krishnendu, Bankura Unnayani Institute of Engineering
In this paper, we present a Reinforcement Learning (RL) based strategy for placing optimal charging stations (CS) of electric vehicles (EVs) in the case of Urban planning and smart city development under digital twin. The objective is to minimize the energy required by EVs to reach the CS for recharging. Our approach shows the efficacy of computationally identified CS placement over random placement. Extensive research has demonstrated that an RL-based strategy yields better results in identifying suitable CS locations than random positioning. Based on our investigation, the proposed method finds the most effective positions and some alternative locations for the placement of CS. This study presents a novel approach with 13.15 % enhancement in energy efficiency compared to related research findings. Furthermore, our proposed approach demonstrates expedited attainment of an optimal policy, outperforming existing literature.
Keywords: Charging station placement, reinforcement learning, epsilon--greedy policy, energy consumption, Urban Planning, Smart City
Published in: IEEE Transactions on Antennas and Propagation( Volume: 71, Issue: 4, April 2023)
Page(s): 2908 - 2921
Date of Publication: 2908 - 2921
DOI: 10.1109/TAP.2023.3240032
Publisher: UNITED SOCIETIES OF SCIENCE