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Title Decentralized Energy Storage System For Evs Charging And Discharging In Smart Cities Context
ID_Doc 17649
Authors Alghamdi T.G.; Said D.; Mouftah H.T.
Year 2019
Published IEEE International Conference on Communications, 2019-May
DOI http://dx.doi.org/10.1109/ICC.2019.8761138
Abstract In this paper, we consider the Electric Vehicles (EVs) interaction with a decentralized energy storage system (DESS) located at the public supply station. To manage the EV charging and discharging process, we propose a scheduling algorithm aiming to maximize the EV drivers' satisfaction and minimize the DESSs' stress level. Simulation results using realistic scenarios are conducted to validate the proposed approach and demonstrate its efficiency and effectiveness while satisfying the defined constraints. © 2019 IEEE.
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