Sheeba, T. Blesslin and Sharanya, C. and Nayanatara, C. and Indumathi, S. K. and Kalins, K. and Rajathi, G. Ignisha (2022) Deep learning enabled smart charging technology for electric vehicles. In: INTERNATIONAL CONFERENCE ON ADVANCEMENTS IN MATERIALS AND MANUFACTURING ENGINEERING – ICAMME 2021: ICAMME 2021, 29–30 September 2021, Tamil Nadu, India.
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Abstract
Reliability, efficiency, and cost-effectiveness of smart grids are enhanced with power demand softening by means of efficient load management in electric vehicles. In such initiatives, the involvement of EV users may reduce due
to the lack of adaptable user-centric approaches. During the connection sessions, the EV charging time is determined
using a deep learning algorithm-based smart charging strategy proposed in this paper. Here, the total energy cost of the vehicle is minimized by making charging decisions considering demand time series, pricing, environment, driving, and other auxiliary data. The memorization technique is used for the estimation of the optimal solution of the existing connection sessions in the initial stage. The deep learning models are trained with this existing data and optimal decisions to make suitable decisions in real-time scenarios where car usage or future energy price values are undetermined. A significant reduction in the charging cost is observed by training the neural network with the proposed model. The results obtained are compared to the optimal charging costs computed and are found to be closely similar.
Item Type: | Conference or Workshop Item (Paper) |
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Subjects: | Electronics and Communication Engineering > Analog Electronics |
Divisions: | Electronics and Communication Engineering |
Depositing User: | Mr IR Admin |
Date Deposited: | 10 Sep 2024 05:49 |
Last Modified: | 10 Sep 2024 05:49 |
URI: | https://ir.vistas.ac.in/id/eprint/5378 |