International Journal of Advanced Engineering Application

ISSN: 3048-6807

Prototyping Design and Optimization of Smart Electric Vehicles/Stations System using

Author(s):Abebe Bekele1, Haile Tesfaye2, Kebede Alemu3

Affiliation: 1,2,3 Adama Science And Technology University ASTU- Ethiopia

Page No: 20-27

Volume issue & Publishing Year: Volume 1 Issue 7,Nov-2024

Journal: International Journal of Advanced Engineering Application (IJAEA)

ISSN NO: 3048-6807

DOI:

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Abstract:
This paper demonstrates an experimental attempt to prototype electric vehicle charging station's (EVCS) decision-making unit, using artificial neural network (ANN) algorithm. The algorithm acts to minimize the queuing delay in the station, with respect to the vehicle state of charge (SOC), and the expected arrival time. A simplified circuit model has been used to prototype the proposed algorithm, to minimize the overall queuing delay. Herein, the worst-case scenario is considered by having number of electric vehicles arriving to the station at the same time greater than the charging points available in the station side. Accordingly, the optimization technique was applied to reduce the mean charging time of the vehicles and minimize queuing delay. Results showed that this model can help in reducing the queuing delay by around 20% of the mean charging time of the station, while referring to a bare model without ANN algorithm as a reference.

Keywords: Real-time algorithms, Physical realization, Electric vehicles stations, Queuing delay optimization, Artificial neural network (ANN) algorithm.

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