


Volume 20 No 20 (2022)
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ARTIFICIAL NEURAL NETWROK BASED BIDIRECTIONAL ELECTRIC VEHICLE CHARGER FOR V2G APPLICATION
K. Rishika,A. Naveen Kumar,Dr. T. Anil Kumar
Abstract
In this paper, reversiblecharger for electric vehicles that employs a high-gain boost converter and an
ANN controller. This research indicates that a bidirectional converter is required for a state of charge
of a EV charger to accommodate many types of charging, including vehicle-to-grid (V2G).
Bidirectional charger will typically consist of a buck converter and a high gain boost converter setup.
We present a bidirectional on-board single-phase electric vehicle charger that is managed by the
battery's charge level. In comparison to the current PI controller, the on-board electric vehicle charger
built on ANN technology offers greater efficiency. To verify the bidirectional on-board charger's high
gain boost converter capabilities, simulation is done using the MATLAB/SIMULINK software
Keywords
Artificial Neural Network (ANN), Electric Vehicle (EV), Vehicle to Grid (V2G), Grid to Vehicle (G2V), state of charge (SOC),
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