Subash Kumar, C S (2023) ANN Optimized Hybrid Energy Management Control System for Electric Vehicles. Studies in Informatics and Control, 32 (1). pp. 101-110. ISSN 12201766
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Abstract
The automobile industry is focusing on renewable power sources for driving Electric Vehicles (EVs), which results in the reduction of pollution. This paper presents an Artificial Neural Network (ANN) optimized hybrid Energy Management System (EMS), which was designed for solar Photovoltaic (PV) Electric Vehicles (EVs). In the proposed EMS, two DC-DC converters are utilized, namely a High Gain Interleaved Boost Converter (HGIBC) and a conventional boost converter. The main use of the HGIBC is to harvest maximum power from the solar PV panel which is accomplished with the help of a Model Predictive Controller (MPC) and the other DC-DC converter is used for maintaining the DC link voltage constant. The model predictive controller not only controls the parameters involved,but it can also predict a future change in these parameters, which cannot be performed by conventional controllers. The purpose of this paper is to proposea hybrid energy supply systemfor EVs based on a Battery and an Ultra-Capacitor. The energy of the battery and of the UC is controlled by an ANNcontrollerand also evaluated by means of a conventional PI controller. Based on the simulation results, it can be concluded thatthe ANN controller showed a better performance in comparison with the Proportional Integral (PI) controller. The entire structure wasanalysedfor various conditions of the State of Charge (SoC) of the Battery using MATLAB/Simulink
Item Type: | Article |
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Subjects: | D Electrical and Electronics Engineering > Solar Energy D Electrical and Electronics Engineering > Electric and Hybrid Vehicles J Physics > Energy storage devices |
Divisions: | Electrical and Electronics Engineering |
Depositing User: | Users 5 not found. |
Date Deposited: | 26 Jul 2024 10:15 |
Last Modified: | 16 Aug 2024 09:01 |
URI: | https://ir.psgitech.ac.in/id/eprint/819 |