A Sliding Mode Controller for Prediction of the Maximum Power Point Tracking of Hybrid Renewable Sources
Zhenis S. Al_Lami G.K. Hussein S.A. Mohsen K.S. Jassim A.A. Ibrahim S.K. Alsrray K.B.F. Abdulhussain Z.N.
September 2023Islamic Azad University
Majlesi Journal of Electrical Engineering
2023#17Issue 3137 - 144 pp.
The integration of a fuel cell and solar cell into a generator system presents an effective solution to numerous energy-related challenges. This system consists of solar panels, fuel cells, voltage converters, and a battery or supercapacitor. The performance of this electricity generation system is influenced by various factors, including load nature, system connection, and energy management. This study focuses on maximizing power point tracking in a grid-independent mode. To optimize efficiency, a DC/DC voltage converter is employed to align the load with the characteristics of the maximum power point. The algorithms used for maximum power point tracking are categorized into three groups: perturbation and observation (P&O), incremental impedance, and artificial neural networks (ANN). In this study, we introduce two novel algorithms based on neural networks and evaluate their performance in comparison to other neural networks. Additionally, we propose a control strategy based on a selected slip level for photovoltaic generators. The proposed approach demonstrates superior and more efficient performance compared to other methods, making it a promising technology for sustainable energy generation.
Artificial Neural Network , Maximum Power Point Tracking , Sliding Mode Controller , Solar Panels
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Almaty Technological University, Almaty, Kazakhstan
Department of Biomedical Engineering, Ashur University College, Baghdad, Iraq
Al-Manara College for Medical Sciences, Maysan, Iraq
Information and Communication Technology Research Group, Scientific Research Center, Al-Ayen University, Thi-Qar, Iraq
Department of Medical Laboratory Technics, Al-Hadi University College, Baghdad, 10011, Iraq
Department of Medical Laboratory Technics, Al-Nisour University College, Baghdad, Iraq
Department of Medical Laboratory Technics, Al-Esraa University College, Baghdad, Iraq
National University of Science and Technology, Dhi Qar, Iraq
Almaty Technological University
Department of Biomedical Engineering
Al-Manara College for Medical Sciences
Information and Communication Technology Research Group
Department of Medical Laboratory Technics
Department of Medical Laboratory Technics
Department of Medical Laboratory Technics
National University of Science and Technology
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