AI-Driven Optimization of Maximum Power Point Tracking (MPPT) for Enhanced Efficiency in Solar Photovoltaic Systems: A Comparative Analysis of Conventional and Advanced Techniques
Val Hyginus Udoka Eze1*, Pius Erheyovwe Bubu1, Charles Ibeabuchi Mbonu2, Ogenyi Fabian C1 and Ugwu Chinyere Nneoma1
1Department of Electrical, Telecom. & Computer Engineering, Kampala International University, Uganda
2Department of Electrical and Electronic Engineering, Federal University of Technology Owerri, Imo State
*Corresponding Author: Val Hyginus Udoka Eze, udoka.eze@kiu.ac.ug, Kampala International University, Western Campus, Ishaka, Uganda (ORCID: 0000-0002-6764-1721)
ABSTRACT
The growing global demand for clean, sustainable energy has driven extensive research into renewable energy technologies, with solar energy emerging as a highly promising solution. Solar photovoltaic (PV) systems are increasingly adopted for their ability to convert sunlight into electricity, providing an environmentally friendly alternative to fossil fuels. However, the performance of PV systems is significantly influenced by environmental factors, particularly solar irradiance and temperature, which lead to fluctuations in power output. This study explores the application of Artificial Intelligence (AI)-based Maximum Power Point Tracking (MPPT) techniques to optimize the efficiency of PV systems. AI-driven MPPT controllers, incorporating machine learning, fuzzy logic, and genetic algorithms, offer enhanced adaptability, responsiveness, and efficiency compared to traditional methods. The research focuses on the design, development, and evaluation of an AI-optimized MPPT controller prototype, demonstrating the potential of AI to overcome the limitations of conventional MPPT techniques. This optimization enhances the efficiency, stability, and scalability of solar energy systems, particularly in rural electrification and industrial energy management. Among traditional MPPT methods, the Optimized Adaptive Differential Conductance (OADC) technique is notable for its simplicity, cost-effectiveness, and ease of implementation, while the Scanning Particle Swarm Optimization (SPSO) technique stands out for its superior tracking accuracy and ability to achieve real-time convergence to the Maximum Power Point.
Keywords: Artificial Intelligence, Maximum Power Point Tracking, Solar Photovoltaic Systems, Machine Learning, Fuzzy Logic, Genetic Algorithms, Renewable Energy
CITE AS: Val Hyginus Udoka Eze, Pius Erheyovwe Bubu, Charles Ibeabuchi Mbonu, Ogenyi Fabian C and Ugwu Chinyere Nneoma (2025). AI-Driven Optimization of Maximum Power Point Tracking (MPPT) for Enhanced Efficiency in Solar Photovoltaic Systems: A Comparative Analysis of Conventional and Advanced Techniques. INOSR Experimental Sciences 15(1):63-81. https://doi.org/10.59298/INOSRES/2025/151.6381