Litcius/Paper detail

Evaluation of the performance of a FONN-based MPPT control for a photovoltaic watering system

Hossam Hassan Ammar, Ahmad Taher Azar, Mohamed I. Mahmoud, Raafat Shalaby

2023Ain Shams Engineering Journal14 citationsDOIOpen Access PDF

Abstract

This study aims to increase the effectiveness of photovoltaic pumping systems. A practical installation and cost-effective design are suggested. This paper examines the nonlinear behaviour of photovoltaic generators from a distinct perspective; where it repeatedly transitions between a constant current and a constant voltage source and shows how this affects the behaviour of the induction motors. A Fractional-order Neural Network (FONN) is suggested to forecast the harvested solar-energy. The results showed that FONN improved forecasting accuracy by effectively capturing the nonlinear behaviour of PV panels. A Fractional Order MPPT (FO-MPPT) control augmented with Gray Wolf, Anti-lion, and Whale metaheuristic optimizers is proposed and shows capacity to maximize the harvest power for the PV-driven Induction Motor-Pump. The proposed FO-MPPT is compared to conventional techniques using several performance metrics. According to the comparison study, the optimized FO-MPPT enhances the standard MPPT and shows superiority in managing the nonlinear and unpredictable dynamical loads.

Topics & Concepts

Maximum power point trackingPhotovoltaic systemControl theory (sociology)Nonlinear systemVoltageEngineeringComputer scienceControl (management)Electrical engineeringArtificial intelligenceQuantum mechanicsInverterPhysicsPhotovoltaic System Optimization TechniquesSolar Radiation and PhotovoltaicsMicrogrid Control and Optimization