Title: Improving the diagnosis of partial shading faults by utilising artificial neural networks optimised with the whale optimisation algorithm
Authors: Saliha Sebbane; Nabil El Akchioui
Addresses: Faculty of Science and Technology, University Abdelmalek Essaadi, Al Hoceima, P.O. Box 2117, Tetouan, 93000, Morocco ' Faculty of Science and Technology, University Abdelmalek Essaadi, Al Hoceima, P.O. Box 2117, Tetouan, 93000, Morocco
Abstract: This paper introduces a hybrid approach combining an artificial neural network (ANN) with the whale optimisation algorithm (WOA) to diagnose partial shading in photovoltaic (PV) systems. It features two WOA-ANN models: WOA-ANN-classification for detecting and classifying PV array states as normal or partially shaded, and WOA-ANN-localisation for pinpointing the shading location. The WOA was compared with other algorithms like grey wolf optimisation (GWO), particle swarm optimisation (PSO), and differential evolution (DE). The ANN was trained using metrics such as mean square error, CPU time, and training accuracy. Experimental results showed the WOA-ANN models outperformed others, with the classification model achieving 99.99% accuracy and the location model 99.96% accuracy. This hybrid methodology significantly enhances fault diagnosis accuracy in PV systems, supporting sustainable energy efficiency.
Keywords: photovoltaic (PV) system; partial shading fault; ANN; artificial neural network; WOA; whale optimisation algorithm; fault detection; classification; localisation.
DOI: 10.1504/IJAAC.2025.145916
International Journal of Automation and Control, 2025 Vol.19 No.3, pp.306 - 330
Received: 04 Nov 2023
Accepted: 20 May 2024
Published online: 30 Apr 2025 *