2024
DOI: 10.21608/svusrc.2024.279389.1198
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Comparative Analysis of Machine Learning Techniques for Fault Detection in Solar Panel Systems

Montaser Abdelsattar Mohamed Saeed,
Ahmed Rasslan,
Ahmed Emad-Eldeen

Abstract: The utilization of Machine Learning (ML) classifiers offers a viable approach to improving diagnostic accuracy and system dependability in the pursuit of optimizing problem detection in solar panel systems. This work aims to conduct a thorough assessment of different Machine Learning (ML) classifiers in order to determine the most efficient models for detecting faults in solar panel systems. We rigorously tested and analyzed the classifiers AdaBoost, GaussianNB, Logistic Regression, Support Vector Classifier (… Show more

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