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Fault diagnosis of photovoltaic strings by using machine learning‐based stacking classifier

Bo Liu, Kai Sun, Xiaoyu Wang, Jian Zhao, Xiaochao Hou

2023IET Renewable Power Generation20 citationsDOIOpen Access PDF

Abstract

Abstract Photovoltaic (PV) modules are prone to short circuits, open circuits, cracks, which can bring serious harmful effects. It is difficult to establish the corresponding PV fault models to diagnose the status of PV strings. The paper proposes a machine learning‐based stacking classifier (MLSC) for accurate fault diagnosis of PV strings. Specifically, for the operating state of PV modules, the parameter sensitivity algorithm is used to analyze the impact of characteristic factors on the characteristics of PV modules. Then based on the characteristic factors (irradiance, temperature, current, and power), MLSC is proposed to realize the accurate fault diagnosis of PV strings. This structure of MLSC is to integrate all kinds of classifiers by stacking to play the characteristics of each classifier. It combines the characteristics of various types of machine learning algorithms to improve the overall classification effect by using the advantages of each classifier. Finally, experiments reveal that MLSC improves the accuracy of PV fault diagnosis.

Topics & Concepts

Photovoltaic systemClassifier (UML)StackingArtificial intelligenceComputer scienceFault detection and isolationMachine learningAlgorithmPattern recognition (psychology)EngineeringElectrical engineeringPhysicsNuclear magnetic resonanceActuatorPhotovoltaic System Optimization TechniquesElectrical Fault Detection and ProtectionPower System Reliability and Maintenance
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