Research on Anomaly Detection and Root Cause Analysis of Performance Degradation in Photovoltaic Power Stations
DOI:
https://doi.org/10.71411/eaou.2026.v2i1.1177Keywords:
photovoltaic power generation, anomaly detection, performance degradation, root cause analysis, preventive maintenanceAbstract
To address abnormal phenomena such as sudden power drops during photovoltaic power plant operation, this study proposes a data-driven anomaly detection and root cause analysis method to enhance system maintenance efficiency and power generation benefits. Utilising 5-minute operational data from a 50kW photovoltaic power plant, combined with NASA meteorological data, an integrated anomaly detection framework and multi-dimensional feature engineering system were constructed. K-Means++ clustering and LightGBM classification models were employed for pattern recognition and root cause tracing of detected anomalies. Experiments demonstrate: 1) The anomaly detection framework achieves an F1 score of 0.87; 2) Three distinct power loss patterns and their distribution ratios are identified; 3) The LightGBM root cause classification model attains an average accuracy of 88%. The proposed method effectively diagnoses the root causes of performance degradation in photovoltaic systems, providing both theoretical foundations and technical support for implementing predictive maintenance.
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Copyright (c) 2026 Journal of the European Academy Open University

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