Principal Component Analysis-Based Shading Defect Identification and Categorization in Standalone PV Systems Using I-V Curves
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Date
2023-12-12
Journal Title
Journal ISSN
Volume Title
Publisher
University of Eloued جامعة الوادي
Abstract
Photovoltaic (PV) system health monitoring and fault diagnosis are essential for
optimizing power generation, enhancing reliability, and prolonging the lifespan of PV power
plants. Shading, especially in PV systems, leads to unique voltage-current (I-V) characteristics,
serving as indicators of system health. This paper presents a cost-effective and highly accurate
method for detecting, diagnosing, and classifying shading faults based on real I-V data obtained
through electrical measurements under both healthy and shaded conditions. The method leverages
Principal Component Analysis (PCA) to separate classes, and a confusion matrix assesses
classification accuracy. The results demonstrate a success rate exceeding 98% in various
configurations, using experimental data from a 250 W PV module. Importantly, this method relies
solely on existing electrical measurements, eliminating the need for additional sensors, making it
both efficient and cost-effective.
Description
Article
Keywords
Pv model, Principal component analysis, Health system, temperature, irradiation
Citation
Atiyah ,HayderDakhil . Boukattaya ,Mohamed. Ben Salem,Fatma. Principal Component Analysis-Based Shading Defect Identification and Categorization in Standalone PV Systems Using I-V Curves. The International Journal of Energetica. Vo8. No 02.12/12/2023.faculty of technology. university of el oued. [visited in ../../ .]. available from [copy the link here]