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Data-driven Approach for Isolated PV Shading Fault Diagnosis Based on Experimental I-V curves Analysis

机译:基于实验I-V曲线分析的数据驱动方法用于隔离式光伏阴影故障诊断

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This paper deals with a data-driven fault diagnosis method for photovoltaic (PV) system. The proposed method is based on the Principal Component Analysis (PCA) to detect and identify different shading types. The PCA uses the current-voltage (I-V) curves that are experimentally determined for a monocrystalline PV module of 250Wc. The experimental tests were carried out for several shading patterns covering the PV cells. For the diagnosis process, three features (current, voltage and power of PV module) are extracted for each test to build the database which is then analyzed through the PCA algorithm. Simulation results using the experimental data, prove the efficiency of the proposed method in terms of discrimination. The healthy data are clearly separated from the faulty ones despite sudden irradiation variations.
机译:本文涉及光伏(PV)系统的数据驱动故障诊断方法。该方法基于主成分分析(PCA)来检测和识别不同的阴影类型。 PCA使用实验确定的电流 - 电压(I-V)曲线,该曲线为250WC的单晶PV模块。对覆盖PV电池的若干阴影图案进行了实验测试。对于诊断过程,为每个测试提取三个特征(PV模块的电流,电压和功率)以通过PCA算法构建数据库,然后通过PCA算法分析。使用实验数据的仿真结果,证明了在歧视方面提出了拟议方法的效率。尽管突然照射变化,健康数据显然与故障的数据分开。

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