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Photovoltaic Array Fault Diagnosis Based on Gaussian Kernel Fuzzy C-Means Clustering Algorithm

机译:基于高斯核模糊C均值聚类算法的光伏阵列故障诊断

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摘要

In the fault diagnosis process of a photovoltaic (PV) array, it is difficult to discriminate single faults and compound faults with similar signatures. Furthermore, the data collected in the actual field experiment also contains strong noise, which leads to the decline of diagnostic accuracy. In order to solve these problems, a new eigenvector composed of the normalized PV voltage, the normalized PV current and the fill factor is constructed and proposed to characterize the common faults, such as open circuit, short circuit and compound faults in the PV array. The combination of these three feature characteristics can reduce the interference of external meteorological conditions in the fault identification. In order to obtain the new eigenvectors, a multi-sensory system for fault diagnosis in a PV array, combined with a data-mining solution for the classification of the operational state of the PV array, is needed. The selected sensors are temperature sensors, irradiance sensors, voltage sensors and current sensors. Taking account of the complexity of the fault data in the PV array, the Kernel Fuzzy C-means clustering method is adopted to identify these fault types. Gaussian Kernel Fuzzy C-means clustering method (GKFCM) shows good clustering performance for classifying the complex datasets, thus the classification accuracy can be effectively improved in the recognition process. This algorithm is divided into the training and testing phases. In the training phase, the feature vectors of 8 different fault types are clustered to obtain the training core points. According to the minimum Euclidean Distances between the training core points and new fault data, the new fault datasets can be identified into the corresponding classes in the fault classification stage. This strategy can not only diagnose single faults, but also identify compound fault conditions. Finally, the simulation and field experiment demonstrated that the algorithm can effectively diagnose the 8 common faults in photovoltaic arrays.
机译:在光伏(PV)阵列的故障诊断过程中,很难区分特征相似的单个故障和复合故障。此外,在实际现场实验中收集的数据还包含强烈的噪声,这导致诊断准确性下降。为了解决这些问题,构造并提出了由归一化PV电压,归一化PV电流和填充因子组成的新特征向量,以表征PV阵列中的常见故障,例如开路,短路和复合故障。这三个特征的组合可以减少外部气象条件对故障识别的干扰。为了获得新的特征向量,需要用于光伏阵列中的故障诊断的多传感器系统,以及用于对光伏阵列的运行状态进行分类的数据挖掘解决方案。选择的传感器是温度传感器,辐照度传感器,电压传感器和电流传感器。考虑到PV阵列中故障数据的复杂性,采用核模糊C均值聚类方法识别这些故障类型。高斯核模糊C均值聚类方法(GKFCM)在对复杂数据集进行分类时表现出良好的聚类性能,可以在识别过程中有效地提高分类精度。该算法分为训练和测试阶段。在训练阶段,将8种不同故障类型的特征向量聚类以获得训练核心点。根据训练核心点与新的故障数据之间的最小欧氏距离,可以在故障分类阶段将新的故障数据集识别为相应的类别。该策略不仅可以诊断单个故障,而且可以识别复合故障条件。最后,仿真和现场实验表明,该算法能够有效诊断光伏阵列中的8个常见故障。

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