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Cluster analysis on signals from XLPE cable partial discharge detection

机译:XLPE电缆局部放电检测信号的聚类分析

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XLPE cables have had a large number of applications in the power grid, with good insulation properties, reliable power supply and easy to manufacture and install, however partial discharges caused by insulation defects would have serious consequences, such as insulation breakdown. Therefore, the cable partial discharge detection is of great significance. Since the partial discharge signal is weak and complex, it can easily be interfered by background noise or electromagnetic interference from outside, mainly from the radio signal propagation, a variety of spark discharge near the test site, discharge welding and high-voltage equipment, over-voltage pulse, corona discharge caused by poor contact, inductive discharge caused by a grounded metal object. These signals are random, whose unpredictable nature often have a great interference on partial discharge detection. In this paper, high-frequency current method is used for partial discharge detection. High-frequency current sensors are coupled to a large number of interfering signals. Cluster analysis starting from the distance matrix, selects the magnitude, rise time, fall time and frequency as variable, gets the data matrix and differentiation matrix of four-dimension and calculates using the consolidation method. Clustering results show that the cluster analysis method is effective to separate the signal from each other. In this paper, signals coupled by high-frequency current sensor can be attributed to three categories, namely, partial discharge signals, noise interference signals and corona discharge interference signals. Further study finds that the waveform, magnitude and rise time of above three signals each have significant differences. Basing on the results of the clustering method, frequency domain analysis of partial discharge signal, noise signal and corona discharge interference shows different spectral distribution, and this could be used to distinguish these signals more effectively.
机译:XLPE电缆在电网中具有大量应用,具有良好的绝缘性能,可靠的电源以及易于制造和安装,但是由绝缘缺陷引起的局部放电将产生严重的后果,例如绝缘击穿。因此,电缆局部放电检测具有重要意义。由于局部放电信号微弱且复杂,因此很容易受到外部背景噪声或电磁干扰的干扰,这主要是由于无线电信号传播,测试现场附近的各种火花放电,放电焊接和高压设备等引起的。 -电压脉冲,由于接触不良而引起的电晕放电,由接地的金属物体引起的感应放电。这些信号是随机的,其不可预测的特性通常会对局部放电检测产生很大的干扰。本文采用高频电流法进行局部放电检测。高频电流传感器耦合到大量干扰信号。从距离矩阵开始进行聚类分析,选择幅度,上升时间,下降时间和频率作为变量,获得四维数据矩阵和微分矩阵,并使用合并方法进行计算。聚类结果表明,聚类分析方法可以有效地将信号彼此分离。本文将高频电流传感器耦合的信号归为三类,即局部放电信号,噪声干扰信号和电晕放电干扰信号。进一步的研究发现,以上三个信号的波形,幅度和上升时间均存在显着差异。根据聚类方法的结果,局部放电信号,噪声信号和电晕放电干扰的频域分析显示出不同的频谱分布,可以用来更有效地区分这些信号。

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