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Pattern Recognition of Partial Discharges on Power Cable Systems

机译:电力电缆系统局部放电的模式识别

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Partial discharge measurements are considered to be an important diagnostic/condition monitoring tests on Power Cable System. Various off line and online measurement systems have come up with inductive and capacitive sensors. The high frequency partial discharge signals occur in power cable system due to various defects such as voids/cavity in the power cable insulation, defective termination, defective stress control materials and defective joints. However, the partial discharge pattern differs for each type of defects. Hence to identify the type of defect, proper analysis of pattern is required. The statistical parameters such as mean, skewness, Kurtosis etc. with respect to the phase angle, highest discharge magnitude etc. helps in extracting the feature information of each pattern. PD-fingerprints such as Skewness (Sk) and kurtosis which measures the degree of asymmetry of a distribution & sharpness of a distribution, along with the average value of each half cycle (Mean) are estimated using MATLAB programming for various partial discharge signals of laboratory failed Power Cables and accessories. In this work, an attempt is made to develop some finger prints for various defects on power cable systems using the statistical parameters and PD pattern.
机译:局部放电测量被认为是对电力电缆系统的重要诊断/状态监视测试。各种离线和在线测量系统都配备了电感和电容传感器。由于各种缺陷,例如电力电缆绝缘层中的空隙/空腔,不良的端接,不良的应力控制材料和不良的接头,在电力电缆系统中会出现高频局部放电信号。但是,对于每种类型的缺陷,局部放电模式都不同。因此,为了识别缺陷的类型,需要对图案进行适当的分析。相对于相角,最高放电幅度等的统计参数,例如均值,偏度,峰度等,有助于提取每个图案的特征信息。使用MATLAB编程估算实验室各种局部放电信号的偏度(Sk)和峰度等PD指纹,这些偏度可测量分布的不对称程度和分布的锐度以及每个半周期的平均值(Mean)电源电缆和附件出现故障。在这项工作中,尝试使用统计参数和PD模式为电力电缆系统上的各种缺陷开发一些指纹。

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