Feature extraction and classification of partial discharge signal in GIS based on Hilbert transform

Hong Wang, Fan Yang, Yuchen Zhang, Shiying Hou
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引用次数: 0

Abstract

In order to effectively extract the features of partial discharge (PD) signals in GIS, a method of pulse waveform feature extraction based on Hilbert transform was proposed. The PD data of four typical insulation defects were collected by using GIS PD test platform built in the laboratory. The envelope of PD signal was obtained by Hilbert transform, and the statistical characteristic parameters, time domain characteristic parameters and frequency domain characteristic parameters of PD pulse waveform were extracted based on the envelope. Kernel principal component analysis (KPCA) was used to reduce the dimension of PD feature parameter, and random forest classifier was used to classify and identify PD feature parameters after dimensionality reduction. The identification results show that the proposed method can extract the features of PD signals effectively, and the extracted feature vectors can correctly identify PD caused by different insulation defects.
基于Hilbert变换的GIS局部放电信号特征提取与分类
为了有效提取GIS中局部放电信号的特征,提出了一种基于希尔伯特变换的脉冲波形特征提取方法。利用实验室搭建的GIS局部放电测试平台,采集了4种典型绝缘缺陷的局部放电数据。通过Hilbert变换得到PD信号的包络,并基于包络提取PD脉冲波形的统计特征参数、时域特征参数和频域特征参数。采用核主成分分析(KPCA)对PD特征参数进行降维,并采用随机森林分类器对PD特征参数进行降维后的分类识别。识别结果表明,该方法能有效提取局部放电信号的特征,提取的特征向量能正确识别由不同绝缘缺陷引起的局部放电。
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