Research on Monitoring of Tunnel Cable Insulation Layer Based on Terahertz Wave Clustering Analysis

Zhang Zhonghao, Liu Haiying, Peng Guozheng, L. Jiaxin, Li Sun
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Abstract

Internal defect of cable is seriously endangering the operation of power grid. To detect the defect in time, a THz(terahertz) detection method combined with clustering algorithm was proposed in this paper. To extract feature from the original waves, frequency domain features and PCA were obtained. Further, the correlation of a feature in different sample sets was analyzed through Mann-Whitney U test. According to effect of clustering, features filtered by Mann-Whitney U test show good classification performance. Based on the clustering method of terahertz wave, the inner defective and normal conditions of cable insulation can be classified quickly and accurately.
基于太赫兹波聚类分析的隧道电缆绝缘层监测研究
电缆的内部缺陷严重危害着电网的正常运行。为了及时发现缺陷,本文提出了一种结合聚类算法的太赫兹(THz)检测方法。为了从原始波中提取特征,首先获得频域特征和主成分分析。进一步,通过Mann-Whitney U检验分析特征在不同样本集中的相关性。从聚类效果来看,经Mann-Whitney U检验过滤的特征具有较好的分类性能。基于太赫兹波聚类方法,可以快速准确地对电缆绝缘内部缺陷和正常状态进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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