局部放电信号的表征

Z. Zhong, X. Li, K. W. Thong, J. Zhou
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引用次数: 2

摘要

有效、准确地从大量噪声中确定纯局部放电(PD)信号的挑战仍然存在。在本研究中,使用数字信号处理技术和数据挖掘方法对单个PD脉冲进行滤波、提取和分析。谱频域的形状或分布可以与不同的PD信号相关联。利用K-means聚类对相似度进行分类,探索特征提取。将硬阈值法应用于时域,根据提取的特征识别临界脉冲。设置一个预先确定的阈值,可以发现和分类PD发生故障诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of partial discharge signals
The challenge to effectively and accurately determine pure partial discharge (PD) signals from the large amount of noise still remains. In this study, individual PD pulses were filtered, extracted and analyzed using digital signal processing techniques and data mining methods. The shape or distribution of the spectral frequency domain could be correlated with different PD signals. Feature extraction was explored using K-means clustering to categorize the similarities. A hard threshold method was applied to the time domain in which the critical PD pulses could be identified based on extracted features. A pre-determined threshold value was set and PD occurrences could be found and classified for fault diagnosis.
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