Comparison of Algorithms for Clustering of Partial Discharge Signals under DC Voltage

B. Hochbrückner, M. Spiertz, M. Zink, A. Küchler, K. Backhaus
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引用次数: 3

Abstract

Under HVDC voltage application, the analysis of partial discharges shows significant shortcomings compared to measurements under AC voltage application. As due to the missing phase-angle information of the test voltage at DC, a clear differentiation of noise and partial discharge signals, as well as the differentiation of several partial discharge sources, is still a challenging task. Therefore, an approach for signal detection and clustering based on intra- and interclass correlation combined with histogram-thresholding was developed and tested by means of measured partial discharge signals. This clustering algorithm differentiates acquired signals automatically into different signal groups in order to allow further and separate investigation.As an alternative method, a k-medoids clustering as a well-known unsupervised learning technique, was tested on the measured signals. This method provides a fast and reliable performance as it is deterministic. This contribution shows the feasibility of the k-medoids algorithm applied on the signals of a partial discharge test under DC voltage application. A comparison of the histogram-thresholding clustering and the k-medoids algorithm points out the pros and cons and demonstrates which kind of clustering algorithm is the more appropriate solution. The results of this investigation can be considered for the development of a fully automated and unsupervised measurement system for partial discharge analysis under DC voltage.
直流电压下局部放电信号聚类算法比较
在高压直流电压下,与交流电压下的测量相比,局部放电的分析显示出明显的缺点。由于直流测试电压的相角信息缺失,噪声和局部放电信号的清晰区分,以及几种局部放电源的区分仍然是一项具有挑战性的任务。因此,本文提出了一种基于类内和类间相关性结合直方图阈值的信号检测和聚类方法,并利用实测的局部放电信号进行了测试。该聚类算法将采集到的信号自动划分为不同的信号组,便于进一步的独立研究。作为一种替代方法,k-介质聚类作为一种众所周知的无监督学习技术,在测量信号上进行了测试。该方法具有确定性,性能快速可靠。这一贡献表明了k-介质算法应用于直流电压下局部放电试验信号的可行性。通过对直方图阈值聚类和k- medioids算法的比较,指出了两者的优缺点,并论证了哪种聚类算法是更合适的解决方案。该研究结果可用于开发直流电压下局部放电分析的全自动无监督测量系统。
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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