基于相位同步和异步数据的多源PD识别

D. Evagorou, A. Kyprianou, G. Georghiou, L. Hao, P. Lewin, A. Stavrou
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引用次数: 1

摘要

电缆及其附件的局部放电(PD)测量在高压设备状态监测(CBM)中起着至关重要的作用。作为预测性维护计划的一部分,输电和配电(T&D)环境中的公用事业公司已经实施了CBM监测,旨在减少计划外停机时间,降低维护成本。识别PD的来源,而不仅仅是评估其大小,可以提供额外的信息,可以做出有关绝缘完整性的更有根据的决策。在在线场景中,多个同时活跃的PD源的存在以及干扰的存在使识别过程复杂化。本文采用基于密度的带噪声应用空间聚类(DBSCAN)算法来识别不同来源的pd。在实验室中获得相位同步测量值,并通过峰值检测算法进行预处理以提取单脉冲(相位异步)。在前人的基础上,采用小波包变换和高阶统计量来提取特征。然后通过主成分分析(PCA)对特征进行降维分析,研究表明不同PD源形成单独的聚类。将该方法应用于从塞浦路斯电力局(EAC)网络获取的在线数据,证明了其在PD识别和干扰抑制方面的潜在用途。
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Multisource PD identification based on phase synchronous and asynchronous data
Partial Discharge (PD) measurements in cables and their accessories play a fundamental role in Condition Based Monitoring (CBM) of High Voltage (HV) equipment. CBM monitoring has been enforced by utilities in the transmission and distribution (T&D) environment as part of a predictive maintenance program that aims to result in less unscheduled downtime and lower maintenance cost. Identifying the source of a PD rather than merely assessing its magnitude provides additional information that could enable more educated decisions concerning the integrity of the insulation to be made. In on-line scenarios the presence of multiple PD sources that are simultaneously active as well as the presence of interference, complicates the identification process. In this paper, the Density-Based Spatial Clustering of Applications with Noise (DBSCAN) algorithm has been employed to identify PDs of different sources. Phase synchronous measurements were acquired in the laboratory and pre-processed through a peak detection algorithm to extract the single pulses (phase asynchronous). To extract a feature the Wavelet Packet Transform (WPT) and Higher Order Statistics (HOS) were employed according to previous work by the authors. The feature was then analyzed by the Principal Component Analysis (PCA) for dimensionality reduction and study of different PD sources has been shown to form separate clusters. Application of this method on on-line data acquired from the network of the Electricity Authority of Cyprus (EAC) has demonstrated its potential use in PD identification and interference rejection.
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