Mitiche Imene, Morison Gordon, Nesbitt Alan, Stewart Brian G, Boreham Philip
Department of Engineering, Glasgow Caledonian University, 70 Cowcaddens Rd, Glasgow G4 0BA, UK.
Institute of Energy and Environment, University of Strathclyde, 204 George St, Glasgow G1 1XW, UK.
Entropy (Basel). 2018 Jul 25;20(8):549. doi: 10.3390/e20080549.
This work exploits four entropy measures known as Sample, Permutation, Weighted Permutation, and Dispersion Entropy to extract relevant information from Electromagnetic Interference (EMI) discharge signals that are useful in fault diagnosis of High-Voltage (HV) equipment. Multi-class classification algorithms are used to classify or distinguish between various discharge sources such as Partial Discharges (PD), Exciter, Arcing, micro Sparking and Random Noise. The signals were measured and recorded on different sites followed by EMI expert's data analysis in order to identify and label the discharge source type contained within the signal. The classification was performed both within each site and across all sites. The system performs well for both cases with extremely high classification accuracy within site. This work demonstrates the ability to extract relevant entropy-based features from EMI discharge sources from time-resolved signals requiring minimal computation making the system ideal for a potential application to online condition monitoring based on EMI.
这项工作利用了四种熵度量方法,即样本熵、排列熵、加权排列熵和离散熵,从电磁干扰(EMI)放电信号中提取相关信息,这些信息在高压(HV)设备的故障诊断中很有用。多类分类算法用于对各种放电源进行分类或区分,如局部放电(PD)、励磁机、电弧、微火花和随机噪声。在不同地点对信号进行测量和记录,随后由EMI专家进行数据分析,以识别和标记信号中包含的放电源类型。分类在每个地点内部以及所有地点之间进行。该系统在这两种情况下都表现良好,在地点内部具有极高的分类准确率。这项工作展示了从时间分辨信号中提取基于熵的相关特征的能力,所需计算量极小,使该系统非常适合基于EMI的在线状态监测的潜在应用。