用小波包变换评价局部放电去噪的分类预处理

D. Evagorou, A. Kyprianou, P. Lewin, A. Stavrou, V. Efthymiou, G. Georghiou
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引用次数: 15

摘要

高压设备局部放电的识别已成为评估被测设备完整性的最有效的状态监测方法之一。局部放电监测方法的在线应用,使测量在测量点不可避免地受到噪声的影响,降低了测量的灵敏度。利用信号处理方法对测量结果进行后处理,不仅抑制了噪声,提高了灵敏度,而且改进了PD的分类。作为一种强大的噪声抑制技术,小波包变换(WPT)已被广泛应用于PD信号的有效噪声提取。这种技术在对具有瞬态特征的信号去噪时特别有用。它将信号扩展成不同的基,并根据代价函数自适应地选择基,将信号转换成一组小波系数。代价函数的选择对信号的紧凑表示有重要影响。本文首先对小波包的理论进行了简要介绍,并通过利用在实验室实验环境中采集的数据对四种放电类型进行实验,研究了小波包的各种参数,如小波函数、阈值类型和要使用的代价函数的去噪性能;即空气中的电晕放电、油中的内部放电、油中的浮动放电和空气中的表面放电。对Symmlet小波和Daubechies小波进行了比较,两者都有8个消失矩,对硬阈值规则和软阈值规则进行了比较,并比较了三种代价函数对最佳基展开的适用性。使用一些预定义的标准来评估它们的去噪性能,发现Symmlet 8优于Daubechies 8小波,硬阈值规则优于软阈值规则,香农熵代价函数优于对数能量和范数能量代价函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Partial Discharge Denoising using the Wavelet Packets Transform as a Preprocessing Step for Classification
The identification of partial discharges in high voltage equipment has emerged as one of the most effective condition monitoring methods for assessing the integrity of the equipment under test. The fact that the application of PD monitoring methods is being applied online makes the measurements suffer from noise, inevitable at the measurement point, and reduces the sensitivity of the measurements. Signal processing methods to post process the measurements have been utilised, resulting not only in rejection of the noise and improvement of the sensitivity, but also in improved classification of the PD. A powerful noise rejection technique, the wavelet packets transform (WPT) has been extensively employed for the effective extraction of PD signals from noise. This technique is particularly useful in denoising signals which have transient characteristics. It expands the signal into different bases that are chosen adaptively according to a cost function, transforming the signal into a set of wavelet coefficients. The choice of a cost function has a significant effect on the compact representation of the signal. In this paper after the theory of wavelet packets is first briefly presented, and the denoising performance of the various wavelet packets parameters, such as the wavelet function, the thresholding type, and the cost function to be used is studied through the use of data acquired in a laboratory experimental environment for four types of discharges; namely the corona discharge in air, the internal discharge in oil, the floating discharge in oil and the surface discharge in air. The Symmlet wavelet has been compared with the Daubechies wavelet, both with 8 vanishing moments, the hard thresholding rule has been compared with the soft thresholding rule, and three cost functions have been compared as to their suitability for best basis expansion. Using some predefined criteria to assess their denoising performance the Symmlet 8 has been found to outperform the Daubechies 8 wavelet, the hard thresholding rule to yield better performance than the soft thresholding rule and the Shannon entropy cost function to perform better that the log energy and the norm energy cost functions.
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