An improved threshold estimation technique for partial discharge signal denoising using Wavelet Transform

B. Vigneshwaran, R. Maheswari, P. Subburaj
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引用次数: 19

Abstract

Recent research have shown that the Wavelet Transform (WT) can potentially be used to extract Partial Discharge (PD) signals from severe noise like White noise, Random noise and Discrete Spectral Interferences (DSI). It is important to define that noise is a significant problem in PD detection. Accordingly, the paper mainly deals with denoising of PD signals, based on improved WT techniques namely Translation Invariant Wavelet Transform (TIWT). The improved WT method is distinct from other traditional method called as Fast Fourier Transform (FFT). The TIWT not only remain the edge of the original signal efficiently but also reduce impulsive noise to some extent. Additionally Translation Invariant (TI) Wavelet Transform denoising is used to suppress Pseudo Gibbs phenomenon. In this paper an attempt has been made to review the methodology of denoising the partial discharge signals and shows that the proposed denoising method results are better when compared to other wavelet-based approaches like FFT, wavelet hard thresholding, wavelet soft thresholding, by evaluating five different parameters like, Signal to noise ratio, Cross correlation coefficient, Pulse amplitude distortion, Mean square error, Reduction in noise level.
基于小波变换的局部放电信号去噪改进阈值估计技术
最近的研究表明,小波变换(WT)可以从白噪声、随机噪声和离散谱干扰(DSI)等严重噪声中提取局部放电(PD)信号。定义噪声是PD检测中的一个重要问题是很重要的。因此,本文主要研究基于改进的小波变换技术——平移不变小波变换(TIWT)的PD信号去噪。改进后的小波变换方法不同于传统的快速傅里叶变换方法(FFT)。TIWT不仅有效地保留了原始信号的边缘,而且在一定程度上降低了脉冲噪声。另外,采用平移不变(TI)小波变换去噪来抑制伪吉布斯现象。本文对局部放电信号的去噪方法进行了综述,并通过对信噪比、互相关系数、脉冲幅度失真、均方误差、噪声降噪等5个参数的评价,与FFT、小波硬阈值、小波软阈值等基于小波的去噪方法进行了比较。
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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