Wavelet De-Noising for PD UHF Signals Based on Adaptive Thresholding by Genetic Algorithm

Jian Li, Changkui Cheng, S. Grzybowski
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引用次数: 1

Abstract

This paper presents an adaptive wavelet thresholding algorithm for de-noising of ultra-high-frequency (UHF) signals of partial discharges (PD). The wavelet de-nosing algorithm is based on an optimum and adaptive shrinkage scheme. A class of shrinkage functions with continuous derivatives and a genetic algorithm are used for the adaptive shrinkage scheme. The genetic algorithm is helpful to obtain global optimum thresholds and to reduce much time wasted by the adaptive searching computation. The de-noising results of PD UHF signals embedded in white noises are presented. The PD UHF signals denoised by the adaptive wavelet thresholding algorithm have smaller distortion in waveform than the signals de-noised by the soft thresholding algorithms.
基于自适应阈值遗传算法的PD - UHF信号小波降噪
提出了一种用于局部放电超高频信号去噪的自适应小波阈值算法。小波去噪算法基于一种最优自适应收缩方案。采用一类具有连续导数的收缩函数和遗传算法求解自适应收缩方案。遗传算法有助于获得全局最优阈值,减少了自适应搜索计算所浪费的时间。给出了嵌入白噪声的PD超高频信号的降噪结果。采用自适应小波阈值算法降噪后的PD超高频信号波形畸变比采用软阈值算法降噪后的信号波形畸变小。
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