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首页> 外文期刊>Journal of Harbin Institute of Technology >Adaptive de-noising method based on wavelet and adaptive learning algorithm in on-line PD monitoring
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Adaptive de-noising method based on wavelet and adaptive learning algorithm in on-line PD monitoring

机译:基于小波和自适应学习算法的在线局部放电监测自适应降噪方法

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It is an important step in the online monitoring of partial discharge (PD) to extract PD pulses from various background noises. An adaptive de-noising method is introduced for adaptive noise reduction during detection of PD pulses. This method is based on Wavelet Transform (WT), and in the wavelet domain the noises decomposed at the levels are reduced by independent thresholds. Instead of the standard hard thresholding function, a new type of hard thresholding function with continuous derivative is employed by this method. For the selection of thresholds, an unsupervised learning algorithm based on gradient in a mean square error (MSE) is present to search for the optimal threshold for noise reduction, and the optimal threshold is selected when the minimum MSE is obtained. With the simulating signals and on-site experimental data processed by this method, it is shown that the background noises such as narrowband noises can be reduced efficiently. Furthermore, it is proved that in comparison with the conventional wavelet de-noising method the adaptive de-noising method has a better performance in keeping the pulses and is more adaptive when suppressing the background noises of PD signals.
机译:在线监测局部放电(PD)是从各种背景噪声中提取PD脉冲的重要一步。引入了一种自适应降噪方法,用于在检测PD脉冲期间进行自适应降噪。该方法基于小波变换(WT),在小波域中,通过独立的阈值降低了在各个级别分解的噪声。代替标准的硬阈值函数,该方法采用了一种具有连续导数的新型硬阈值函数。为了选择阈值,提出了一种基于均方误差(MSE)中的梯度的无监督学习算法,以搜索用于降噪的最佳阈值,并在获得最小MSE时选择最佳阈值。用该方法处理的仿真信号和现场实验数据表明,可以有效降低背景噪声,如窄带噪声。此外,已经证明,与传统的小波去噪方法相比,自适应去噪方法在保持脉冲方面具有更好的性能,并且在抑制PD信号的背景噪声时更加自适应。

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