A Novel Wavelet Selection Scheme for Partial Discharge Signal Detection under Low SNR Condition

Jiajia Liu, W. H. Siew, J. Soraghan, E. Morris
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引用次数: 9

Abstract

Over the past two decades, wavelet-based techniques have been widely used to extract partial discharge (PD) signals from noisy signals. To effectively select the correct technique to minimize the effect of noise on PD detection, three aspects are considered: wavelet selection, decomposition scale, and noise or threshold estimation. For wavelet selection, popular techniques, including correlation-based wavelet selection scheme (CBWSS) and energy-based wavelet selection scheme (EBWSS), are applied to select an appropriate wavelet basis function. These two schemes, however, have their limitations. CBWSS is not as effective as expected when the signal to noise ratio (SNR) is very low. EBWSS selects the optimal wavelet that can maximize the energy ratio of the PD signal in approximation coefficients through wavelet decomposition. It is not strictly true for damped oscillating PD signals, particularly when the decomposition scale increases. As such, a novel wavelet selection scheme, wavelet entropy-based wavelet selection scheme (WEBWSS), is proposed to provide an alternative to CBWSS and EBWSS for PD denoising. PD signals are simulated and also obtained through laboratory experiments to demonstrate that this new method has better performance in the removal of noise, particularly when SNR is low.
低信噪比条件下局部放电信号检测的小波选择新方法
在过去的二十年中,基于小波的技术被广泛用于从噪声信号中提取局部放电信号。为了有效地选择正确的技术来减少噪声对PD检测的影响,需要考虑三个方面:小波选择、分解尺度、噪声或阈值估计。在小波选择方面,采用基于相关的小波选择方案(CBWSS)和基于能量的小波选择方案(EBWSS)来选择合适的小波基函数。然而,这两种方案都有其局限性。当信噪比很低时,CBWSS的效果并不理想。EBWSS通过小波分解选择能使PD信号在近似系数中能量比最大化的最优小波。对于阻尼振荡PD信号,特别是当分解尺度增加时,这并不完全正确。为此,提出了一种新的小波选择方案——基于小波熵的小波选择方案(WEBWSS),为PD去噪提供了一种替代CBWSS和EBWSS的方法。对PD信号进行了仿真,并通过实验室实验得到了PD信号。实验结果表明,该方法具有较好的去噪效果,特别是在信噪比较低的情况下。
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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