Acoustic partial discharge signal denoising using power spectral subtraction

R. Hussein, K. Shaban, A. El-Hag
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引用次数: 2

Abstract

Measuring partial discharge (PD) phenomena in power transformers is often conducted by acoustic emission (AE) method. However, many interference sources are usually encountered with the captured PD signals which negatively affect the PD detection and classification. Thus, an effective and efficient denoising technique is required to suppress such environmental noises. Most denoising attempts aim to address additive white Gaussian noise, which is considered the main ambient interference source coupling with PD signals through data acquisition process. In this paper, we propose a power spectral subtraction denoising (PSSD) method and examine its denoising performance in the presence of modest and severe noise levels. The simulation results verify that PSSD has superior denoising performance when compared to one of the conventional wavelet shrinkage denoising methods. Four evaluation metrics are utilized to confirm the superiority of PSSD: signal-to-noise ratio, root mean square error, cross-correlation coefficient, and reduction in noise level.
基于功率谱减法的声学局部放电信号去噪
对电力变压器局部放电现象的测量通常采用声发射法。然而,捕获的局部放电信号通常会遇到许多干扰源,这对局部放电的检测和分类产生了不利的影响。因此,需要一种有效的降噪技术来抑制这种环境噪声。大多数降噪尝试旨在解决加性高斯白噪声,该噪声被认为是通过数据采集过程与PD信号耦合的主要环境干扰源。本文提出了一种功率谱减噪(PSSD)方法,并对其在中等和严重噪声水平下的去噪性能进行了研究。仿真结果表明,与传统的小波收缩去噪方法相比,PSSD具有更好的去噪性能。采用信噪比、均方根误差、互相关系数、降噪等4个评价指标来确认PSSD的优越性。
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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