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Wavelet Transform With Histogram-Based Threshold Estimation for Online Partial Discharge Signal Denoising

机译:基于直方图阈值估计的小波变换用于在线局部放电信号降噪

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摘要

Online condition assessment of the power system devices and apparatus is considered vital for robust operation, where partial discharge (PD) detection is employed as a diagnosis tool. PD measurements, however, are corrupted with different types of noises such as white noise, random noise, and discrete spectral interferences. Hence, the denoising of such corrupted PD signals remains a challenging problem in PD signal detection and classification. The challenge lies in removing these noises from the online PD signal measurements effectively, while retaining its discriminant features and characteristics. In this paper, wavelet-based denoising with a new histogram-based threshold function and selection rule is proposed. The proposed threshold estimation technique obtains two different threshold values for each wavelet sub-band and uses a prodigious thresholding function that conserves the original signal energy. Moreover, two signal-to-noise ratio (SNR) estimation techniques are derived to fit with actual PD signals corrupted with real noise. The proposed technique is applied on different acoustic and current measured PD signals to examine its performance under different noisy environments. The simulation results confirm the merits of the proposed denoising technique compared with other existing wavelet-based techniques by measuring four evaluation metrics: 1) SNR; 2) cross-correlation coefficient; 3) mean square error; and 4) reduction in noise level.
机译:电力系统设备和装置的在线状态评估被认为对于稳健运行至关重要,其中局部放电(PD)检测被用作诊断工具。但是,PD测量会因不同类型的噪声(例如白噪声,随机噪声和离散频谱干扰)而受损。因此,这种损坏的PD信号的去噪仍然是PD信号检测和分类中的挑战性问题。挑战在于如何有效地从在线PD信号测量中消除这些噪声,同时保持其可区分的特征和特性。本文提出了一种基于小波的去噪技术,并提出了一种基于直方图的阈值函数和选择规则。提出的阈值估计技术为每个小波子带获得两个不同的阈值,并使用了节省原始信号能量的出色阈值函数。此外,推导了两种信噪比(SNR)估计技术,以适应受实际噪声破坏的实际PD信号。所提出的技术应用于不同的声学和电流测量的PD信号,以检查其在不同噪声环境下的性能。通过测量四个评估指标,仿真结果证实了与其他现有的基于小波的技术相比,所提出的去噪技术的优点。 2)互相关系数; 3)均方误差; 4)降低噪音水平。

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