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An Enhanced Hankel Matrix based Singular Value Decomposition Method for Removing Noise from Partial Discharge Signals

机译:一种增强型河口基于奇异值分解方法,用于去除局部放电信号的噪声

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Partial Discharges (PD) measurement has long been used as a test to evaluate insulation condition in electrical equipment. Different types of noise, such as white noise, random noise, and discrete spectral interference couples with the PD signal during on line and/or onsite PD measurements. Because of these interferences PD source separation becomes troublesome process. In this present work, combination of Hankel Matrix based Enhanced Singular Value Decomposition (E-HSVD) is proposed to remove the noise from PD signals. An adaptive spectral kurtosis is employed to select the optimal singular component obtained by applying E-HSVD to the PD signal. The proposed technique is applied on the PD signals using simulated and PD signal measured at online onsite to examine its performance under different noisy environments. The evaluation metrics results confirm that E-HSVD has significant improvements in performance compared to existing state of the art PD denoising techniques.
机译:部分放电(PD)测量长期被用作测量电气设备中的绝缘条件的测试。 不同类型的噪声,例如白噪声,随机噪声和离散光谱干扰在线和/或现场PD测量期间具有PD信号。 由于这些干扰PD源分离变得麻烦的过程。 在本工作中,提出了基于Hankel矩阵的增强奇异值分解(E-HSVD)的组合来消除来自PD信号的噪声。 采用自适应光谱峰度来选择通过将E-HSVD施加到PD信号而获得的最佳奇异组分。 使用在线测量的模拟和PD信号在PD信号上应用所提出的技术,以检查其在不同嘈杂环境下的性能。 评估度量结果证实,与现有技术的PD去噪技术的现有状态相比,E-HSVD对性能的显着改进。

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