Feature extraction of anode effect based on digital filter and local mean decomposition

Gaoqi Xiao, Yixin Yin, Jiarui Cui, Jiaqi Wang, Sen Zhang
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Abstract

The fault signal is a non-stationary and nonlinear signal, and because of the complexity of the field environment, the fault signal often has a lot of noise interference. In order to reduce the noise interference to the greatest extent, a feature extraction method based on digital filter and the local mean decomposition is proposed. Firstly, the Fourier transform is used to obtain the dominant frequency of the signals. Then, an IIR low-pass digital filter is designed to achieve the effect of noise reduction. Finally, the de-noised signal is decomposed by local mean decomposition. Every component PF can be represented as the product of the envelope signals and the frequency modulated signals. The component PF1 containing the highest power is selected to conduct energy spectrum analysis, and the fault features are exacted. The results show that the method can effectively extract the fault features, proving the feasibility of the proposed method.
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基于数字滤波和局部均值分解的阳极效应特征提取
故障信号是一种非平稳的非线性信号,由于现场环境的复杂性,故障信号往往存在大量的噪声干扰。为了最大限度地降低噪声干扰,提出了一种基于数字滤波和局部均值分解的特征提取方法。首先,利用傅里叶变换得到信号的主导频率;然后,设计了IIR低通数字滤波器以达到降噪的效果。最后,对降噪后的信号进行局部均值分解。每个分量的PF都可以表示为包络信号与调频信号的乘积。选取功率最高的元件PF1进行能谱分析,提取故障特征。结果表明,该方法能够有效地提取故障特征,证明了该方法的可行性。
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