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Optimization of the End Effect of Hilbert-Huang transform (HAT)
by
Chenhuan Lv Jun ZHAO Chao WU Tiantai GUO Hongjiang CHEN
in
HHT
/ Hilbert
/ 优化
/ 回归神经网络
/ 故障特征信号
/ 机械故障诊断
/ 端点效应
/ 经验模式分解
2017
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Do you wish to request the book?
Optimization of the End Effect of Hilbert-Huang transform (HAT)
by
Chenhuan Lv Jun ZHAO Chao WU Tiantai GUO Hongjiang CHEN
in
HHT
/ Hilbert
/ 优化
/ 回归神经网络
/ 故障特征信号
/ 机械故障诊断
/ 端点效应
/ 经验模式分解
2017
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Optimization of the End Effect of Hilbert-Huang transform (HAT)
Journal Article
Optimization of the End Effect of Hilbert-Huang transform (HAT)
2017
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Overview
In fault diagnosis of rotating machinery, Hil- bert-Huang transform (HHT) is often used to extract the fault characteristic signal and analyze decomposition results in time-frequency domain. However, end effect occurs in HHT, which leads to a series of problems such as modal aliasing and false IMF (Intrinsic Mode Func- tion). To counter such problems in HHT, a new method is put forward to process signal by combining the general- ized regression neural network (GRNN) with the bound- ary local characteristic-scale continuation (BLCC). Firstly, the improved EMD (Empirical Mode Decompo- sition) method is used to inhibit the end effect problem that appeared in conventional EMD. Secondly, the gen- erated IMF components are used in HHT. Simulation and measurement experiment for the cases of time domain, frequency domain and related parameters of Hilbert- Huang spectrum show that the method described here can restrain the end effect compared with the results obtained through mirror continuation, as the absolute percentage of the maximum mean of the beginning end point offset and the terminal point offset are reduced from 30.113% and 27.603% to 0.510% and 6.039% respectively, thus reducing the modal aliasing, and eliminating the false IMF components of HHT. The proposed method caneffectively inhibit end effect, reduce modal aliasing and false IMF components, and show the real structure of signal components accuratelX.
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