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Signal Denoise Method Based on the Higher Order Cumulant and Local Tangent Space Mean Reconstruction

Authors :
Guang Bin Wang
Xue Jun Li
Ke Wang
Source :
Advanced Engineering Forum. :188-192
Publication Year :
2011
Publisher :
Trans Tech Publications, Ltd., 2011.

Abstract

In signal denoise method to nonlinear time series based on principle manifold learning, reduction target dimension is chosen at random, which cause low efficiency. Local low dimensional manifold is obtained by the eigenvalue decomposition to the covariance matrix, but covariance belongs to the second order statistics and cannot reflect the nonlinear essential structure of signal, these reduce denoise efficiency and effect. In order to solve these problem, a new denoise algorithm based on the higher order cumulant and local tangent space mean reconstruction is proposed in this reserch. First, the signal's intrinsic dimension is obtained as dimension of reduction targets by maximum likelihood estimation. And then making use of restraining character to colored noise of high order cumulan,covariance matrix is constructed by high order cumulant function instead of second order moment function. The data outside intrinsic dimension space will be regarded as noise signal to be eliminated. Finanly the process of global array by affine transformation will be replaced by mean reconstruction,the data after denoise may be obtained in the inverse process of the phase space reconstruction. The effectiveness of the algorithm is verified through the denoise experiment in fan vibration signal with noise.

Details

ISSN :
2234991X
Database :
OpenAIRE
Journal :
Advanced Engineering Forum
Accession number :
edsair.doi...........7a566d81030687723523e4dc40157c89
Full Text :
https://doi.org/10.4028/www.scientific.net/aef.2-3.188