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The Algorithm of Balanced Orthogonal Multiwavelets and Its Application in Denoising

The Algorithm of Balanced Orthogonal Multiwavelets and Its Application in Denoising
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摘要 In order to extract fault features of a weak signal from the strong noise and maintain signal smoothness, a new method of denoising based on the algorithm of balanced orthogonal multiwavelets is proposed. Multiwavelets have several scaling functions and wavelet functions, and possess excellent properties that a scalar wavelet cannot satisfy simultaneously, and match the different characteristics of signals. Moreover, the balanced orthogonal multiwavelets can avoid the Gibbs phenomena and their processes have the advantages in denoising. Therefore, the denoising based on the algorithm of balanced orthogonal multiwavelets is introduced into the signal process. The algorithm of bal- anced orthogonal multiwavelet and the implementation steps of this denoising are described. The experimental compar- ison of the denoising effect between this algorithm and the traditional multiwavelet algorithm was done. The experi- ments indieate that this method is effective and feasible to extract the fault feature submerged in heavy noise. In order to extract fault features of a weak signal from the strong noise and maintain signal smoothness, a new method of denoising based on the algorithm of balanced orthogonal multiwavelets is proposed. Multiwavelets have several scaling functions and wavelet functions, and possess excellent properties that a scalar wavelet cannot satisfy simultaneously, and match the different characteristics of signals. Moreover, the balanced orthogonal multiwavelets can avoid the Gibbs phenomena and their processes have the advantages in denoising. Therefore, the denoising based on the algorithm of balanced orthogonal multiwavelets is introduced into the signal process. The algorithm of bal- anced orthogonal multiwavelet and the implementation steps of this denoising are described. The experimental compar- ison of the denoising effect between this algorithm and the traditional multiwavelet algorithm was done. The experi- ments indieate that this method is effective and feasible to extract the fault feature submerged in heavy noise.
作者 QIU Ai-zhong
出处 《International Journal of Plant Engineering and Management》 2011年第4期221-224,共4页 国际设备工程与管理(英文版)
基金 supported by Scientific and Technological Foundation of Henan Province under Grant No.112102210128 Science Research Project of Educational Department of Henan Province under Grant No.2011C510005
关键词 balanced orthogonal multiwavelets wavelet algorithm signal denoising extracting signal features fault diagnosis balanced orthogonal multiwavelets wavelet algorithm signal denoising extracting signal features fault diagnosis
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参考文献5

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