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Structured sparsity assisted online convolution sparse coding and its application on weak signature detection
作者姓名:Huijie MA  Shunming LI  Jiantao LU  Zongzhen ZHANG  Siqi GONG
作者单位:College of Energy&Power Engineering,Nanjing University of Aeronautics and Astronautics,Nanjing 210016,China
基金项目:supported by the National Key Research and Development Program of China(No. 2018YFB2003300);;National Science and Technology Major Project, China (No. 2017-IV-0008-0045);;National Natural Science Foundation of China (No. 51675262);
摘    要:Due to the strong background noise and the acquisition system noise, the useful characteristics are often difficult to be detected. To solve this problem, sparse coding captures a concise representation of the high-level features in the signal using the underlying structure of the signal. Recently, an Online Convolutional Sparse Coding(OCSC) denoising algorithm has been proposed. However, it does not consider the structural characteristics of the signal, the sparsity of each iteration is not eno...

收稿时间:4 August 2020

Structured sparsity assisted online convolution sparse coding and its application on weak signature detection
Huijie MA,Shunming LI,Jiantao LU,Zongzhen ZHANG,Siqi GONG.Structured sparsity assisted online convolution sparse coding and its application on weak signature detection[J].Chinese Journal of Aeronautics,2022,35(1):266-276.
Authors:Huijie MA  Shunming LI  Jiantao LU  Zongzhen ZHANG  Siqi GONG
Institution:College of Energy & Power Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, China
Abstract:Due to the strong background noise and the acquisition system noise,the useful characteristics are often difficult to be detected.To solve this problem,sparse coding captures a con-cise representation of the high-level features in the signal using the underlying structure of the sig-nal.Recently,an Online Convolutional Sparse Coding(OCSC)denoising algorithm has been proposed.However,it does not consider the structural characteristics of the signal,the sparsity of each iteration is not enough.Therefore,a threshold shrinkage algorithm considering neighbor-hood sparsity is proposed,and a training strategy from loose to tight is developed to further improve the denoising performance of the algorithm,called Variable Threshold Neighborhood Online Convolution Sparse Coding(VTNOCSC).By embedding the structural sparse threshold shrinkage operator into the process of solving the sparse coefficient and gradually approaching the optimal noise separation point in the training,the signal denoising performance of the algorithm is greatly improved.VTNOCSC is used to process the actual bearing fault signal,the noise inter-ference is successfully reduced and the interest features are more evident.Compared with other existing methods,VTNOCSC has better denoising performance.
Keywords:Dictionary learning  Online convolutional sparse coding(OCSC)  Signal denoising  Signal processing  Weak signature detection
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