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Journal of Jilin University (Information Science Edition) ›› 2021, Vol. 39 ›› Issue (3): 237-245.
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LI Jia, MA Haitao, LI Yue
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Abstract: Desert seismic recordings contain lots of complex noise which reduces signal-to-noise ratio. To solve this problem, an adaptive rank convergence denoising algorithm combining VMD ( Variational Mode Decomposition) with MoG-RPCA (Mixture of Gauss-Robust Principal Component Analysis) is proposed. The desert seismic data is firstly decomposed by VMD. All the decomposed modalities are rearranged into a new signal matrix, and then the matrix is subjected to low-rank decomposition by MoG-RPCA. When the error of decomposition satisfies the pre-determined requirement, the efficient low-rank component is extracted. Finally superimpose all the modalities of each channel signal in the low-rank matrix and substract from the original seismic data to achieve denoising. This method avoids choosing the modes of VMD and performs an adaptive rank convergence to the traditional low-rank decomposition. Simulation experiment and actual data processing show that the algorithm can effectively suppress low-frequency noise while maintaining more than 85% amplitude of the effective signal.
Key words: variational mode decomposition ( VMD), mixture of gauss-robust principal component analysis (MoG-RPCA), adaptive rank convergence, desert random noise, seismic exploration
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LI Jia, MA Haitao, LI Yue. Low-Rank Algorithm Based on Adaptive Rank Convergence for Desert Seismic Random Noise Attenuation[J].Journal of Jilin University (Information Science Edition), 2021, 39(3): 237-245.
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