变分模态分解,混合高斯鲁棒主成分分析,自适应秩收敛,沙漠随机噪声,地震勘探," /> 变分模态分解,混合高斯鲁棒主成分分析,自适应秩收敛,沙漠随机噪声,地震勘探,"/> 自适应秩收敛低秩算法压制沙漠地震随机噪声

吉林大学学报(信息科学版) ›› 2021, Vol. 39 ›› Issue (3): 237-245.

• •    下一篇

自适应秩收敛低秩算法压制沙漠地震随机噪声

李 佳, 马海涛, 李 月   

  1. 吉林大学 通信工程学院, 长春 130012
  • 收稿日期:2020-11-07 出版日期:2021-05-24 发布日期:2021-05-24
  • 通讯作者: 李月(1958— ),女,长春人,吉林大学教授,博士生导师,主要从事地震信号处理研究,(Tel)86-15143006756(E-mail)liyue@jlu.edu.cn
  • 作者简介:李佳(1995— ),女,长春人,吉林大学硕士研究生,主要从事地震信号处理研究,(Tel)86-13504482846(E-mail)lijia_jagger@163.com
  • 基金资助:
    国家自然科学基金资助项目(41730422)

Low-Rank Algorithm Based on Adaptive Rank Convergence for Desert Seismic Random Noise Attenuation

LI Jia, MA Haitao, LI Yue   

  1. College of Communication Engineering, Jilin University, Changchun 130012, China
  • Received:2020-11-07 Online:2021-05-24 Published:2021-05-24

摘要:  针对沙漠地震记录中包含大量复杂噪声降低信噪比的问题, 提出一种将变分模态分解(VMD: Variational Mode Decomposition) 与混合高斯鲁棒主成分分析 ( MoG-RPCA: Mixture of Gauss-Robust Principal Component Analysis)相结合的自适应秩收敛去噪算法。 首先利用 VMD 对含噪记录进行分解, 将分解得到所有模态重排成 一个新的信号矩阵, 并对其进行 MoG-RPCA 低秩分解, 当分解误差满足预设要求时提取有效低秩分量, 最后将 低秩矩阵中每一道信号的所有模态叠加并与含噪记录作差得到最终去噪结果。 该方法既规避了 VMD 模态取舍 问题, 同时对传统低秩分解进行自适应秩收敛, 从而无需多次调整秩数大小。 模拟实验和实际数据处理表明, 该算法可以有效压制低频噪声, 对有效信号幅度保持均能到达 85% 以上。

关键词: font-family:FZSSK--GBK1-0, color:#000000, 变分模态分解">变分模态分解font-family:E-BZ, color:#000000, ')">">, font-family:FZSSK--GBK1-0, color:#000000, 混合高斯鲁棒主成分分析">混合高斯鲁棒主成分分析font-family:E-BZ, color:#000000, ')">">, font-family:FZSSK--GBK1-0, color:#000000, 自适应秩收敛">自适应秩收敛font-family:E-BZ, color:#000000, ')">">, font-family:FZSSK--GBK1-0, color:#000000, 沙漠随机噪声">沙漠随机噪声font-family:E-BZ, color:#000000, ')">">, font-family:FZSSK--GBK1-0, color:#000000, 地震勘探">地震勘探font-family:E-BZ, color:#000000, ')">">

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

中图分类号: 

  • TN991. 7