Adaptive Damped Rank-Reduction Method for Random Noise Attenuation of Three-Dimensional Seismic Data

被引:0
作者
Yapo A. S. I. Oboué
Wei Chen
Omar M. Saad
Yangkang Chen
机构
[1] Zhejiang University,School of Earth Sciences
[2] Yangtze University,Key Laboratory of Exploration Technology for Oil and Gas Resources of Ministry of Education
[3] Seismology Department,undefined
[4] National Research Institute of Astronomy and Geophysics,undefined
[5] Bureau of Economic Geology,undefined
[6] The University of Texas at Austin,undefined
[7] University Station,undefined
来源
Surveys in Geophysics | 2023年 / 44卷
关键词
Adaptive damped; Rank-reduction; Random noise attenuation; Seismic data;
D O I
暂无
中图分类号
学科分类号
摘要
Rank-reduction methods are effective for separating random noise from the useful seismic signal based on the truncated singular value decomposition (TSVD). However, the results that the TSVD operator provides are still a mixture of noise and signal subspaces. This problem can be solved using the damped rank-reduction method by damping the singular values of noise-contaminated signals. When the seismic data include highly linear or curved events, the rank should be large enough to preserve the details of the useful signal. However, the damped rank-reduction operator becomes less powerful when using a large rank parameter. Hence, the denoised data contain significant remaining noise. More recently, the optimally damped rank-reduction method has been proposed to solve the extra noise problem as the rank value increases. The optimally damped rank-reduction operator works well for a moderately large rank, but becomes ineffective for a very large rank. We introduce an adaptive damped rank-reduction algorithm to attenuate the residual noise for a very large rank parameter. To elaborate on the proposed algorithm, we first construct a gain matrix by only using the input rank parameter, which we introduce directly into the adaptive singular-value weighting formula to make it more stable as the rank parameter becomes too large. Then, we derive a damping operator based on the improved optimal weighting operator to attenuate the residual noise. The proposed method, which can be regarded as an improved version of the optimally damped rank-reduction method, is insensitive to the input parameter. Examples of synthetic and real three-dimensional seismic data show the denoising improvement using the proposed method.
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页码:847 / 875
页数:28
相关论文
共 120 条
[1]  
Bai M(2020)Seismic signal enhancement based on the low-rank methods Geophys Prospect 68 2783-2807
[2]  
Huang G(1987)Discrete radon transform IEEE Trans Acoust Speech Signal Process 35 162-172
[3]  
Wang H(1988)Signal enhancement - a composite property mapping algorithm IEEE Trans Acoust Speech Signal Process 1 49-62
[4]  
Chen Y(2022)Low-rank seismic data reconstruction and denoising by cur matrix decompositions Geophys Prospect 70 362-376
[5]  
Beylkin G(2019)Fully automatic random noise attenuation using empirical wavelet transform J Seismic Explor 28 147-162
[6]  
Cadzow JA(2020)Five-dimensional seismic data reconstruction using the optimally damped rank-reduction method Geophys J Int 222 1824-1845
[7]  
Cavalcante Q(2015)Random noise attenuation using local signal-and-noise orthogonalization Geophysics 80 WD1-WD9
[8]  
Porsani MJ(2016)An open-source matlab code package for improved rank-reduction 3D seismic data denoising and reconstruction Comput Geosci 95 59-66
[9]  
Chen W(2016)Simultaneous denoising and reconstruction of 5-D seismic data via damped rank-reduction method Geophys J Int 206 1695-1717
[10]  
Song H(1995)De-noising by soft-thresholding IEEE Trans Inform Theory 41 613-627