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Tytuł artykułu

Random noise attenuation using a structure oriented adaptive singular value decomposition

Wybrane pełne teksty z tego czasopisma
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Singular value decomposition (SVD) is an efficient method to suppress random noise in seismic data. The performance of noise attenuation is typically affected by choosing the rank of the estimated signal using SVD. That the rank is fixed limits noise attenuation especially for a low signal-to-noise ratio data. Therefore, we propose a modified approach to attenuate random noise based on structure-oriented adaptively choosing singular values. In this approach, we first estimate dominant local slopes, predict other traces from a reference trace using the plane-wave prediction and construct a 3D seismic volume which is composed of all predicted traces. Then, we remove noise from a 2D profile whose traces are predicted from different reference traces via adaptive SVD filter (ASVD), which adaptively chooses the rank of estimated signal by the singular value increments. Finally, we stack every 2D denoised profile to a stacking denoised trace and reconstruct the 2D denoised seismic data which are composed of all stacking denoised traces. Synthetic data and field data examples demonstrate that the proposed structure-oriented ASVD approach performs well in random noise suppression for the low SNR seismic data with dipping and hyperbolic events.
Czasopismo
Rocznik
Strony
1091--1106
Opis fizyczny
Bibliogr. 32 poz.
Twórcy
autor
  • College of Information Science and Engineering, China University of Petroleum-Beijing, Beijing, China
autor
  • College of Geophysics, China University of Petroleum-Beijing, Beijing, China
autor
  • Department of Earth and Space Sciences, Southern University of Science and Technology, Shenzhen, China
  • School of Earth and Space Science, University of Science and Technology of China, Hefei, China
autor
  • College of Geophysics, China University of Petroleum-Beijing, Beijing, China
  • College of Geophysics, China University of Petroleum-Beijing, Beijing, China
Bibliografia
  • 1. Beckouche S, Ma J (2014) Simultaneous dictionary learning and denoising for seismic data. Geophysics 79(3):A27–A31
  • 2. Bekara M, Mirko VDB (2007) Local singular value decomposition for signal enhancement of seismic data. Geophysics 72(2):V59–V65
  • 3. Cai HP, He ZH, Huang DJ (2011) Seismic data denoising based on mixed time frequency methods. Appl Geophys 8(4):319–327
  • 4. Canales LL (1984) Random noise reduction. SEG Tech Progr Expand Abstr 3(1):329–329
  • 5. Chen Y, Fomel S (2015) Random noise attenuation using local signal and noise orthogonalization. Geophysics 80(6):WD1–WD9
  • 6. Chen Y, Zhou Y, Chen W, Zu S, Huang W, Zhang D (2017) Empirical low rank approximation for seismic noise attenuation. IEEE Trans Geosci Remote Sens 55(8):4696–4711
  • 7. Fomel S (2007) Shaping regularization in geophysical estimation problems. Geophysics 72(2):R29–R36
  • 8. Fomel S (2002) Applications of plane wave destruction filters. Geophysics 67(10):1946–1960
  • 9. Fomel S, Liu Y (2010) Seislet transform and seislet frame. Geophysics 75(3):V25–V38
  • 10. Freire SLM (1988) Application of singular value decomposition to vertical seismic profiling. Geophysics 53(6):778–785
  • 11. Gan S, Chen Y, Zu S, Qu S, Zhong W (2015) Structure oriented singular value decomposition for random noise attenuation of seismic data. J Geophys Eng 12(2):262–272
  • 12. Huang W, Wang R, Chen Y, Li H, Gan S (2015) Damped multichannel singular spectrum analysis for 3D random noise attenuation. Geophysics 81(4):V261–V270
  • 13. Kreimer N, Sacchi MD (2012) A tensor higher order singular value decomposition for prestack seismic data noise reduction and interpolation. Geophysics 77(3):V113–V122
  • 14. Liu C, Liu Y, Yang B, Wang D, Sun J (2006) A 2D multistage median filter to reduce random seismic noise. Geophysics 71(5):V105–V110
  • 15. Liu C, Chen C, Wang D, Liu Y, Wang S, Zhang L (2015) Seismic dip estimation based on the two dimensional Hilbert transform and its application in random noise attenuation. Appl Geophys 12(1):55–63
  • 16. Liu G, Chen X, Du J, Wu K (2012) Random noise attenuation using f-x regularized nonstationary autoregression. Geophysics 77(2):V61–V69
  • 17. Liu W, Cao S, Jin Z, Wang Z, Chen Y (2018) A novel hydrocarbon detection approach via high-resolution frequency dependent avo inversion based on variational mode decomposition. IEEE Trans Geosci Remote Sens 56(4):2007–2024
  • 18. Liu Y, Liu C (2011) Nonstationary signal and noise separation using adaptive prediction error filter. In: SEG technical program expanded, pp 3601–3606
  • 19. Lu W (2006) Adaptive noise attenuation of seismic images based on singular value decomposition and texture direction detection. J Geophys Eng 3(3):28–34
  • 20. Ma M, Wang S, Yuan S, Gao J, Li S (2018) Multichannel block sparse Bayesian learning reflectivity inversion with lp-norm criterion-based Q estimation. J Appl Geophys 159:434–445
  • 21. Naghizadeh M, Sacchi M (2012) Multicomponent f-x seismic random noise attenuation via vector autoregressive operators. Geophysics 77(2):V91–V99
  • 22. Naghizadeh M, Sacchi M (2013) Multidimensional de-aliased Cadzow reconstruction of seismic records. Geophysics 78(1):A1–A5
  • 23. Oropeza V, Sacchi M (2011) Simultaneous seismic data denoising and reconstruction via multichannel singular spectrum analysis. Geophysics 76(3):V25–V32
  • 24. Shi P, Yuan S, Wang T, Wang Y, Liu T (2018) Fracture identification in a tight sandstone reservoir: a seismic anisotropy and automatic multisensitive attribute fusion framework. IEEE Geosci Remote Sens Lett 15(10):1525–1529
  • 25. Trickett SR (2002) Fx eigenimage noise suppression. SEG technical program expanded abstracts 72th Annual international meeting: 2166–2169
  • 26. Trickett SR, Grimm J, Aleksic V, Mcvee DJ (2003) F-xy eigenimage noise suppression. Geophysics 68(2):751–759
  • 27. Vrabie VD, Mars JI, Lacoume JL (2004) Modified singular value decomposition by means of independent component analysis. Signal Process 84(3):645–652
  • 28. Yang H, Long Y, Lin J, Zhang F, Chen Z (2017) A seismic interpolation and denoising method with curvelet transform matching filter. Acta Geophys 65(5):1029–1042
  • 29. Yuan S, Wang S (2011) A local f-x Cadzow method for noise reduction of seismic data obtained in complex formations. Pet Sci 8(3):269–277
  • 30. Yuan S, Liu J, Wang S, Wang T, Shi P (2018a) Seismic waveform classification and first-break picking using convolution neural networks. IEEE Geosci Remote Sens Lett 15(2):272–276
  • 31. Yuan S, Wang S, Luo C, Wang T (2018b) Inversion-based 3-D seismic denoising for exploring spatial edges and spatio-temporal signal redundancy. IEEE Geosci Remote Sens Lett 15(11):1682–1686
  • 32. Zheng J, Lu J, Jiang T, Liang Z (2017) Microseismic event denoising via adaptive directional vector median filters. Acta Geophys 65(1):47–54
Uwagi
Opracowanie rekordu ze środków MNiSW, umowa Nr 461252 w ramach programu "Społeczna odpowiedzialność nauki" - moduł: Popularyzacja nauki i promocja sportu (2020).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-54bcb3aa-b840-440e-aa82-e58d414d7ea9
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