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Published as Geophysics, 76, V69-V77, (2011)

Seismic data interpolation beyond aliasing using regularized nonstationary autoregression

Yang Liu% latex2html id marker 1737
\setcounter{footnote}{1}\fnsymbol{footnote}, Sergey Fomel% latex2html id marker 1738
\setcounter{footnote}{2}\fnsymbol{footnote}
% latex2html id marker 1735
\setcounter{footnote}{1}\fnsymbol{footnote}College of Geo-exploration Science and Technology,
Jilin University
No.6 Xi minzhu street,
Changchun, China, 130026
% latex2html id marker 1736
\setcounter{footnote}{2}\fnsymbol{footnote}Bureau of Economic Geology,
John A. and Katherine G. Jackson School of Geosciences
The University of Texas at Austin
University Station, Box X
Austin, TX, USA, 78713-8924


Abstract:

Seismic data are often inadequately or irregularly sampled along spatial axes. Irregular sampling can produce artifacts in seismic imaging results. We present a new approach to interpolate aliased seismic data based on adaptive prediction-error filtering (PEF) and regularized nonstationary autoregression. Instead of cutting data into overlapping windows (patching), a popular method for handling nonstationarity, we obtain smoothly nonstationary PEF coefficients by solving a global regularized least-squares problem. We employ shaping regularization to control the smoothness of adaptive PEFs. Finding the interpolated traces can be treated as another linear least-squares problem, which solves for data values rather than filter coefficients. Compared with existing methods, the advantages of the proposed method include an intuitive selection of regularization parameters and fast iteration convergence. Benchmark synthetic and field data examples show that the proposed technique can successfully reconstruct data with decimated or missing traces.




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2013-07-26