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Sub-basalt imaging: modeling and demultiple

Seismic imaging of sub-basalt sedimentary layers is difficult due to high impedance
of the basalt layer, the roughness of the top and bottom of the basalt layer and sometimes
the heterogeneities within the basalt layer. In this thesis we identify specific problems
within the modern imaging technology which limit sub-basalt imaging. The basic
framework for the identification of this limitation is that we are able to group most basalt
layers into the following four categories:
A basalt layer having smooth top and bottom surfaces.
A basalt layer having rough top and bottom surfaces.
Small-scale heterogeneities within the basalt layer.
Intra-basalt velocity variation due to different basalt flows.
All the above models of basalt layers obviously have high impedance with respect to
the surrounding sedimentary layers. These four models encapsulate all the possible
heterogeneities of basalt layers seen in areas like the Voring and More basins off mid-
Norway, basins in the Faroes, W. Greenland, Angola and Brazil margins, and the
Deccan Traps of India. In this work, problems in seismic processing and imaging specific to these models
have been presented. For instance, we have found that the application of the multiple
attenuation technique, which first predicts the multiples and then subtracts them from the
data, using least-squares criteria, can be effective for all the models except for the model,
which has intra-bedded layers within the basalt. The failure in the second case is due to
the destructive interference of multiple scattering from the intra-bedded layers within the
basalt and the multiples located below the primary associated with the top of the basalt
layer. This interference degrades the signal-to-noise (S/N) ratio of the multiples
contained in the data, whereas the predicted multiples, which are constructed from the
reflectors above the basalt, have a much higher signal-to-noise ratio. Our
recommendation is to subtract the predicted multiples from the data using either leastabsolute-
value criteria or any other higher-order-statistics-based criteria.

Identiferoai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/3315
Date12 April 2006
CreatorsSingh, Shantanu Kumar
ContributorsIkelle, Luc Thomas
PublisherTexas A&M University
Source SetsTexas A and M University
Languageen_US
Detected LanguageEnglish
TypeBook, Thesis, Electronic Thesis, text
Format5627149 bytes, electronic, application/pdf, born digital

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