--> Inversion Case Studies From the SCOOP and STACK Areas in the Anadarko Basin
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2019 AAPG Annual Convention and Exhibition:

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Inversion Case Studies From the SCOOP and STACK Areas in the Anadarko Basin

Abstract

The Mississippian section, and in particular the Meramec and the Devonian Woodford continue to be the preferred investment targets in the SCOOP/STACK trend in Oklahoma We showcase here the seismic characterization of these formations Previous HitusingNext Hit multicomponent seismic data in the STACK area and the conventional vertical component seismic data in the SCOOP area, Previous HitusingNext Hit deterministic prestack impedance inversion. The joint impedance inversion carried out over seismic data from the STACK area was used to derive rock-physics parameters (Young’s modulus and Poisson’s ratio), which showed the sweet spots that are distinct spatially, rather than bleeding off at the edges. The added advantage of joint inversion was that the density attribute could also be derived therefrom, which was not possible for the data from the STACK area. In addition to density, the results from prestack joint impedance inversion have been found to be superior to the simultaneous inversion. The equivalent attributes (besides density) derived for the SCOOP area also show promise. With the application of some of the unsupervised Previous HitmachineNext Hit Previous HitlearningNext Hit methods to data from both areas, seismic Previous HitfaciesNext Hit Previous HitclassificationNext Hit was carried out for both the Meramec and Woodford intervals. Specifically, the principal component analysis (PCA), independent component analysis (ICA), kmeans clustering, self-organizing mapping (SOM) and generative topographic mapping (GTM) were applied to a suite of attributes derived from impedance inversion and by other means. These seismic Previous HitfaciesNext Hit were compared with similar Previous HitfaciesNext Hit derived for the intervals of interest from the well-data, as well as other attributes. Within the unsupervised Previous HitmachineNext Hit Previous HitlearningTop methods, we found that ICA has an edge over PCA performance, and SOM and GTM provide additional information of interpretation interest. All these results will be demonstrated in our presentation.