Coherence Attribute Applications on
Seismic
Data
in Various Guises
Abstract
The iconic coherence attribute is very useful for geologic feature imaging such as faults, deltas, submarine canyons, karst collapse, mass transport complexes, and more. Besides its preconditioning, the interpretation
of discrete stratigraphic features on
seismic
data
is also limited by its bandwidth, where in general the
data
with higher bandwidth yields crisper features than
data
with lower bandwidth. Some form of spectral balancing applied to the
seismic
amplitude
data
can help in achieving such an objective, so that coherence run on spectrally balanced
seismic
data
yields a better definition of the geologic features of interest. The quality of the generated coherence attribute is also dependent in part on the algorithm employed for its computation. In the eigenstructure decomposition procedure for coherence computation, spectral balancing equalizes each contribution to the covariance matrix, and thus yields crisper features on coherence displays. There are other ways to modify the spectrum of the input
data
in addition to simple spectral balancing, including the amplitude-volume technique (AVT), taking the derivative of the input amplitude, spectral bluing, and thin-bed spectral inversion. We compare some of those techniques, and show their added value in
seismic
interpretation
.
We run energy ratio coherence on input seismic
data
, and a number of other versions that we generate in terms of voice components obtained by using continuous wavelet transform method of spectral decomposition, spectral balanced version obtained by using thin-bed reflectivity inversion, and AVT attributes. Our comparison of the equivalent time slice displays from the coherence volumes allows us to infer, (a) coherence on spectrally balanced input
seismic
data
yields better lineament detail, (b) coherence on voice components highlights the discontinuities at different frequencies that show better definition, which can be helpful for their
interpretation
, (c) multispectral coherence displays show crisper definition of lineaments and so are useful, (d) coherence run on the versions of the
data
discussed above after AVT shows superior definition of lineaments and hence we recommend should be used in their
interpretation
.
AAPG Datapages/Search and Discovery Article #90323 ©2018 AAPG Annual Convention and Exhibition, Salt Lake City, Utah, May 20-23, 2018