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The AAPG/Datapages Combined Publications Database
Houston Geological Society Bulletin
Abstract
Abstract: Prediction of Rock Properties Using Well Logs,
Seismic
Attributes
, and Neural Networks




By
Mobil Exploration and Producing
Technical Center, Dallas, Texas
This case study shows the benefit of using multiple seismic
trace
attributes
and the pattern recognition capabilities of neural networks to predict reservoir architecture
and porosity distribution in the Pegasus Field, West Texas,
and net pay and reservoir property distribution in the
Zafiro Field, offshore Equatorial Guinea. The study used
the power of neural networks to integrate geologic, borehole,
and
seismic
data. Illustrated are the improvements
between the new neural network approach and the more
traditional methods of estimating rock properties from
seismic
data, such as
seismic
trace inversion, amplitude mapping,
and AVO studies. Our procedure is straight forward
but does require careful quality control to ensure reliable
predictions from the
seismic
data. Network training, test,
and validation data sets provide calibration of
seismic
attributes
with well log data, optimize the network parameters,
and estimate the performance of the system to predict
hidden representative data. Comprehensive statistical
methods and interpretational/subjective measures ensure
that only
attributes
providing true relationships and a physical
basis are used in the prediction of rock properties from
seismic
attributes
. The result is a 3-D volume of seismically
derived rock properties for the reservoir interval of interest.
In effect, we are transforming the
seismic
trace
attributes
into
seismic
-scale petrophysical logs. The advantage of this
transformation is the additional interwell information this
method provides. The additional reservoir detail allows for
optimum placement of horizontal wells and improved field development.
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