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Digital
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7th Middle East Geosciences Conference and Exhibition
Manama, Bahrain
March 27-29, 2006
1 Applied Electrical Engineering, KFUPM, Hail Community Coleege, KFUPM, Hail, Saudi Arabia, phone:
0564203171, [email protected]
2 Computer Engineering Dept, KFUPM, KFYPM, Dhahran, 31261, Saudi Arabia
3 ARAMCO, Dhahran, Saudi Arabia
linear
stepwise regression and neural networks. The input to any statistical method is a series of
attributes extracted from the seismic data. There is, however, a huge number of attributes that can be extracted form the
seismic dataý. Therefore, an efficient subset of this attributes has to be selected before prediction. Exhaustive search of all
attribute combinations is computationally infeasible. As a solution,
linear
stepwise regression has been proposed which is
based on
linear
relationships between attribute combinations and log data. Therefore it is suitable for
linear
regression. For
non
linear
regression such as neural networks an attribute selection method that embodies the nonlinearity between
attribute combinations and log data is desirable. Abductive Networks should in many ways help in this regard: 1. Abductive
Networks can automatically select a statistically representative subset of optimum predictors from the available set of
seismic attributes. 2. Abductive Networks are nonlinear predictors which are proven to outperform
linear
predictors ý. 3.
Unlike various neural network paradigms, Abductive Networks can provide a closed form analytical relationship between the
selected seismic attributes and the modeled parameter; this can help in fully understanding the geographical structure of
the area.
