Porosity Prediction of Unayzah
Reservoir from Well
Log
Data Using Backpropagation Neural Network
By
Mahbub Hussain1, Aamir Siddiqui1, Abdulazeez Abdulraheem1, Gabor Korvin1
(1) King Fahd University of Petroleum and Minerals, Dhahran, Saudi Arabia
Unayzah reservoir in Saudi Arabia is a Permian, siliciclastic reservoir and it is the source of light sweet crude oil (Arabian Super light) and gas.
This paper reports the findings of application of Backpropagation Neural
Network for the prediction of porosity values of Unayzah reservoir in Haradh
Field using genetic approach. The usage of genetic approach involves the
classification of well
log
data into various lithofacies groups and then
porosity prediction were carried out on a facies-by-facies basis.
Results from the present study showed that Backpropagation neural network provides reasonable prediction accuracy and predicted porosity values are highly correlated with neutron porosity values.