DocumentCode :
3715273
Title :
ANN-based prediction of cementation factor in carbonate reservoir
Author :
Fadhil Sarhan Kadhim;Ariffin Samsuri;Yousif Al-Dunainawi
Author_Institution :
Department of Petroleum Engineering, Faculty of Petroleum and Renewable Energy, Universiti Teknologi, Malaysia
fYear :
2015
Firstpage :
681
Lastpage :
686
Abstract :
Since carbonate reservoirs are a heterogeneous in nature, therefore the behaviour of petrophysical properties of these reservoirs is a highly nonlinear. There is no close conventional statistical model can describe the behaviour of the relation between cementation factor and rock properties. Artificial Neural Network technique is used in many applications to predict variable that usually cannot be measured in linear modelling. Depending on well logs data, the Interactive Petrophysics software had been used to calculate the petrophysical properties of studied oilfield. In this study, the data sets used for training and testing neural network are provided from well number three of Nasiriya oilfield in the south of Iraq. The neural network model was trained using two different training algorithms; Gradient Descent with Momentum and Levenberg - Marquardt. Porosity, permeability and resistivity formation factor relationships to cementation factor are proposed using artificial neural network model. An efficient performance of excellent prediction of cementation factor has been obtained with less than (1*10-4) mean square error (MSE).
Keywords :
"Permeability","Artificial neural networks","Mathematical model","Reservoirs","Conductivity","Neutrons","Training"
Publisher :
ieee
Conference_Titel :
SAI Intelligent Systems Conference (IntelliSys), 2015
Type :
conf
DOI :
10.1109/IntelliSys.2015.7361214
Filename :
7361214
Link To Document :
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