The Prediction of Permeability From Well Logging Data Based on Reservoir Zoning, Using Artificial Neural Networks in One of an Iranian Heterogeneous Oil Reservoir

Abstract The distinct characteristics of Iranian oil reservoirs, such as high pressure, heterogeneity and anisotropy, high thickness, carbonation, huge size, and presence of cracks and various rock types, lead to deficiency of present applications of neural network methods. The authors attempt to improve the proficiency of present methods in one of Iranian heterogeneous oil reservoirs for permeability prediction using the well logging data, by zoning the reservoir on the basis of geology characteristics and sorting the data in correspondence. The obtained results from the well logging data using artificial neural networks are compared with the measured permeability in core analysis experiments. The appropriate compatibility of the results confirms the proposed method.

[1]  Farzam Javadpour,et al.  Relationship of permeability, porosity and depth using an artificial neural network , 2000 .

[2]  Zuleima T. Karpyn,et al.  Estimation of Permeability from Porosity, Specific Surface Area, and Irreducible Water Saturation using an Artificial Neural Network , 2007 .

[3]  A. Timur,et al.  An Investigation Of Permeability, Porosity, & Residual Water Saturation Relationships For Sandstone Reservoirs , 1968 .

[4]  H. I. Bilgesu,et al.  Reservoir Characterization of Upper Devonian Gordon Sandstone, Jacksonburg, Stringtown Oil Field, Northwestern West Virginia , 2002 .

[5]  Shahab D. Mohaghegh,et al.  Virtual-Intelligence Applications in Petroleum Engineering: Part 1—Artificial Neural Networks , 2000 .

[6]  Shahab D. Mohaghegh,et al.  State-Of-The-Art in Permeability Determination From Well Log Data: Part 1- A Comparative Study, Model Development , 1995 .

[7]  F. Lucia,et al.  Petrophysical Parameters Estimated From Visual Descriptions of Carbonate Rocks: A Field Classification of Carbonate Pore Space , 1983 .

[8]  H.P.K. Dharmawardhana,et al.  Statistical Method for the Determination of Zone Boundaries Using Well Log Data , 1985 .

[9]  K. Webber,et al.  Framework for constructing clastic reservoir simulation models , 1990 .

[10]  S. J. Rogers,et al.  Predicting Permeability from Porosity Using Artificial Neural Networks , 1995 .

[11]  Mohaghegh Artificial Neural Network As A Valuable Tool For Petroleum Engineers , 1995 .

[12]  A. B. Bulsari,et al.  Neural Networks for Chemical Engineers , 1995 .

[13]  P. V. Suryanarayana,et al.  An Improved Model to Predict Reservoir Characteristics During Underbalanced Drilling , 2003 .

[14]  V. Kvasnicka,et al.  Neural and Adaptive Systems: Fundamentals Through Simulations , 2001, IEEE Trans. Neural Networks.