DocumentCode
987849
Title
An improved technique in porosity prediction: a neural network approach
Author
Wong, Patrick M. ; Gedeon, Tamás D. ; Taggart, Ian J.
Author_Institution
Petroconsultants Australasia Pty. Ltd., St. Leonards, NSW, Australia
Volume
33
Issue
4
fYear
1995
fDate
7/1/1995 12:00:00 AM
Firstpage
971
Lastpage
980
Abstract
Genetic reservoir characterization is important in developing, for a given petroleum reservoir, an improved understanding of the total amount and fluid flow properties of hydrocarbon reserves. Application of genetic concepts involves the classification of well log data into different lithofacies groups, followed by a facies-by-facies description of rock properties such as porosity and permeability. This work contrasts the genetic and nongenetic approaches in predicting porosity values of an oil well using backpropagation neural network methods. The performance of both methods are critically evaluated. A systematic technique to optimise the network configuration using weight visualization curves is proposed, thereby enabling the amount of training time to be significantly reduced. In the example problem, the genetic approach provides superior porosity estimates to that based on a nongenetic approach
Keywords
backpropagation; feedforward neural nets; genetic algorithms; geophysical prospecting; geophysical signal processing; geophysical techniques; geophysics computing; petroleum industry; porosity; backpropagation; classification; facies-by-facies description; feedforward neural net; fluid flow properties; genetic algorithm; genetic reservoir characterization; geology; geophysical measurement technique; geophysics computing; hydrocarbon reserve; lithofacies group; neural network; oil reservoir; oil well u; permeability; petroleum; porosity prediction; prospecting; weight visualization curv; well log data; well logging; Australia; Backpropagation; Fluid flow; Genetics; Geology; Hydrocarbon reservoirs; Intelligent networks; Neural networks; Permeability; Petroleum;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/36.406683
Filename
406683
Link To Document