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The AAPG/Datapages Combined Publications Database

Journal of Petroleum Geology

Abstract

Journal of Petroleum Geology, Vol.18, No.2, pp. 191-206, 1995

©Copyright 2000 Scientific Press, Ltd.

A CRITICAL COMPARISON OF NEURAL NETWORKS AND DISCRIMINANT Previous HitANALYSISNext Hit IN Previous HitLITHOFACIESNext Hit, POROSITY AND PERMEABILITY PREDICTIONS

P. M. Wong*, F. X. Jian*, and I. J. Taggart**

* Centre for Petroleum Engineering, The University of New South Wales, NSW 2052 Australia.

** Current Address: West Australian Petroleum Pty. Ltd. GPO Box 51580 WA 6001 Perth Australia.


Abstract

The application of a genetic reservoir characterisation concept to the calculation of petrophysical properties requires the prediction of Previous HitlithofaciesNext Hit followed by the assignment of petrophysical properties according to the specific Previous HitlithofaciesNext Hit predicted. Common classification methods which fulfil this task include discriminant Previous HitanalysisNext Hit and back-propagation neural networks. While discriminant Previous HitanalysisNext Hit is a well-established statistical classification method back-propagation neural networks are relatively new and their performance in predicting Previous HitlithofaciesNext Hit porosity and permeability when compared to discriminant Previous HitanalysisTop has not been widely studied. This work compares the performance of these two methods in prediction of reservoir properties by considering log and core data from a shaly glauconitic reservoir.

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