شماره ركورد كنفرانس :
5048
عنوان مقاله :
Unsupervised Fuzzy Logic and Neural Network, Valuable Tools for Interpretation of Well Logs
Author/Authors :
Reza ،Asadullahpour Faculty of Petroleum Engineering - Petroleum University of Technology، Ahvaz , Saeed Zare ،Zadeh Faculty of Petroleum Engineering - Petroleum University of Technology، Ahvaz , Bahram ،Habibnia Faculty of Petroleum Engineering - Petroleum University of Technology، Ahvaz
كليدواژه :
log data , lithology , neural network , fuzzy logic , clusters
عنوان كنفرانس :
ششمين كنگره بين المللي مهندسي شيمي
چكيده لاتين :
Petroleum engineers have always been pioneers in utilizing novel and high-tech tools. Artificial neural network and
fuzzy logic are among those paradigms which have been rapidly gaining popularity in petroleum modeling and
calculations. In this paper, we propose a clustering-based method for predicting shale intervals by means of neural
network and fuzzy logic, including two successive clustering steps. Finding shale intervals, if precise, can help a lot in
analysis of well logs, formation damage, zonation, layering and so on. Supervised and unsupervised clustering methods
are tried on log data gathered from Marun oil field (Iran). Eventually, the predictions of two methods are compared and
a very high precision and correspondence with real shale intervals is recorded. Previous attempts on this subject
included mostly supervised predictions (core data is necessary); however, in the present work we apply an unsupervised
clustering procedure (with no need for core or any data other than raw well logs) and compare its results to the
supervised predictions and real shale intervals. Similar methods for prediction of other Lithology types are then
suggested.