Soft computing: tools for intelligent reservoir characterization (IRESC) and optimum well placement (OWP)

Citation
M. Nikravesh et al., Soft computing: tools for intelligent reservoir characterization (IRESC) and optimum well placement (OWP), J PET SCI E, 29(3-4), 2001, pp. 239-262
Citations number
41
Categorie Soggetti
Geological Petroleum & Minig Engineering
Journal title
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING
ISSN journal
09204105 → ACNP
Volume
29
Issue
3-4
Year of publication
2001
Pages
239 - 262
Database
ISI
SICI code
0920-4105(200105)29:3-4<239:SCTFIR>2.0.ZU;2-I
Abstract
An integrated methodology has been developed to identify nonlinear relation ships and mapping between 3-D seismic data and production log data. This me thodology has been applied to a producing field. The method uses convention al techniques such as geostatistical and classical pattern recognition in c onjunction with modern techniques such as soft computing (neuro-computing, fuzzy logic, genetic computing, and probabilistic reasoning). An important goal of our research is to use clustering techniques to recognize the optim al location of a new well based on 3-D seismic data and available productio n-log data. The classification task was accomplished in three ways; (1) k-m ean clustering, (2) fuzzy c-means clustering, and (3) neural network cluste ring to recognize similarity cubes. Relationships between each cluster and production-log data can be recognized around the well bore and the results used to reconstruct and extrapolate production-log data away from the well bore. This advanced technique for analysis and interpretation of 3-D seismi c and log data can be used to predict: (1) mapping between production data and seismic data, (2) reservoir connectivity based on multi-attribute analy sis, (3) pay zone estimation, and (4) optimum well placement. (C) 2001 Publ ished by Elsevier Science B.V.