Article ID Journal Published Year Pages File Type
1757462 Journal of Natural Gas Science and Engineering 2015 11 Pages PDF
Abstract

•We use ANN to predict permeability of five distinct oil wells.•We implement correlation-based feature selection to reduce number of features.•Generalization and predictive accuracy of ANN improve for virtually all the wells.•The approach considered results in less processing time and computing resources.•Permeability prediction improves with fewer features without performance compromise.

Accurate prediction of permeability is very important in characterization of hydrocarbon reservoir and successful oil and gas exploration. In this work, generalization performance and predictive capability of artificial neural network (ANN) in prediction of permeability from petrophysical well logs have been improved by a correlation-based feature extraction technique. This technique is unique in that it improves the performance of ANN by employing fewer datasets thereby saving valuable processing time and computing resources. The effect of this technique is investigated using datasets obtained from five distinct wells in a Middle Eastern oil and gas field. It is found that the proposed extraction technique systematically reduces the required features to about half of the original size by selecting the best combination of well logs leading to performance improvement in virtually all the wells considered. The systematic approach to feature selection eliminates trial and error method and significantly reduces the time needed for model development. The result obtained is very encouraging and suggest a way to improve hydrocarbons exploration at reduced cost of production. Furthermore, performance of ANN and other computational intelligence techniques can be improved through this technique.

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Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Earth and Planetary Sciences (General)
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