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Artificial Neural Networks as a Valuable Tool for Well Log Interpretation
Authors:M Khandelwal  T N Singh
Affiliation:1. Department of Mining Engineering , College of Technology and Engineering, Maharana Pratap University of Agriculture and Technology , Udaipur, India;2. Department of Earth Sciences , Indian Institute of Technology Bombay , Powai, Mumbai, India
Abstract:Abstract

Artificial neural networks (ANNs) are rapidly gaining popularity in the area of oil exploration. This article discusses the importance of ANNs to petroleum engineers and geoscientists and its advantages over other conventional methods of computing. ANNs can assist geoscientists in solving some fundamental problems such as formation, permeability prediction, and well data interpretation from geophysical well log responses with a greater degree of confidence comparable to actual well test interpretation.

The main goal of the present article is to use the artificial neural network from a petroleum geoscientist's point of view and encourage geoscientists and researchers to consider it as a valuable alternative tool in the petroleum industry. A three-layer feed-forward back-propagation network has been used to predict neutron log (NPHI) and density log (RHOB) values using gamma ray (CGR), resistivity log (IDPH), and sonic log (DTCO) input parameters. The results are also compared by analysis performed by multivariate regression analysis (MVRA).
Keywords:density log  gamma ray  multivariate regressions analysis  neural network  neutron log  resistivity log  sonic log
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