1995
DOI: 10.2118/28237-pa
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Design and Development of An Artificial Neural Network for Estimation of Formation Permeability

Abstract: Permeability is one of the most important characteristics of hydrocarbon bearing formations. An accurate knowledge of permeability gives petroleum engineers a tool for efficiently managing the production process of a field. It is also one of the most important pieces of information in the design and management of enhanced recovery operations. Formation permeability is often measured in the laboratory from cores or evaluated from well test data. Core analysis and well test data, however, are only available from… Show more

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Cited by 87 publications
(52 citation statements)
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“…Several authors have been able to estimate permeability measurements using computational methods and well-logs such as Gamma Ray (GR), Neutron Porosity (NPHI) or Bulk Density (RHOB) (see [10][11][12][13]), while others have used NMR 2 logs for that same purpose (see [14,15]). …”
Section: Fluid Permeability and Well Characterizationmentioning
confidence: 99%
“…Several authors have been able to estimate permeability measurements using computational methods and well-logs such as Gamma Ray (GR), Neutron Porosity (NPHI) or Bulk Density (RHOB) (see [10][11][12][13]), while others have used NMR 2 logs for that same purpose (see [14,15]). …”
Section: Fluid Permeability and Well Characterizationmentioning
confidence: 99%
“…The resulting techniques are being successfully applied in a variety of everyday technical, business, industrial, and medical applications (Sivanandam et al, 2006). Some applications in the O&G industry includes an application to predict drill-bit life based on tooth and bearing failure (Bilgesu et al, 1998), an application for drill-bit selection of drilling bits (Bilgesu et al, 2000), an application for estimating initial water saturation Goda et al, 2005, an application to predict differential pipe sticking problems (Miri et al, 2007), and an application to estimate formation permeability (Mohaghegh et al, 1994).…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…In this study, eight seismic attributes were extracted from the synthetic seismic sections using the EarthPak software of Kingdom Suite: amplitude, average energy, envelope, frequency, Hilbert transform, phase, paraphrase, and peak/through ratio 21, 3 5 .…”
Section: Seismic Sections: Seismic Attributesmentioning
confidence: 99%
“…It should not surprise us that using intelligent systems in reservoir characterization studies has become a widely-used method in the petroleum engineering literature. Some previous intelligent reservoir characterization applications include, but are not limited to, synthetic log generation 2,3,4 , permeability estimation from logs 5,6 , and predicting bulk volume of oil 7 .…”
Section: Introductionmentioning
confidence: 99%