The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation

The cementation factor has specific effects on petrophysical properties in porous media. The accurate determination of this factor gives reliable saturation results and consequently hydrocarbon reserve calculations. Nasiriya oil field is the studied field, which is one of the giant oil fields in the...

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Main Authors: Kadhim, F. S., Samsuri, A., Idris, A. K., Al-Dunainawi, Y.
Format: Article
Published: Inderscience Enterprises Ltd. 2017
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Online Access:http://eprints.utm.my/id/eprint/81137/
http://dx.doi.org/10.1504/IJOGCT.2017.087860
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spelling my.utm.811372019-07-24T03:34:43Z http://eprints.utm.my/id/eprint/81137/ The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation Kadhim, F. S. Samsuri, A. Idris, A. K. Al-Dunainawi, Y. TP Chemical technology The cementation factor has specific effects on petrophysical properties in porous media. The accurate determination of this factor gives reliable saturation results and consequently hydrocarbon reserve calculations. Nasiriya oil field is the studied field, which is one of the giant oil fields in the south of Iraq. Five wells from NS-1 to NS-5 were studied wells. The study was made across Yamamma carbonate formation with depth interval from 3,156 m to 3,416 m. Environmental corrections had been made as per SLB charts 2005. Permeability, porosity, resistivity formation factor and cementation factor had been calculated using interactive petrophysical software. In this study, porosity, permeability and resistivity formation factor relationships to cementation factor were proposed using the artificial neural network model. This methodology provided very efficient performance and excellent prediction of cementation factor value with less than 10-4 mean square error (MSE). The results of this model showed that the cementation factor values ranged between 1.95 and 2.13. Inderscience Enterprises Ltd. 2017 Article PeerReviewed Kadhim, F. S. and Samsuri, A. and Idris, A. K. and Al-Dunainawi, Y. (2017) The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation. International Journal of Oil, Gas and Coal Technology, 16 (4). pp. 363-376. ISSN 1753-3317 http://dx.doi.org/10.1504/IJOGCT.2017.087860 DOI:10.1504/IJOGCT.2017.087860
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TP Chemical technology
spellingShingle TP Chemical technology
Kadhim, F. S.
Samsuri, A.
Idris, A. K.
Al-Dunainawi, Y.
The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
description The cementation factor has specific effects on petrophysical properties in porous media. The accurate determination of this factor gives reliable saturation results and consequently hydrocarbon reserve calculations. Nasiriya oil field is the studied field, which is one of the giant oil fields in the south of Iraq. Five wells from NS-1 to NS-5 were studied wells. The study was made across Yamamma carbonate formation with depth interval from 3,156 m to 3,416 m. Environmental corrections had been made as per SLB charts 2005. Permeability, porosity, resistivity formation factor and cementation factor had been calculated using interactive petrophysical software. In this study, porosity, permeability and resistivity formation factor relationships to cementation factor were proposed using the artificial neural network model. This methodology provided very efficient performance and excellent prediction of cementation factor value with less than 10-4 mean square error (MSE). The results of this model showed that the cementation factor values ranged between 1.95 and 2.13.
format Article
author Kadhim, F. S.
Samsuri, A.
Idris, A. K.
Al-Dunainawi, Y.
author_facet Kadhim, F. S.
Samsuri, A.
Idris, A. K.
Al-Dunainawi, Y.
author_sort Kadhim, F. S.
title The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
title_short The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
title_full The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
title_fullStr The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
title_full_unstemmed The use of artificial neural network to predict correlation of cementation factor to petrophysical properties in Yamamma formation
title_sort use of artificial neural network to predict correlation of cementation factor to petrophysical properties in yamamma formation
publisher Inderscience Enterprises Ltd.
publishDate 2017
url http://eprints.utm.my/id/eprint/81137/
http://dx.doi.org/10.1504/IJOGCT.2017.087860
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score 13.211869