Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms

Abstract In this paper, an integrated procedure was adopted to obtain accurate lithofacies classification to be incorporated with well log interpretations for a precise core permeability modeling. Probabilistic neural networks (PNNs) were employed to model lithofacies sequences as a function of well...

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Main Author: Watheq J. Al-Mudhafar
Format: Article
Language:English
Published: SpringerOpen 2017-06-01
Series:Journal of Petroleum Exploration and Production Technology
Subjects:
Online Access:http://link.springer.com/article/10.1007/s13202-017-0360-0
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spelling doaj-0ccea64f839c463d8a7e7396edec55cb2020-11-24T21:22:13ZengSpringerOpenJournal of Petroleum Exploration and Production Technology2190-05582190-05662017-06-01741023103310.1007/s13202-017-0360-0Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithmsWatheq J. Al-Mudhafar0Louisiana State UniversityAbstract In this paper, an integrated procedure was adopted to obtain accurate lithofacies classification to be incorporated with well log interpretations for a precise core permeability modeling. Probabilistic neural networks (PNNs) were employed to model lithofacies sequences as a function of well logging data in order to predict discrete lithofacies distribution at missing intervals. Then, the generalized boosted regression model (GBM) was used as to build a nonlinear relationship between core permeability, well logging data, and lithofacies. The well log interpretations that were considered for lithofacies classification and permeability modeling are neutron porosity, shale volume, and water saturation as a function of depth; however, the measured discrete lithofacies types are sand, shaly sand, and shale. Accurate lithofacies classification was achieved by the PNN as the total percent correct of the predicted discrete lithofacies was 95.81%. In GBM results, root-mean-square prediction error and adjusted R-square have incredible positive values, as there was an excellent matching between the measured and predicted core permeability. Additionally, the GBM model led to overcome the multicollinearity that was available between one pair of the predictors. The efficiency of boosted regression was demonstrated by the prediction matching of core permeability in comparison with the conventional multiple linear regression (MLR). GBM led to much more accurate permeability prediction than the MLR.http://link.springer.com/article/10.1007/s13202-017-0360-0Lithofacies classificationPermeability modelingProbabilistic neural networksBoosted regressionWell log interpretations
collection DOAJ
language English
format Article
sources DOAJ
author Watheq J. Al-Mudhafar
spellingShingle Watheq J. Al-Mudhafar
Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
Journal of Petroleum Exploration and Production Technology
Lithofacies classification
Permeability modeling
Probabilistic neural networks
Boosted regression
Well log interpretations
author_facet Watheq J. Al-Mudhafar
author_sort Watheq J. Al-Mudhafar
title Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
title_short Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
title_full Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
title_fullStr Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
title_full_unstemmed Integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
title_sort integrating well log interpretations for lithofacies classification and permeability modeling through advanced machine learning algorithms
publisher SpringerOpen
series Journal of Petroleum Exploration and Production Technology
issn 2190-0558
2190-0566
publishDate 2017-06-01
description Abstract In this paper, an integrated procedure was adopted to obtain accurate lithofacies classification to be incorporated with well log interpretations for a precise core permeability modeling. Probabilistic neural networks (PNNs) were employed to model lithofacies sequences as a function of well logging data in order to predict discrete lithofacies distribution at missing intervals. Then, the generalized boosted regression model (GBM) was used as to build a nonlinear relationship between core permeability, well logging data, and lithofacies. The well log interpretations that were considered for lithofacies classification and permeability modeling are neutron porosity, shale volume, and water saturation as a function of depth; however, the measured discrete lithofacies types are sand, shaly sand, and shale. Accurate lithofacies classification was achieved by the PNN as the total percent correct of the predicted discrete lithofacies was 95.81%. In GBM results, root-mean-square prediction error and adjusted R-square have incredible positive values, as there was an excellent matching between the measured and predicted core permeability. Additionally, the GBM model led to overcome the multicollinearity that was available between one pair of the predictors. The efficiency of boosted regression was demonstrated by the prediction matching of core permeability in comparison with the conventional multiple linear regression (MLR). GBM led to much more accurate permeability prediction than the MLR.
topic Lithofacies classification
Permeability modeling
Probabilistic neural networks
Boosted regression
Well log interpretations
url http://link.springer.com/article/10.1007/s13202-017-0360-0
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