Novel approach for predicting water alternating gas injection recovery factor

Abstract Water alternating gas (WAG) injection process is a proven EOR technology that has been successfully deployed in many fields around the globe. The performance of WAG process is measured by its incremental recovery factor over secondary recovery. The application of this technology remains lim...

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Main Authors: Lazreg Belazreg, Syed Mohammad Mahmood, Akmal Aulia
Format: Article
Language:English
Published: SpringerOpen 2019-05-01
Series:Journal of Petroleum Exploration and Production Technology
Subjects:
WAG
Online Access:http://link.springer.com/article/10.1007/s13202-019-0673-2
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spelling doaj-b0c3027e0e7146ecbb65a128ca7dd2ed2020-11-25T02:57:41ZengSpringerOpenJournal of Petroleum Exploration and Production Technology2190-05582190-05662019-05-01942893291010.1007/s13202-019-0673-2Novel approach for predicting water alternating gas injection recovery factorLazreg Belazreg0Syed Mohammad Mahmood1Akmal Aulia2Department of Geosciences and Petroleum Engineering, University Teknologi PETRONASDepartment of Geosciences and Petroleum Engineering, University Teknologi PETRONASDepartment of Geosciences and Petroleum Engineering, University Teknologi PETRONASAbstract Water alternating gas (WAG) injection process is a proven EOR technology that has been successfully deployed in many fields around the globe. The performance of WAG process is measured by its incremental recovery factor over secondary recovery. The application of this technology remains limited due to the complexity of the WAG injection process which requires time-consuming in-depth technical studies. This research was performed for a purpose of developing a predictive model for WAG incremental recovery factor based on integrated approach that involves reservoir simulation and data mining. A thousand reservoir simulation models were developed to evaluate WAG injection performance over waterflooding. Reservoir model parameters assessed in this research study were horizontal and vertical permeabilities, fluids properties, WAG injection scheme, fluids mobility, trapped gas saturation, reservoir pressure, residual oil saturation to gas, and injected gas volume. The outcome of the WAG simulation models was fed to the two selected data mining techniques, regression and group method of data handling (GMDH), to build WAG incremental recovery factor predictive model. Input data to the machine learning technique were split into two sets: 70% for training the model and 30% for model validation. Predictive models that calculate WAG incremental recovery factor as a function of the input parameters were developed. The predictive models correlation coefficient of 0.766 and 0.853 and root mean square error of 3.571 and 2.893 were achieved from regression and GMDH methods, respectively. GMDH technique demonstrated its strength and ability in selecting effective predictors, optimizing network structure, and achieving more accurate predictive model. The achieved WAG incremental recovery factor predictive models are expected to help reservoir engineers perform quick evaluation of WAG performance and assess a WAG project risk prior launching detailed time-consuming and costly technical studies.http://link.springer.com/article/10.1007/s13202-019-0673-2WAGRecovery factorReservoir simulationMachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Lazreg Belazreg
Syed Mohammad Mahmood
Akmal Aulia
spellingShingle Lazreg Belazreg
Syed Mohammad Mahmood
Akmal Aulia
Novel approach for predicting water alternating gas injection recovery factor
Journal of Petroleum Exploration and Production Technology
WAG
Recovery factor
Reservoir simulation
Machine learning
author_facet Lazreg Belazreg
Syed Mohammad Mahmood
Akmal Aulia
author_sort Lazreg Belazreg
title Novel approach for predicting water alternating gas injection recovery factor
title_short Novel approach for predicting water alternating gas injection recovery factor
title_full Novel approach for predicting water alternating gas injection recovery factor
title_fullStr Novel approach for predicting water alternating gas injection recovery factor
title_full_unstemmed Novel approach for predicting water alternating gas injection recovery factor
title_sort novel approach for predicting water alternating gas injection recovery factor
publisher SpringerOpen
series Journal of Petroleum Exploration and Production Technology
issn 2190-0558
2190-0566
publishDate 2019-05-01
description Abstract Water alternating gas (WAG) injection process is a proven EOR technology that has been successfully deployed in many fields around the globe. The performance of WAG process is measured by its incremental recovery factor over secondary recovery. The application of this technology remains limited due to the complexity of the WAG injection process which requires time-consuming in-depth technical studies. This research was performed for a purpose of developing a predictive model for WAG incremental recovery factor based on integrated approach that involves reservoir simulation and data mining. A thousand reservoir simulation models were developed to evaluate WAG injection performance over waterflooding. Reservoir model parameters assessed in this research study were horizontal and vertical permeabilities, fluids properties, WAG injection scheme, fluids mobility, trapped gas saturation, reservoir pressure, residual oil saturation to gas, and injected gas volume. The outcome of the WAG simulation models was fed to the two selected data mining techniques, regression and group method of data handling (GMDH), to build WAG incremental recovery factor predictive model. Input data to the machine learning technique were split into two sets: 70% for training the model and 30% for model validation. Predictive models that calculate WAG incremental recovery factor as a function of the input parameters were developed. The predictive models correlation coefficient of 0.766 and 0.853 and root mean square error of 3.571 and 2.893 were achieved from regression and GMDH methods, respectively. GMDH technique demonstrated its strength and ability in selecting effective predictors, optimizing network structure, and achieving more accurate predictive model. The achieved WAG incremental recovery factor predictive models are expected to help reservoir engineers perform quick evaluation of WAG performance and assess a WAG project risk prior launching detailed time-consuming and costly technical studies.
topic WAG
Recovery factor
Reservoir simulation
Machine learning
url http://link.springer.com/article/10.1007/s13202-019-0673-2
work_keys_str_mv AT lazregbelazreg novelapproachforpredictingwateralternatinggasinjectionrecoveryfactor
AT syedmohammadmahmood novelapproachforpredictingwateralternatinggasinjectionrecoveryfactor
AT akmalaulia novelapproachforpredictingwateralternatinggasinjectionrecoveryfactor
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