Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection

As the conventional prediction methods for production of waterflooding reservoirs have some drawbacks, a production forecasting model based on artificial neural network was proposed, the simulation process by this method was presented, and some examples were illustrated. A workflow that involves a p...

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Main Authors: Berihun Mamo NEGASH, Atta Dennis YAW
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2020-04-01
Series:Petroleum Exploration and Development
Online Access:http://www.sciencedirect.com/science/article/pii/S1876380420600556
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spelling doaj-7b3bcaea844740fa9315f7af5ff225762021-04-02T12:57:09ZengKeAi Communications Co., Ltd.Petroleum Exploration and Development1876-38042020-04-01472383392Artificial neural network based production forecasting for a hydrocarbon reservoir under water injectionBerihun Mamo NEGASH0Atta Dennis YAW1Corresponding author; University Teknologi PETRONAS, Petroleum Engineering Department, 32610 Seri Iskandar, Perak Darul Ridzuan, MalaysiaUniversity Teknologi PETRONAS, Petroleum Engineering Department, 32610 Seri Iskandar, Perak Darul Ridzuan, MalaysiaAs the conventional prediction methods for production of waterflooding reservoirs have some drawbacks, a production forecasting model based on artificial neural network was proposed, the simulation process by this method was presented, and some examples were illustrated. A workflow that involves a physics-based extraction of features was proposed for fluid production forecasting to improve the prediction effect. The Bayesian regularization algorithm was selected as the training algorithm of the model. This algorithm, although taking longer time, can better generalize oil, gas and water production data sets. The model was evaluated by calculating mean square error and determination coefficient, drawing error distribution histogram and the cross-plot between simulation data and verification data etc. The model structure was trained, validated and tested with 90% of the historical data, and blindly evaluated using the remaining. The predictive model consumes minimal information and computational cost and is capable of predicting fluid production rate with a coefficient of determination of more than 0.9, which has the simulation results consistent with the practical data. Key words: neural networks, machine learning, attribute extraction, Bayesian regularization algorithm, production forecasting, water floodinghttp://www.sciencedirect.com/science/article/pii/S1876380420600556
collection DOAJ
language English
format Article
sources DOAJ
author Berihun Mamo NEGASH
Atta Dennis YAW
spellingShingle Berihun Mamo NEGASH
Atta Dennis YAW
Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
Petroleum Exploration and Development
author_facet Berihun Mamo NEGASH
Atta Dennis YAW
author_sort Berihun Mamo NEGASH
title Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
title_short Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
title_full Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
title_fullStr Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
title_full_unstemmed Artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
title_sort artificial neural network based production forecasting for a hydrocarbon reservoir under water injection
publisher KeAi Communications Co., Ltd.
series Petroleum Exploration and Development
issn 1876-3804
publishDate 2020-04-01
description As the conventional prediction methods for production of waterflooding reservoirs have some drawbacks, a production forecasting model based on artificial neural network was proposed, the simulation process by this method was presented, and some examples were illustrated. A workflow that involves a physics-based extraction of features was proposed for fluid production forecasting to improve the prediction effect. The Bayesian regularization algorithm was selected as the training algorithm of the model. This algorithm, although taking longer time, can better generalize oil, gas and water production data sets. The model was evaluated by calculating mean square error and determination coefficient, drawing error distribution histogram and the cross-plot between simulation data and verification data etc. The model structure was trained, validated and tested with 90% of the historical data, and blindly evaluated using the remaining. The predictive model consumes minimal information and computational cost and is capable of predicting fluid production rate with a coefficient of determination of more than 0.9, which has the simulation results consistent with the practical data. Key words: neural networks, machine learning, attribute extraction, Bayesian regularization algorithm, production forecasting, water flooding
url http://www.sciencedirect.com/science/article/pii/S1876380420600556
work_keys_str_mv AT berihunmamonegash artificialneuralnetworkbasedproductionforecastingforahydrocarbonreservoirunderwaterinjection
AT attadennisyaw artificialneuralnetworkbasedproductionforecastingforahydrocarbonreservoirunderwaterinjection
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