Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study
Estimation of fluid saturation is an important step in dynamic reservoir characterization. Machine learning techniques have been increasingly used in recent years for reservoir saturation prediction workflows. However, most of these studies require input parameters derived from cores, petrophysical...
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Online Access: | https://www.mdpi.com/1996-1073/14/4/1052 |
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doaj-41e9d14d8937488aae6f5b4a2b64122d2021-02-18T00:04:49ZengMDPI AGEnergies1996-10732021-02-01141052105210.3390/en14041052Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case StudyBaozhong Wang0Jyotsna Sharma1Jianhua Chen2Patricia Persaud3Computer Science and Engineering Division, School of Electrical Engineering and Computer Science, Louisiana State University (LSU), Baton Rouge, LA 70803, USADepartment of Petroleum Engineering, Patrick F. Taylor Hall, LSU, Baton Rouge, LA 70803, USAComputer Science and Engineering Division, School of Electrical Engineering and Computer Science, Louisiana State University (LSU), Baton Rouge, LA 70803, USADepartment of Geology and Geophysics, Howe-Russell-Kniffen, LSU, Baton Rouge, LA 70803, USAEstimation of fluid saturation is an important step in dynamic reservoir characterization. Machine learning techniques have been increasingly used in recent years for reservoir saturation prediction workflows. However, most of these studies require input parameters derived from cores, petrophysical logs, or seismic data, which may not always be readily available. Additionally, very few studies incorporate the production data, which is an important reflection of the dynamic reservoir properties and also typically the most frequently and reliably measured quantity throughout the life of a field. In this research, the random forest ensemble machine learning algorithm is implemented that uses the field-wide production and injection data (both measured at the surface) as the only input parameters to predict the time-lapse oil saturation profiles at well locations. The algorithm is optimized using feature selection based on feature importance score and Pearson correlation coefficient, in combination with geophysical domain-knowledge. The workflow is demonstrated using the actual field data from a structurally complex, heterogeneous, and heavily faulted offshore reservoir. The random forest model captures the trends from three and a half years of historical field production, injection, and simulated saturation data to predict future time-lapse oil saturation profiles at four deviated well locations with over 90% R-square, less than 6% Root Mean Square Error, and less than 7% Mean Absolute Percentage Error, in each case.https://www.mdpi.com/1996-1073/14/4/1052reservoir characterizationmachine learningsaturation predictionoffshore oilfieldrandom forest |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Baozhong Wang Jyotsna Sharma Jianhua Chen Patricia Persaud |
spellingShingle |
Baozhong Wang Jyotsna Sharma Jianhua Chen Patricia Persaud Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study Energies reservoir characterization machine learning saturation prediction offshore oilfield random forest |
author_facet |
Baozhong Wang Jyotsna Sharma Jianhua Chen Patricia Persaud |
author_sort |
Baozhong Wang |
title |
Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study |
title_short |
Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study |
title_full |
Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study |
title_fullStr |
Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study |
title_full_unstemmed |
Ensemble Machine Learning Assisted Reservoir Characterization using Field Production Data-An Offshore Field Case Study |
title_sort |
ensemble machine learning assisted reservoir characterization using field production data-an offshore field case study |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2021-02-01 |
description |
Estimation of fluid saturation is an important step in dynamic reservoir characterization. Machine learning techniques have been increasingly used in recent years for reservoir saturation prediction workflows. However, most of these studies require input parameters derived from cores, petrophysical logs, or seismic data, which may not always be readily available. Additionally, very few studies incorporate the production data, which is an important reflection of the dynamic reservoir properties and also typically the most frequently and reliably measured quantity throughout the life of a field. In this research, the random forest ensemble machine learning algorithm is implemented that uses the field-wide production and injection data (both measured at the surface) as the only input parameters to predict the time-lapse oil saturation profiles at well locations. The algorithm is optimized using feature selection based on feature importance score and Pearson correlation coefficient, in combination with geophysical domain-knowledge. The workflow is demonstrated using the actual field data from a structurally complex, heterogeneous, and heavily faulted offshore reservoir. The random forest model captures the trends from three and a half years of historical field production, injection, and simulated saturation data to predict future time-lapse oil saturation profiles at four deviated well locations with over 90% R-square, less than 6% Root Mean Square Error, and less than 7% Mean Absolute Percentage Error, in each case. |
topic |
reservoir characterization machine learning saturation prediction offshore oilfield random forest |
url |
https://www.mdpi.com/1996-1073/14/4/1052 |
work_keys_str_mv |
AT baozhongwang ensemblemachinelearningassistedreservoircharacterizationusingfieldproductiondataanoffshorefieldcasestudy AT jyotsnasharma ensemblemachinelearningassistedreservoircharacterizationusingfieldproductiondataanoffshorefieldcasestudy AT jianhuachen ensemblemachinelearningassistedreservoircharacterizationusingfieldproductiondataanoffshorefieldcasestudy AT patriciapersaud ensemblemachinelearningassistedreservoircharacterizationusingfieldproductiondataanoffshorefieldcasestudy |
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