Prediction of fracture density in a gas reservoir using robust computational approaches
One of the challenges that reservoir engineers, drilling engineers, and geoscientists face in the oil and gas industry is determining the fracture density (FVDC) of reservoir rock. This critical parameter is valuable because its presence in oil and gas reservoirs boosts productivity and is pivotal f...
| Published in: | Frontiers in Earth Science |
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| Main Authors: | , , , , , , , , |
| Format: | Article |
| Language: | English |
| Published: |
Frontiers Media S.A.
2023-01-01
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| Online Access: | https://www.frontiersin.org/articles/10.3389/feart.2022.1023578/full |
| _version_ | 1852671435709874176 |
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| author | Guozhong Gao Guozhong Gao Omid Hazbeh Shadfar Davoodi Somayeh Tabasi Meysam Rajabi Hamzeh Ghorbani Hamzeh Ghorbani Ahmed E. Radwan Mako Csaba Amir H. Mosavi |
| author_facet | Guozhong Gao Guozhong Gao Omid Hazbeh Shadfar Davoodi Somayeh Tabasi Meysam Rajabi Hamzeh Ghorbani Hamzeh Ghorbani Ahmed E. Radwan Mako Csaba Amir H. Mosavi |
| author_sort | Guozhong Gao |
| collection | DOAJ |
| container_title | Frontiers in Earth Science |
| description | One of the challenges that reservoir engineers, drilling engineers, and geoscientists face in the oil and gas industry is determining the fracture density (FVDC) of reservoir rock. This critical parameter is valuable because its presence in oil and gas reservoirs boosts productivity and is pivotal for reservoir management, operation, and ultimately energy management. This valuable parameter is determined by some expensive operations such as FMI logs and core analysis techniques. As a result, this paper attempts to predict this important parameter using petrophysics logs routinely collected at oil and gas wells and by applying four robust computational algorithms and artificial intelligence hybrids. A total of 6067 data points were collected from three gas wells (#W1, #W2, and #W3) in one gas reservoir in Southwest Asia. Following feature selection, the input variables include spectral gamma ray (SGR); sonic porosity (PHIS); potassium (POTA); photoelectric absorption factor (PEF); neutron porosity (NPHI); sonic transition time (DT); bulk density (RHOB); and corrected gamma ray (CGR). In this study, four hybrids of two networks were used, including least squares support vector machine (LSSVM) and multi-layer perceptron (MLP) with two optimizers particle swarm optimizer (PSO) and genetic algorithm (GA). Four robust hybrid machine learning models were applied, and these are LSSVM-PSO/GA and MLP-PSO/GA, which had not previously used for prediction of FVDC. In addition, the k-fold cross validation method with k equal to 8 was used in this article. When the performance accuracy of the hybrid algorithms for the FVDC prediction is compared, the revealed result is LSSVM-PSO > LSSVM-GA > MLP-PSO > MLP-GA. The study revealed that the best algorithm for predicting FVDC among the four algorithms is LSSVM-PSO (for total dataset RMSE = 0.0463 1/m; R2 = 0.9995). This algorithm has several advantages, including: 1) lower adjustment parameters, 2) high search efficiency, 3) fast convergence speed, 4) increased global search capability, and 5) preventing the local optimum from falling. When compared to other models, this model has the lowest error. |
| format | Article |
| id | doaj-art-e3b58a1a110944de89a0de2bb56d4233 |
| institution | Directory of Open Access Journals |
| issn | 2296-6463 |
| language | English |
| publishDate | 2023-01-01 |
| publisher | Frontiers Media S.A. |
| record_format | Article |
| spelling | doaj-art-e3b58a1a110944de89a0de2bb56d42332025-08-19T21:33:06ZengFrontiers Media S.A.Frontiers in Earth Science2296-64632023-01-011010.3389/feart.2022.10235781023578Prediction of fracture density in a gas reservoir using robust computational approachesGuozhong Gao0Guozhong Gao1Omid Hazbeh2Shadfar Davoodi3Somayeh Tabasi4Meysam Rajabi5Hamzeh Ghorbani6Hamzeh Ghorbani7Ahmed E. Radwan8Mako Csaba9Amir H. Mosavi10College of Geophysics and Petroleum Resources, Yangtze University, Wuhan, Hubei, ChinaCooperative Innovation Center of Unconventional Oil and Gas, Yangtze University (Ministry of Education & Hubei Province), Wuhan, Hubei, ChinaFaculty of Earth Sciences, Shahid Chamran University, Ahwaz, IranSchool of Earth Sciences and Engineering, Tomsk Polytechnic University, Tomsk, RussiaFaculty of Industry and Mining (Khash), University of Sistan and Baluchestan, Zahedan, IranDepartment of Mining Engineering, Birjand University of Technology, Birjand, IranYoung Researchers and Elite Club, Ahvaz Branch, Islamic Azad University, Ahvaz, IranFaculty of General Medicine, University of Traditional Medicine of Armenia (UTMA), Yerevan, ArmeniaFaculty of Geography and Geology, Institute of Geological Sciences, Jagiellonian University, Kraków, Poland0Independent Researcher, Budapest, Hungary1Independent Researcher, Kyiv, UkraineOne of the challenges that reservoir engineers, drilling engineers, and geoscientists face in the oil and gas industry is determining the fracture density (FVDC) of reservoir rock. This critical parameter is valuable because its presence in oil and gas reservoirs boosts productivity and is pivotal for reservoir management, operation, and ultimately energy management. This valuable parameter is determined by some expensive operations such as FMI logs and core analysis techniques. As a result, this paper attempts to predict this important parameter using petrophysics logs routinely collected at oil and gas wells and by applying four robust computational algorithms and artificial intelligence hybrids. A total of 6067 data points were collected from three gas wells (#W1, #W2, and #W3) in one gas reservoir in Southwest Asia. Following feature selection, the input variables include spectral gamma ray (SGR); sonic porosity (PHIS); potassium (POTA); photoelectric absorption factor (PEF); neutron porosity (NPHI); sonic transition time (DT); bulk density (RHOB); and corrected gamma ray (CGR). In this study, four hybrids of two networks were used, including least squares support vector machine (LSSVM) and multi-layer perceptron (MLP) with two optimizers particle swarm optimizer (PSO) and genetic algorithm (GA). Four robust hybrid machine learning models were applied, and these are LSSVM-PSO/GA and MLP-PSO/GA, which had not previously used for prediction of FVDC. In addition, the k-fold cross validation method with k equal to 8 was used in this article. When the performance accuracy of the hybrid algorithms for the FVDC prediction is compared, the revealed result is LSSVM-PSO > LSSVM-GA > MLP-PSO > MLP-GA. The study revealed that the best algorithm for predicting FVDC among the four algorithms is LSSVM-PSO (for total dataset RMSE = 0.0463 1/m; R2 = 0.9995). This algorithm has several advantages, including: 1) lower adjustment parameters, 2) high search efficiency, 3) fast convergence speed, 4) increased global search capability, and 5) preventing the local optimum from falling. When compared to other models, this model has the lowest error.https://www.frontiersin.org/articles/10.3389/feart.2022.1023578/fullmachine learningleast-squares support-vector machinesfracture densitypredictionartificial intelligenceenergy |
| spellingShingle | Guozhong Gao Guozhong Gao Omid Hazbeh Shadfar Davoodi Somayeh Tabasi Meysam Rajabi Hamzeh Ghorbani Hamzeh Ghorbani Ahmed E. Radwan Mako Csaba Amir H. Mosavi Prediction of fracture density in a gas reservoir using robust computational approaches machine learning least-squares support-vector machines fracture density prediction artificial intelligence energy |
| title | Prediction of fracture density in a gas reservoir using robust computational approaches |
| title_full | Prediction of fracture density in a gas reservoir using robust computational approaches |
| title_fullStr | Prediction of fracture density in a gas reservoir using robust computational approaches |
| title_full_unstemmed | Prediction of fracture density in a gas reservoir using robust computational approaches |
| title_short | Prediction of fracture density in a gas reservoir using robust computational approaches |
| title_sort | prediction of fracture density in a gas reservoir using robust computational approaches |
| topic | machine learning least-squares support-vector machines fracture density prediction artificial intelligence energy |
| url | https://www.frontiersin.org/articles/10.3389/feart.2022.1023578/full |
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