LAPSE:2023.24136v1
Published Article

LAPSE:2023.24136v1
Machine Learning: A Useful Tool in Geomechanical Studies, a Case Study from an Offshore Gas Field
March 27, 2023
Abstract
For a safe drilling operation with the of minimum borehole instability challenges, building a mechanical earth model (MEM) has proven to be extremely valuable. However, the natural complexity of reservoirs along with the lack of reliable information leads to a poor prediction of geomechanical parameters. Shear wave velocity has many applications, such as in petrophysical and geophysical as well as geomechanical studies. However, occasionally, wells lack shear wave velocity (especially in old wells), and estimating this parameter using other well logs is the optimum solution. Generally, available empirical relationships are being used, while they can only describe similar formations and their validation needs calibration. In this study, machine learning approaches for shear sonic log prediction were used. The results were then compared with each other and the empirical Greenberg−Castagna method. Results showed that the artificial neural network has the highest accuracy of the predictions over the single and multiple linear regression models. This improvement is more highlighted in hydrocarbon-bearing intervals, which is considered as a limitation of the empirical or any linear method. In the next step, rock elastic properties and in-situ stresses were calculated. Afterwards, in-situ stresses were predicted and coupled with a failure criterion to yield safe mud weight windows for wells in the field. Predicted drilling events matched quite well with the observed drilling reports.
For a safe drilling operation with the of minimum borehole instability challenges, building a mechanical earth model (MEM) has proven to be extremely valuable. However, the natural complexity of reservoirs along with the lack of reliable information leads to a poor prediction of geomechanical parameters. Shear wave velocity has many applications, such as in petrophysical and geophysical as well as geomechanical studies. However, occasionally, wells lack shear wave velocity (especially in old wells), and estimating this parameter using other well logs is the optimum solution. Generally, available empirical relationships are being used, while they can only describe similar formations and their validation needs calibration. In this study, machine learning approaches for shear sonic log prediction were used. The results were then compared with each other and the empirical Greenberg−Castagna method. Results showed that the artificial neural network has the highest accuracy of the predictions over the single and multiple linear regression models. This improvement is more highlighted in hydrocarbon-bearing intervals, which is considered as a limitation of the empirical or any linear method. In the next step, rock elastic properties and in-situ stresses were calculated. Afterwards, in-situ stresses were predicted and coupled with a failure criterion to yield safe mud weight windows for wells in the field. Predicted drilling events matched quite well with the observed drilling reports.
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Keywords
geomechanics, linear regression, Machine Learning, neural network, shear velocity
Suggested Citation
Khatibi S, Aghajanpour A. Machine Learning: A Useful Tool in Geomechanical Studies, a Case Study from an Offshore Gas Field. (2023). LAPSE:2023.24136v1
Author Affiliations
Khatibi S: Jackson School of Geosciences, University of Texas at Austin, Austin, TX 78712, USA [ORCID]
Aghajanpour A: Department of Geoscience and Petroleum, Norwegian University of Science and Technology, 7031 Trondheim, Norway
Aghajanpour A: Department of Geoscience and Petroleum, Norwegian University of Science and Technology, 7031 Trondheim, Norway
Journal Name
Energies
Volume
13
Issue
14
Article Number
E3528
Year
2020
Publication Date
2020-07-08
ISSN
1996-1073
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Original Submission
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PII: en13143528, Publication Type: Journal Article
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LAPSE:2023.24136v1
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https://doi.org/10.3390/en13143528
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Mar 27, 2023
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