LAPSE:2023.9497
Published Article

LAPSE:2023.9497
Development of Monitoring and Forecasting Technology Energy Efficiency of Well Drilling Using Mechanical Specific Energy
February 27, 2023
Abstract
This article is devoted to the development of technology for improving the efficiency of directional well drilling by predicting and adjusting the system of static and dynamic components of the actual weight on the bit, based on the real-time data interpretation from telemetry sensors of the bottom hole assembly (BHA). Studies of the petrophysical and geomechanical properties of rock samples were carried out. Based on fourth strength theory and the Palmgren−Miner fatigue stress theory, the mathematical model for prediction of effective distribution of mechanical specific energy, using machine learning methods while drilling, was developed. An algorithm was set for evaluation and estimation of effective destruction of rock by comparing petrophysical data in the well section and predicting the shock impulse of the bit. Based on the theory provided, it is assumed that the given shock impulse is an actual representation of an excessive energy, conveyed to BHA. This excessive energy was quantitively determined and expressed as an adjusting coefficient for optimal weight on bit. The developed mathematical and predictive model helps to identify the presence of ineffective rock destruction and adjust drilling regime accordingly. Several well drilling datasets from the North Sea were analyzed. The effectiveness of the developed mathematical model and algorithms was confirmed by testing well drilling data.
This article is devoted to the development of technology for improving the efficiency of directional well drilling by predicting and adjusting the system of static and dynamic components of the actual weight on the bit, based on the real-time data interpretation from telemetry sensors of the bottom hole assembly (BHA). Studies of the petrophysical and geomechanical properties of rock samples were carried out. Based on fourth strength theory and the Palmgren−Miner fatigue stress theory, the mathematical model for prediction of effective distribution of mechanical specific energy, using machine learning methods while drilling, was developed. An algorithm was set for evaluation and estimation of effective destruction of rock by comparing petrophysical data in the well section and predicting the shock impulse of the bit. Based on the theory provided, it is assumed that the given shock impulse is an actual representation of an excessive energy, conveyed to BHA. This excessive energy was quantitively determined and expressed as an adjusting coefficient for optimal weight on bit. The developed mathematical and predictive model helps to identify the presence of ineffective rock destruction and adjust drilling regime accordingly. Several well drilling datasets from the North Sea were analyzed. The effectiveness of the developed mathematical model and algorithms was confirmed by testing well drilling data.
Record ID
Keywords
artificial neural networks, bit vibrations and shocks, control, drill string dynamics, operating parameters, Optimization, weight on the bit, well
Suggested Citation
Kunshin A, Dvoynikov M, Timashev E, Starikov V. Development of Monitoring and Forecasting Technology Energy Efficiency of Well Drilling Using Mechanical Specific Energy. (2023). LAPSE:2023.9497
Author Affiliations
Kunshin A: Department of Wells Drilling, Saint Petersburg Mining University, 199106 Saint Petersburg, Russia
Dvoynikov M: Department of Wells Drilling, Saint Petersburg Mining University, 199106 Saint Petersburg, Russia
Timashev E: Department of Technical Regulation and Development of Corporative Science and Project Complex, PJSC NK Rosneft, 117997 Moscow, Russia
Starikov V: Department of Energy Geoscience Infrastructure and Society, Heriot-Watt University, Dubai Knowledge Park, Dubai P.O. Box 38103, United Arab Emirates
Dvoynikov M: Department of Wells Drilling, Saint Petersburg Mining University, 199106 Saint Petersburg, Russia
Timashev E: Department of Technical Regulation and Development of Corporative Science and Project Complex, PJSC NK Rosneft, 117997 Moscow, Russia
Starikov V: Department of Energy Geoscience Infrastructure and Society, Heriot-Watt University, Dubai Knowledge Park, Dubai P.O. Box 38103, United Arab Emirates
Journal Name
Energies
Volume
15
Issue
19
First Page
7408
Year
2022
Publication Date
2022-10-09
ISSN
1996-1073
Version Comments
Original Submission
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PII: en15197408, Publication Type: Journal Article
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LAPSE:2023.9497
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https://doi.org/10.3390/en15197408
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