LAPSE:2023.12440
Published Article

LAPSE:2023.12440
Applying Machine Learning to Predict the Rate of Penetration for Geothermal Drilling Located in the Utah FORGE Site
February 28, 2023
Abstract
Well planning for every drilling project includes cost estimation. Maximizing the rate of penetration (ROP) reduces the time required for drilling, resulting in reducing the expenses required for the drilling budget. The empirical formulas developed to predict ROP have limited field applications. Since real-time drilling data acquisition and computing technologies have improved over the years, we implemented the data-driven approach for this purpose. We investigated the potential of machine learning and deep learning algorithms to predict the nonlinear behavior of the ROP. The well was drilled to confirm the geothermal reservoir characteristics for the FORGE site. After cleaning and preprocessing the data, we selected two models and optimized their hyperparameters. According to our findings, the random forest regressor and the artificial neural network predicted the behavior of our field ROP with a maximum absolute mean error of 3.98, corresponding to 19% of the ROP’s standard deviation. A tool was created to assist engineers in selecting the best drilling parameters that increase the ROP for future drilling tasks. The tool can be validated with an existing well from the same field to demonstrate its capability as an ROP predictive model.
Well planning for every drilling project includes cost estimation. Maximizing the rate of penetration (ROP) reduces the time required for drilling, resulting in reducing the expenses required for the drilling budget. The empirical formulas developed to predict ROP have limited field applications. Since real-time drilling data acquisition and computing technologies have improved over the years, we implemented the data-driven approach for this purpose. We investigated the potential of machine learning and deep learning algorithms to predict the nonlinear behavior of the ROP. The well was drilled to confirm the geothermal reservoir characteristics for the FORGE site. After cleaning and preprocessing the data, we selected two models and optimized their hyperparameters. According to our findings, the random forest regressor and the artificial neural network predicted the behavior of our field ROP with a maximum absolute mean error of 3.98, corresponding to 19% of the ROP’s standard deviation. A tool was created to assist engineers in selecting the best drilling parameters that increase the ROP for future drilling tasks. The tool can be validated with an existing well from the same field to demonstrate its capability as an ROP predictive model.
Record ID
Keywords
artificial neural network, deep learning, geothermal energy, Machine Learning, predictive modeling, python programming, random forests, rate of penetration (ROP)
Suggested Citation
Ben Aoun MA, Madarász T. Applying Machine Learning to Predict the Rate of Penetration for Geothermal Drilling Located in the Utah FORGE Site. (2023). LAPSE:2023.12440
Author Affiliations
Ben Aoun MA: Department of Civil, Geological and Mining Engineering, Polytechnique Montréal, 2500 Chemin de Polytechnique, Montréal, QC H3T 1J4, Canada; Institute of Environmental Management, University of Miskolc, 3515 Miskolc-Egyetemváros, Hungary [ORCID]
Madarász T: Institute of Environmental Management, University of Miskolc, 3515 Miskolc-Egyetemváros, Hungary
Madarász T: Institute of Environmental Management, University of Miskolc, 3515 Miskolc-Egyetemváros, Hungary
Journal Name
Energies
Volume
15
Issue
12
First Page
4288
Year
2022
Publication Date
2022-06-11
ISSN
1996-1073
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Original Submission
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PII: en15124288, Publication Type: Journal Article
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LAPSE:2023.12440
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https://doi.org/10.3390/en15124288
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Feb 28, 2023
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