Predicting the rate of penetration (ROP) is a significant factor in drilling optimization and minimizing expensive drilling costs. However, due to the geological uncertainty and many uncontrolled operational parameters influencing the ROP, its prediction is still a complex problem for the oil and gas industries. In the present study, a reliable computational approach for the prediction of ROP is proposed. First, fscaret package in a R environment was implemented to find out the importance and ranking of the inputs’ parameters. According to the feature ranking process, out of the 25 variables studied, 19 variables had the highest impact on ROP based on their ranges within this dataset. Second, a new model that is able to predict the ROP using real field data, which is based on artificial neural networks (ANNs), was developed. In order to gain a deeper understanding of the relationships between input parameters and ROP, this model was used to check the effect of the weight on bit (WOB), rotation per minute (rpm), and flow rate (FR). Finally, the simulation results of three deviated wells showed an acceptable representation of the physical process, with reasonable predicted ROP values. The main contribution of this research as compared to previous studies is that it investigates the influence of well trajectory (azimuth and inclination) and mechanical earth modeling parameters on the ROP for high-angled wells. The major advantage of the present study is optimizing the drilling parameters, predicting the proper penetration rate, estimating the drilling time of the deviated wells, and eventually reducing the drilling cost for future wells.
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November 2019
Research-Article
Drilling Rate of Penetration Prediction of High-Angled Wells Using Artificial Neural Networks
Salih Rushdi,
Salih Rushdi
Department of Chemical Engineering,
Al-Qadisiyah 58002,
e-mail: salih.rushdi@qu.edu.iq
University of Al-Qadisiyah
,Al-Qadisiyah 58002,
Iraq
e-mail: salih.rushdi@qu.edu.iq
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Mortadha Alsaba,
Mortadha Alsaba
Department of Petroleum Engineering,
Safat 13015,
e-mail: m.alsaba@ack.edu.kw
Australian College of Kuwait
,Safat 13015,
Kuwait
e-mail: m.alsaba@ack.edu.kw
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Mohammed F. Al Dushaishi
Mohammed F. Al Dushaishi
Department of Petroleum Engineering,
Laredo, TX 78041
e-mail: mohammed.aldushaishi@tamiu.edu
Texas A&M International University
,Laredo, TX 78041
e-mail: mohammed.aldushaishi@tamiu.edu
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Ahmed K. Abbas
Salih Rushdi
Department of Chemical Engineering,
Al-Qadisiyah 58002,
e-mail: salih.rushdi@qu.edu.iq
University of Al-Qadisiyah
,Al-Qadisiyah 58002,
Iraq
e-mail: salih.rushdi@qu.edu.iq
Mortadha Alsaba
Department of Petroleum Engineering,
Safat 13015,
e-mail: m.alsaba@ack.edu.kw
Australian College of Kuwait
,Safat 13015,
Kuwait
e-mail: m.alsaba@ack.edu.kw
Mohammed F. Al Dushaishi
Department of Petroleum Engineering,
Laredo, TX 78041
e-mail: mohammed.aldushaishi@tamiu.edu
Texas A&M International University
,Laredo, TX 78041
e-mail: mohammed.aldushaishi@tamiu.edu
1Corresponding author.
Contributed by the Petroleum Division of ASME for publication in the Journal of Energy Resources Technology. Manuscript received December 29, 2018; final manuscript received April 29, 2019; published online May 20, 2019. Assoc. Editor: Arash Dahi Taleghani.
J. Energy Resour. Technol. Nov 2019, 141(11): 112904 (11 pages)
Published Online: May 20, 2019
Article history
Received:
December 29, 2018
Revision Received:
April 29, 2019
Accepted:
April 29, 2019
Citation
Abbas, A. K., Rushdi, S., Alsaba, M., and Al Dushaishi, M. F. (May 20, 2019). "Drilling Rate of Penetration Prediction of High-Angled Wells Using Artificial Neural Networks." ASME. J. Energy Resour. Technol. November 2019; 141(11): 112904. https://doi.org/10.1115/1.4043699
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