An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration

Drill bit is the most essential tool in drilling and drill bit selection plays a significant role in drilling process planning. This paper discusses bit selection by employing a method of combining Artificial Neural Network (ANN) and the computation of Genetic Algorithm (GA). In this method, offset...

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Main Authors: Momeni, M., Hosseini, S.J., Ridha, S., Laruccia, M.B., Liu, X.
Format: Article
Published: Taylor's University 2018
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85041802992&partnerID=40&md5=433c9205b717f02473875d0f19d8d7cf
http://eprints.utp.edu.my/21803/
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spelling my.utp.eprints.218032019-02-01T02:18:19Z An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration Momeni, M. Hosseini, S.J. Ridha, S. Laruccia, M.B. Liu, X. Drill bit is the most essential tool in drilling and drill bit selection plays a significant role in drilling process planning. This paper discusses bit selection by employing a method of combining Artificial Neural Network (ANN) and the computation of Genetic Algorithm (GA). In this method, offset well drilling records are used for training the ANN model and International Association Drilling Contractors (IADC) bit codes are used to name each bit. However, some researchers have used bit codes as input or output variables. This paper illustrates that the bit codes are better used in referring to the name of each bit instead of using them as values for calculation in the ANN model. The ANN black box was converted to white box to obtain a visible mathematical model for predicting the Rate of Penetration (ROP). This mathematical model, which was the objective function in the GAs, was used to find the optimum drilling values and to maximize the ROP. When drilling a new well, bit selection process requires the maximum ROP of a bit that corresponds to the optimum drilling parameters being obtained by combining the trained ANN model with GA. A bit selection example is provided by using the Shadegan oil field drilling data. The mean square error (MSE) obtained a value of 0.0037 whereas the coefficient of determination obtained a value of 0.9473. In other words, the predicted ROP model based on the field drilling data indicated a good correlation with the real ROP. © School of Engineering, Taylor�s University. Taylor's University 2018 Article PeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-85041802992&partnerID=40&md5=433c9205b717f02473875d0f19d8d7cf Momeni, M. and Hosseini, S.J. and Ridha, S. and Laruccia, M.B. and Liu, X. (2018) An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration. Journal of Engineering Science and Technology, 13 (2). pp. 361-372. (Submitted) http://eprints.utp.edu.my/21803/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description Drill bit is the most essential tool in drilling and drill bit selection plays a significant role in drilling process planning. This paper discusses bit selection by employing a method of combining Artificial Neural Network (ANN) and the computation of Genetic Algorithm (GA). In this method, offset well drilling records are used for training the ANN model and International Association Drilling Contractors (IADC) bit codes are used to name each bit. However, some researchers have used bit codes as input or output variables. This paper illustrates that the bit codes are better used in referring to the name of each bit instead of using them as values for calculation in the ANN model. The ANN black box was converted to white box to obtain a visible mathematical model for predicting the Rate of Penetration (ROP). This mathematical model, which was the objective function in the GAs, was used to find the optimum drilling values and to maximize the ROP. When drilling a new well, bit selection process requires the maximum ROP of a bit that corresponds to the optimum drilling parameters being obtained by combining the trained ANN model with GA. A bit selection example is provided by using the Shadegan oil field drilling data. The mean square error (MSE) obtained a value of 0.0037 whereas the coefficient of determination obtained a value of 0.9473. In other words, the predicted ROP model based on the field drilling data indicated a good correlation with the real ROP. © School of Engineering, Taylor�s University.
format Article
author Momeni, M.
Hosseini, S.J.
Ridha, S.
Laruccia, M.B.
Liu, X.
spellingShingle Momeni, M.
Hosseini, S.J.
Ridha, S.
Laruccia, M.B.
Liu, X.
An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
author_facet Momeni, M.
Hosseini, S.J.
Ridha, S.
Laruccia, M.B.
Liu, X.
author_sort Momeni, M.
title An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
title_short An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
title_full An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
title_fullStr An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
title_full_unstemmed An optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
title_sort optimum drill bit selection technique using artificial neural networks and genetic algorithms to increase the rate of penetration
publisher Taylor's University
publishDate 2018
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85041802992&partnerID=40&md5=433c9205b717f02473875d0f19d8d7cf
http://eprints.utp.edu.my/21803/
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score 13.160551