Modelling and optimization of well hole cleaning using artificial intelligence techniques

Abstract Ineffective hole cleaning in deviated and horizontal well drilling can lead to issues like stuck pipes, reduced rate of penetration (ROP), and drill bit damage, resulting in increased non-productive time (NPT) and operational costs. Traditional methods for assessing hole cleaning rely on ex...

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Main Authors: Nageswara Rao Lakkimsetty, Hassan Rashid Ali Al Araimi, G. Kavitha
Format: Article
Language:English
Published: Springer 2025-02-01
Series:Discover Applied Sciences
Subjects:
Online Access:https://doi.org/10.1007/s42452-024-06415-x
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author Nageswara Rao Lakkimsetty
Hassan Rashid Ali Al Araimi
G. Kavitha
author_facet Nageswara Rao Lakkimsetty
Hassan Rashid Ali Al Araimi
G. Kavitha
author_sort Nageswara Rao Lakkimsetty
collection DOAJ
description Abstract Ineffective hole cleaning in deviated and horizontal well drilling can lead to issues like stuck pipes, reduced rate of penetration (ROP), and drill bit damage, resulting in increased non-productive time (NPT) and operational costs. Traditional methods for assessing hole cleaning rely on experimental and empirical models that often fail to account for all influencing factors and lack real-time applicability. This study aims to improve the accuracy and practicality of hole cleaning assessment by applying Artificial Intelligence (AI) techniques, specifically Artificial Neural Networks (ANN) and Genetic Algorithms (GA), to predict downhole parameters and optimize drilling processes. These AI methods analyze the impact of key drilling parameters—such as weight on bit (WOB), ROP, rock geomechanics, drilling fluid characteristics, and rig hydraulics—on hole cleaning. Results demonstrated that AI-driven models provide high-precision predictions and enable real-time optimization, significantly reducing NPT and enhancing drilling efficiency and safety. In conclusion, AI techniques like ANN and GA offer a robust solution to improve hole cleaning, overcoming limitations of traditional methods and contributing to safer, more cost-effective drilling operations.
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spelling doaj-art-15fb749c5aab47419e89e199e2eff3b02025-02-09T12:49:51ZengSpringerDiscover Applied Sciences3004-92612025-02-017211510.1007/s42452-024-06415-xModelling and optimization of well hole cleaning using artificial intelligence techniquesNageswara Rao Lakkimsetty0Hassan Rashid Ali Al Araimi1G. Kavitha2Department of Chemical and Petroleum Engineering, School of Engineering and Computing, American University of Ras Al Khaimah (AURAK)Department of MIE, College of Engineering, National University of Science and TechnologyDepartment of Chemical Engineering, RVR & JC College of Engineering (A)Abstract Ineffective hole cleaning in deviated and horizontal well drilling can lead to issues like stuck pipes, reduced rate of penetration (ROP), and drill bit damage, resulting in increased non-productive time (NPT) and operational costs. Traditional methods for assessing hole cleaning rely on experimental and empirical models that often fail to account for all influencing factors and lack real-time applicability. This study aims to improve the accuracy and practicality of hole cleaning assessment by applying Artificial Intelligence (AI) techniques, specifically Artificial Neural Networks (ANN) and Genetic Algorithms (GA), to predict downhole parameters and optimize drilling processes. These AI methods analyze the impact of key drilling parameters—such as weight on bit (WOB), ROP, rock geomechanics, drilling fluid characteristics, and rig hydraulics—on hole cleaning. Results demonstrated that AI-driven models provide high-precision predictions and enable real-time optimization, significantly reducing NPT and enhancing drilling efficiency and safety. In conclusion, AI techniques like ANN and GA offer a robust solution to improve hole cleaning, overcoming limitations of traditional methods and contributing to safer, more cost-effective drilling operations.https://doi.org/10.1007/s42452-024-06415-xArtificial intelligencePetroleum engineeringHole cleaning indexGenetic algorithm
spellingShingle Nageswara Rao Lakkimsetty
Hassan Rashid Ali Al Araimi
G. Kavitha
Modelling and optimization of well hole cleaning using artificial intelligence techniques
Discover Applied Sciences
Artificial intelligence
Petroleum engineering
Hole cleaning index
Genetic algorithm
title Modelling and optimization of well hole cleaning using artificial intelligence techniques
title_full Modelling and optimization of well hole cleaning using artificial intelligence techniques
title_fullStr Modelling and optimization of well hole cleaning using artificial intelligence techniques
title_full_unstemmed Modelling and optimization of well hole cleaning using artificial intelligence techniques
title_short Modelling and optimization of well hole cleaning using artificial intelligence techniques
title_sort modelling and optimization of well hole cleaning using artificial intelligence techniques
topic Artificial intelligence
Petroleum engineering
Hole cleaning index
Genetic algorithm
url https://doi.org/10.1007/s42452-024-06415-x
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AT gkavitha modellingandoptimizationofwellholecleaningusingartificialintelligencetechniques