This study presents machine learning models that forecast and categorize lost circulation severity preemptively using a large class imbalanced drilling dataset. We demonstrate reproducible core techniques involved in tackling a large drilling engineering challenge utilizing easily interpretable machine learning approaches. We utilized a 65,000+ records data with class imbalance problem from Azadegan oilfield formations in Iran. Eleven of the dataset's seventeen parameters are chosen to be used in the classification of five lost circulation events. To generate classification models, we used six basic machine learning algorithms and four ensemble learning methods. Linear Discriminant Analysis (LDA), Logistic Regression (LR), Support Vector ...
Fluid loss to subsurface formations is a challenging aspect during drilling operations in petroleum ...
Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result...
Equivalent circulation density (ECD) is one of the most important parameters that should be consider...
In this study, we present machine learning classification models that forecast and categorize los...
Abstract In this paper, we present how precise deep learning algorithms can distinguish loss circula...
Drilling soft and fragile areas such as high permeable, cavernous, fractured, and sandy formations a...
Recently, artificial intelligence has gain popularity in the drilling industry since more wells are ...
Lost circulation costs are a significant expense in drilling oil and gas wells. Drilling anywhere in...
Machine learning methods have been applied to predict depths of fluid loss in hydrocarbon exploratio...
Lost circulation is a very expensive drilling problem and very common in highly permeable formations...
Lost circulation is a complicated problem to be predicted with conventional statistical tools. As th...
Drilling operations for oil and gas extraction is a complex and risky process. Workers are not able ...
Drilling operations for oil and gas extraction is a complex and risky process. Workers are not able ...
A major cause of some of serious issues encountered in a drilling project, including wellbore instab...
Wells drilled in the Rumaila field are highly susceptible to lost circulation problems when drilling...
Fluid loss to subsurface formations is a challenging aspect during drilling operations in petroleum ...
Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result...
Equivalent circulation density (ECD) is one of the most important parameters that should be consider...
In this study, we present machine learning classification models that forecast and categorize los...
Abstract In this paper, we present how precise deep learning algorithms can distinguish loss circula...
Drilling soft and fragile areas such as high permeable, cavernous, fractured, and sandy formations a...
Recently, artificial intelligence has gain popularity in the drilling industry since more wells are ...
Lost circulation costs are a significant expense in drilling oil and gas wells. Drilling anywhere in...
Machine learning methods have been applied to predict depths of fluid loss in hydrocarbon exploratio...
Lost circulation is a very expensive drilling problem and very common in highly permeable formations...
Lost circulation is a complicated problem to be predicted with conventional statistical tools. As th...
Drilling operations for oil and gas extraction is a complex and risky process. Workers are not able ...
Drilling operations for oil and gas extraction is a complex and risky process. Workers are not able ...
A major cause of some of serious issues encountered in a drilling project, including wellbore instab...
Wells drilled in the Rumaila field are highly susceptible to lost circulation problems when drilling...
Fluid loss to subsurface formations is a challenging aspect during drilling operations in petroleum ...
Stuck pipe incidents are one of the contributors to non-productive time (NPT), where they can result...
Equivalent circulation density (ECD) is one of the most important parameters that should be consider...