Data–driven decision–making for lost circulation treatments: A machine learning approach

Lost circulation is an expensive and critical problem in the drilling operations. Millions of dollars are spent every year to mitigate or stop this problem. In this work, data from over 3000 wells were collected from multiple sources. The data went through a processing step where all outliers were r...

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Main Authors: Husam H. Alkinani, Abo Taleb T. Al-Hameedi, Shari Dunn-Norman
Format: Article
Language:English
Published: Elsevier 2020-11-01
Series:Energy and AI
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666546820300318
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spelling doaj-f887bfa5a19b4c26917af4e06a7ae5792020-12-13T04:19:54ZengElsevierEnergy and AI2666-54682020-11-012100031Data–driven decision–making for lost circulation treatments: A machine learning approachHusam H. Alkinani0Abo Taleb T. Al-Hameedi1Shari Dunn-Norman2Corresponding authors.; Missouri University of Science and Technology, 1201 N State St, Rolla, MO 65409, USACorresponding authors.; Missouri University of Science and Technology, 1201 N State St, Rolla, MO 65409, USAMissouri University of Science and Technology, 1201 N State St, Rolla, MO 65409, USALost circulation is an expensive and critical problem in the drilling operations. Millions of dollars are spent every year to mitigate or stop this problem. In this work, data from over 3000 wells were collected from multiple sources. The data went through a processing step where all outliers were removed and decision rules were set up. Multiple machine learning methods (support vector machine, decision trees, logistic regression, artificial neural networks, and ensemble trees) were used to create a model that can predict the best lost circulation treatment based on the type of loss and the reason of loss. 5-fold cross-validation was conducted to ensure no overfitting in the created model. After using all the aforementioned machine learning methods to train models to choose the best lost circulation treatment, overall, the results showed that support vector machine had the highest accuracy among the other algorithms. Thus, it was selected to train the model. The created model went through quality control/quality assurance (QC/QA) to limit the results of incorrect classification. Two treatments were suggested to treat partial loss, four to treat severe loss, and seven for complete loss, based on the reason of loss. In addition, a formalized methodology to respond to lost circulation was provided to help the drilling personnel handling lost circulation in the field.http://www.sciencedirect.com/science/article/pii/S2666546820300318Machine learningLost circulationData-drivenClassification
collection DOAJ
language English
format Article
sources DOAJ
author Husam H. Alkinani
Abo Taleb T. Al-Hameedi
Shari Dunn-Norman
spellingShingle Husam H. Alkinani
Abo Taleb T. Al-Hameedi
Shari Dunn-Norman
Data–driven decision–making for lost circulation treatments: A machine learning approach
Energy and AI
Machine learning
Lost circulation
Data-driven
Classification
author_facet Husam H. Alkinani
Abo Taleb T. Al-Hameedi
Shari Dunn-Norman
author_sort Husam H. Alkinani
title Data–driven decision–making for lost circulation treatments: A machine learning approach
title_short Data–driven decision–making for lost circulation treatments: A machine learning approach
title_full Data–driven decision–making for lost circulation treatments: A machine learning approach
title_fullStr Data–driven decision–making for lost circulation treatments: A machine learning approach
title_full_unstemmed Data–driven decision–making for lost circulation treatments: A machine learning approach
title_sort data–driven decision–making for lost circulation treatments: a machine learning approach
publisher Elsevier
series Energy and AI
issn 2666-5468
publishDate 2020-11-01
description Lost circulation is an expensive and critical problem in the drilling operations. Millions of dollars are spent every year to mitigate or stop this problem. In this work, data from over 3000 wells were collected from multiple sources. The data went through a processing step where all outliers were removed and decision rules were set up. Multiple machine learning methods (support vector machine, decision trees, logistic regression, artificial neural networks, and ensemble trees) were used to create a model that can predict the best lost circulation treatment based on the type of loss and the reason of loss. 5-fold cross-validation was conducted to ensure no overfitting in the created model. After using all the aforementioned machine learning methods to train models to choose the best lost circulation treatment, overall, the results showed that support vector machine had the highest accuracy among the other algorithms. Thus, it was selected to train the model. The created model went through quality control/quality assurance (QC/QA) to limit the results of incorrect classification. Two treatments were suggested to treat partial loss, four to treat severe loss, and seven for complete loss, based on the reason of loss. In addition, a formalized methodology to respond to lost circulation was provided to help the drilling personnel handling lost circulation in the field.
topic Machine learning
Lost circulation
Data-driven
Classification
url http://www.sciencedirect.com/science/article/pii/S2666546820300318
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AT abotalebtalhameedi datadrivendecisionmakingforlostcirculationtreatmentsamachinelearningapproach
AT sharidunnnorman datadrivendecisionmakingforlostcirculationtreatmentsamachinelearningapproach
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