Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells
In sucker-rod pumping wells, due to the lack of an early diagnosis of operating condition or sensor faults, several problems can go unnoticed. These problems can increase downtime and production loss. In these wells, the diagnosis of operation conditions is carried out through downhole dynamometer c...
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doaj-64ffd011072d4f06b25bb6a9a95b250a2021-07-15T15:45:53ZengMDPI AGSensors1424-82202021-07-01214546454610.3390/s21134546Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping WellsJoão Nascimento0André Maitelli1Carla Maitelli2Anderson Cavalcanti3Federal Institute of Education, Science and Technology of Rio Grande do Norte (IFRN), Parnamirim 59143-455, BrazilDepartment of Computer and Automation Engineering (DCA), Federal University of Rio Grande do Norte (UFRN), Natal 59078-970, BrazilDepartment of Petroleum Engineering (DPET), Federal University of Rio Grande do Norte (UFRN), Natal 59078-970, BrazilDepartment of Computer and Automation Engineering (DCA), Federal University of Rio Grande do Norte (UFRN), Natal 59078-970, BrazilIn sucker-rod pumping wells, due to the lack of an early diagnosis of operating condition or sensor faults, several problems can go unnoticed. These problems can increase downtime and production loss. In these wells, the diagnosis of operation conditions is carried out through downhole dynamometer cards, via pre-established patterns, with human visual effort in the operation centers. Starting with machine learning algorithms, several papers have been published on the subject, but it is still common to have doubts concerning the difficulty level of the dynamometer card classification task and best practices for solving the problem. In the search for answers to these questions, this work carried out sixty tests with more than 50,000 dynamometer cards from 38 wells in the Mossoró, RN, Brazil. In addition, it presented test results for three algorithms (decision tree, random forest and XGBoost), three descriptors (Fourier, wavelet and card load values), as well as pipelines provided by automated machine learning. Tests with and without the tuning of hypermeters, different levels of dataset balancing and various evaluation metrics were evaluated. The research shows that it is possible to detect sensor failures from dynamometer cards. Of the results that will be presented, 75% of the tests had an accuracy above 92% and the maximum accuracy was 99.84%.https://www.mdpi.com/1424-8220/21/13/4546sucker-rod pumpingmachine learning algorithmsdynamometer cardpetroleum industry |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
João Nascimento André Maitelli Carla Maitelli Anderson Cavalcanti |
spellingShingle |
João Nascimento André Maitelli Carla Maitelli Anderson Cavalcanti Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells Sensors sucker-rod pumping machine learning algorithms dynamometer card petroleum industry |
author_facet |
João Nascimento André Maitelli Carla Maitelli Anderson Cavalcanti |
author_sort |
João Nascimento |
title |
Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells |
title_short |
Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells |
title_full |
Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells |
title_fullStr |
Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells |
title_full_unstemmed |
Diagnostic of Operation Conditions and Sensor Faults Using Machine Learning in Sucker-Rod Pumping Wells |
title_sort |
diagnostic of operation conditions and sensor faults using machine learning in sucker-rod pumping wells |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2021-07-01 |
description |
In sucker-rod pumping wells, due to the lack of an early diagnosis of operating condition or sensor faults, several problems can go unnoticed. These problems can increase downtime and production loss. In these wells, the diagnosis of operation conditions is carried out through downhole dynamometer cards, via pre-established patterns, with human visual effort in the operation centers. Starting with machine learning algorithms, several papers have been published on the subject, but it is still common to have doubts concerning the difficulty level of the dynamometer card classification task and best practices for solving the problem. In the search for answers to these questions, this work carried out sixty tests with more than 50,000 dynamometer cards from 38 wells in the Mossoró, RN, Brazil. In addition, it presented test results for three algorithms (decision tree, random forest and XGBoost), three descriptors (Fourier, wavelet and card load values), as well as pipelines provided by automated machine learning. Tests with and without the tuning of hypermeters, different levels of dataset balancing and various evaluation metrics were evaluated. The research shows that it is possible to detect sensor failures from dynamometer cards. Of the results that will be presented, 75% of the tests had an accuracy above 92% and the maximum accuracy was 99.84%. |
topic |
sucker-rod pumping machine learning algorithms dynamometer card petroleum industry |
url |
https://www.mdpi.com/1424-8220/21/13/4546 |
work_keys_str_mv |
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