Predictive maintenance for offshore oil wells by means of deep learning features extraction

被引:10
作者
Gatta, Federico [1 ]
Giampaolo, Fabio [1 ]
Chiaro, Diletta [1 ]
Piccialli, Francesco [1 ]
机构
[1] Univ Naples Federico II, Dept Math & Applicat R Caccioppoli, Naples, Italy
关键词
3 W dataset; AutoEncoder; convolutional neural networks; industry; 4; 0; machine learning; KEY GENETIC ALGORITHM; FAULT-DIAGNOSIS; DECISION TREE; PROGNOSTICS; LINE;
D O I
10.1111/exsy.13128
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Nowadays, the great diffusion of the Internet of Things and the improvements in Artificial Intelligence techniques have given a rise in the development and application of data-driven approaches for Predictive Maintenance to reduce the costs linked to the maintenance of industrial machinery. Due to the wide real-life applications and the strong interest by even more industries, this field is highly attractive for academics and practitioners. So, constructing efficient frameworks to address the Predictive Maintenance problem is an open debate. In this work, we propose a Deep Learning approach for the feature extraction in the offshore oil wells monitoring context, exploiting the public 3 W dataset, which is well-known in the literature. The dataset is made up of about 2000 multivariate time series labelled according to the corresponding functioning of the well. So, there is a classification task with eight classes, each related to a particular machinery condition. Thanks to the peculiarities of the labels, the proposed framework is valid both for diagnostics and prognostics. In more detail, we compare two different approaches in feature extraction. The first is a statistical approach, widely used in the literature related to the considered dataset; the second is based on Convolutional 1D AutoEncoder. The extracted features are then used as input for several Machine Learning algorithms, namely the Random Forest, Nearest Neighbours, Gaussian Naive Bayes and Quadratic Discriminant Analysis. Different experiments on various time horizons prove the worthiness of the Convolutional AutoEncoder.
引用
收藏
页数:13
相关论文
共 50 条
[31]   Multi-features extraction based on deep learning for skin lesion classification [J].
Benyahia, Samia ;
Meftah, Boudjelal ;
Lezoray, Olivier .
TISSUE & CELL, 2022, 74
[32]   A rare failure detection model for aircraft predictive maintenance using a deep hybrid learning approach [J].
Dangut, Maren David ;
Jennions, Ian K. ;
King, Steve ;
Skaf, Zakwan .
NEURAL COMPUTING & APPLICATIONS, 2023, 35 (04) :2991-3009
[33]   A rare failure detection model for aircraft predictive maintenance using a deep hybrid learning approach [J].
Maren David Dangut ;
Ian K. Jennions ;
Steve King ;
Zakwan Skaf .
Neural Computing and Applications, 2023, 35 :2991-3009
[34]   Scaling Up Deep Learning Based Predictive Maintenance for Commercial Machine Fleets: a Case Study [J].
Ulmer, Markus ;
Zgraggen, Jannik ;
Pizza, Gianmarco ;
Huber, Lilach Goren .
2022 9TH SWISS CONFERENCE ON DATA SCIENCE (SDS), 2022, :40-46
[35]   Unsupervised machine learning model for predicting anomalies in subsurface safety valves and application in offshore wells during oil production [J].
Pedro Esteves Aranha ;
Nara Angelica Policarpo ;
Marcio Augusto Sampaio .
Journal of Petroleum Exploration and Production Technology, 2024, 14 :567-581
[36]   Unsupervised machine learning model for predicting anomalies in subsurface safety valves and application in offshore wells during oil production [J].
Aranha, Pedro Esteves ;
Policarpo, Nara Angelica ;
Sampaio, Marcio Augusto .
JOURNAL OF PETROLEUM EXPLORATION AND PRODUCTION TECHNOLOGY, 2024, 14 (02) :567-581
[37]   Deep Learning Enhanced Feature Extraction of Potholes Using Vision and LiDAR Data for Road Maintenance [J].
Karukayil, Abhiram ;
Quail, Christopher ;
Cheein, Fernando Auat .
IEEE ACCESS, 2024, 12 :184541-184549
[38]   The role of deep learning and radiomic feature extraction in cancer-specific predictive modelling: a review [J].
Vial, Alanna ;
Stirling, David ;
Field, Matthew ;
Ros, Montserrat ;
Ritz, Christian ;
Carolan, Martin ;
Holloway, Lois ;
Miller, Alexis A. .
TRANSLATIONAL CANCER RESEARCH, 2018, 7 (03) :803-816
[39]   A dynamic predictive maintenance approach using probabilistic deep learning for a fleet of multi-component systems [J].
Zeng, Junqi ;
Liang, Zhenglin .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2023, 238
[40]   Diagnosing COVID-19 in Chest X-ray Images based on Deep Learning: Transfer Learning versus Deep Features Extraction [J].
Daoud, Mohammad, I ;
Elmuhtadi, Wajdi ;
Faidi, Mohammad ;
Alrahahleh, Yara ;
Abdel-Rahman, Samir ;
Al-Ali, Aamer ;
Alsaify, Baha A. ;
Alazrai, Rami .
2022 13TH INTERNATIONAL CONFERENCE ON INFORMATION AND COMMUNICATION SYSTEMS (ICICS), 2022, :246-251