Prediction of the equivalent circulation density using machine learning algorithms based on real-time data

被引:1
作者
Kandil, Abdelrahman [1 ]
Khaled, Samir [2 ]
Elfakharany, Taher [2 ]
机构
[1] Future Univ Egypt FUE, Fac Engn & Technol, Dept Petr Engn, Cairo 11835, Egypt
[2] Al Azhar Univ, Fac Engn, Dept Min & Petr Engn, Cairo 11835, Egypt
关键词
Equivalent circulation density (ECD); artificial intelligence (AI); drilling wells; artificial neural networks (ANN); real-time data; NEURAL-NETWORKS;
D O I
10.3934/energy.2023023
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Equivalent circulation density (ECD) is one of the most important parameters that should be considered while designing drilling programs. With increasing the wells' deep, offshore hydrocarbon extraction, the costly daily rate of downhole measurements, operating restrictions, and the fluctuations in the global market prices, it is necessary to reduce the non-productive time and costs associated with hole problems resulting from ignoring and incorrect evaluation of ECD. Therefore, optimizing ECD and selecting the best drilling parameters are curial tasks in such operations. The main objective of this work is to predict ECD using three machine learning algorithms: an artificial neural network (ANN) with a Levenberg-Marquardt backpropagation algorithm, a K neighbors regressor (knn), and a passive aggressive regressor (par). These models are based on 14 critical operation parameters that have been provided by downhole sensors during drilling operations such as annular pressure, annular temperature, and rate of penetration, etc. In the study, 4663 data points were selected and included, where 80% to 85% of the data set has been used for training and validation according to the algorithm, and the remaining data points were reserved for testing. In addition, several statistical tests were used to evaluate the accuracy of the models, including root mean square error (RMSE), correlation coefficient (R2), and mean squared error (MSE). The results of the developed models show various consistencies and accuracy, while the ANN shows a high accuracy with an R2 of nearly 0.999 for the training, validation, and testing, as well as the overall of them. The RMSE is 0.000211, 0.000253, 0.00293, and 0.00315 for overall, training, validation, and testing, respectively. This work expands the use of artificial intelligence in the gas and oil industry. The developed ANN model is more flexible in response to challenges, reduces dependence on humans, and thus, reduces the chance of human omission, as well as increasing the efficiency of operations.
引用
收藏
页码:425 / 453
页数:29
相关论文
共 50 条
[41]   An LSTM-Based Method Considering History and Real-Time Data for Passenger Flow Prediction [J].
Ouyang, Qi ;
Lv, Yongbo ;
Ma, Jihui ;
Li, Jing .
APPLIED SCIENCES-BASEL, 2020, 10 (11)
[42]   Hybrid traffic prediction scheme for intelligent transportation systems based on historical and real-time data [J].
Xie, Jiaming ;
Choi, Yi-King .
INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS, 2017, 13 (11)
[43]   A NOVEL APPROACH TO REAL-TIME RANGE ESTIMATION OF UNDERWATER ACOUSTIC SOURCES USING SUPERVISED MACHINE LEARNING [J].
Houegnigan, Ludwig ;
Safari, Pooyan ;
Nadeu, Climent ;
van der Schaar, Mike ;
Andre, Michel .
OCEANS 2017 - ABERDEEN, 2017,
[44]   Real-Time 3D Routing Optimization for Unmanned Aerial Vehicle using Machine Learning [J].
Mishra, Priya ;
Boopal, Balaji ;
Mishra, Naveen .
EAI ENDORSED TRANSACTIONS ON SCALABLE INFORMATION SYSTEMS, 2024, 11 (06) :1-8
[45]   Solution Gas/Oil Ratio Prediction from Pressure/Volume/Temperature Data Using Machine Learning Algorithms [J].
Majid, Asia ;
Mwakipunda, Grant Charles ;
Guo, Chaohua .
SPE JOURNAL, 2024, 29 (02) :999-1014
[46]   Schedulability Analysis of Deferrable Scheduling Algorithms for Maintaining Real-Time Data Freshness [J].
Han, Song ;
Chen, Deji ;
Xiong, Ming ;
Lam, Kam-Yiu ;
Mok, Aloysius K. ;
Ramamritham, Krithi .
IEEE TRANSACTIONS ON COMPUTERS, 2014, 63 (04) :979-994
[47]   Comparative evaluation of Machine Learning algorithms and Physical based models for the prediction of Vessel Speed in real life applications. [J].
Alexiou, Kiriakos ;
Pariotis, Efthimios G. ;
Zannis, Theodoros C. ;
Polyzos, Stylianos ;
Leligou, Helen C. .
25TH PAN-HELLENIC CONFERENCE ON INFORMATICS WITH INTERNATIONAL PARTICIPATION (PCI2021), 2021, :442-447
[48]   ONLINE QUALITY MONITORING OF PLASTIC PARTS USING REAL-TIME DATA FROM AN INJECTION MOLDING MACHINE [J].
Loftis, Jonathan ;
Farahani, Saeed ;
Pilla, Srikanth .
PROCEEDINGS OF THE ASME 2020 15TH INTERNATIONAL MANUFACTURING SCIENCE AND ENGINEERING CONFERENCE (MSEC2020), VOL 1B, 2020,
[49]   Prediction of Density and Viscosity of Biofuel Compounds Using Machine Learning Methods [J].
Saldana, Diego Alonso ;
Starck, Laurie ;
Mougin, Pascal ;
Rousseau, Bernard ;
Ferrando, Nicolas ;
Creton, Benoit .
ENERGY & FUELS, 2012, 26 (04) :2416-2426
[50]   Predicting Benzene Concentration Using Machine Learning and Time Series Algorithms [J].
Menendez Garcia, Luis Alfonso ;
Sanchez Lasheras, Fernando ;
Garcia Nieto, Paulino Jose ;
Alvarez de Prado, Laura ;
Bernardo Sanchez, Antonio .
MATHEMATICS, 2020, 8 (12) :1-21