Machine learning algorithm for prediction of stuck pipe incidents using statistical data: case study in middle east oil fields

被引:0
|
作者
Behzad Elahifar
Erfan Hosseini
机构
[1] Norwegian University of Science and Technology (NTNU),Department of Geoscience and Petroleum
[2] Oil Industries Engineering and Construction Company (OIEC Group),undefined
关键词
Stuck pipe; Particle swarm optimization; Directional wells; Daily drilling reports; Artificial intelligence technology;
D O I
暂无
中图分类号
学科分类号
摘要
One of the most troublesome issues in the drilling industry is stuck drill pipes. Drilling activities will be costly and time-consuming due to stuck pipe issues. As a result, predicting a stuck pipe can be more useful. This study aims to use an artificial intelligence technology called hybrid particle swarm optimization neural network (PSO-based ANN) to predict the probability of a stuck pipe in a Middle East oil field. In this field, a total of 85 wells were investigated. Therefore, to predict this problem, we must examine and determine the role of drilling parameters by creating an appropriate model. In this case, an artificial neural network is used to solve and model the problem. In this way, by processing the parameters of wells with and without being stuck in this field, the stuck or non-stuck of drilling pipes in future wells is predicted. To create a PSO-based ANN model database, mud characteristics, geometry, hydraulic, and drilling parameters were gathered from well daily drilling reports. In addition, two databases for directional and vertical wells were established. There are two types of datasets used for each database: stuck and non-stuck. It was discovered that the PSO-based ANN model could predict the incidence of a stuck pipe with an accuracy of over 80% for both directional and vertical wells. This study divided data from several cases into four sections: 17 ½″, 12 ¼″, 8 ½″, and 6 1/8″. The key reasons for sticking and the mechanics have been thoroughly investigated for each section. The methodology presented in this paper enables the Middle East drilling industry to estimate the risk of stuck pipe occurrence during the well planning procedure.
引用
收藏
页码:2019 / 2045
页数:26
相关论文
共 50 条
  • [31] House Price Prediction using Machine Learning Algorithm - The Case of Karachi City, Pakistan
    Ahtesham, Maida
    Bawany, Narmeen Zakaria
    Fatima, Kiran
    2020 21ST INTERNATIONAL ARAB CONFERENCE ON INFORMATION TECHNOLOGY (ACIT), 2020,
  • [32] Prediction of dengue incidents using hospitalized patients, metrological and socio-economic data in Bangladesh: A machine learning approach
    Dey, Samrat Kumar
    Rahman, Md Mahbubur
    Howlader, Arpita
    Siddiqi, Umme Raihan
    Uddin, Khandaker Mohammad Mohi
    Borhan, Rownak
    Rahman, Elias Ur
    PLOS ONE, 2022, 17 (07):
  • [33] Real-time prediction of pore pressure gradient through an artificial intelligence approach: a case study from one of middle east oil fields
    Keshavarzi, R.
    Jahanbakhshi, R.
    EUROPEAN JOURNAL OF ENVIRONMENTAL AND CIVIL ENGINEERING, 2013, 17 (08) : 675 - 686
  • [34] Sequential Data Approach for Rate of Penetration Prediction Using Machine Learning Models: A Case Study the Offshore Volve Oil Field, North Sea, Norway
    Pakawatthapana, Yanadade
    Khonthapagdee, Subhorn
    PROCEEDINGS OF THE 20TH INTERNATIONAL CONFERENCE ON COMPUTING AND INFORMATION TECHNOLOGY, IC2IT 2024, 2024, 973 : 121 - 130
  • [35] Prediction of Thermogravimetric Data for Asphaltenes Extracted from Deasphalted Oil Using Machine Learning Techniques
    Sivaramakrishnan, Kaushik
    Tannous, Joy H.
    Chandrasekaran, Vignesh
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2023, 62 (43) : 17787 - 17804
  • [36] Prediction of spontaneous preterm birth using supervised machine learning on metabolomic data: A case-cohort study
    Al Ghadban, Yasmina
    Du, Yuheng
    Charnock-Jones, D. Stephen
    Garmire, Lana X.
    Smith, Gordon C. S.
    Sovio, Ulla
    BJOG-AN INTERNATIONAL JOURNAL OF OBSTETRICS AND GYNAECOLOGY, 2024, 131 (07) : 908 - 916
  • [37] Prediction of future gastric cancer risk using a machine learning algorithm and comprehensive medical check-up data: A case-control study
    Junichi Taninaga
    Yu Nishiyama
    Kazutoshi Fujibayashi
    Toshiaki Gunji
    Noriko Sasabe
    Kimiko Iijima
    Toshio Naito
    Scientific Reports, 9
  • [38] Prediction of future gastric cancer risk using a machine learning algorithm and comprehensive medical check-up data: A case-control study
    Taninaga, Junichi
    Nishiyama, Yu
    Fujibayashi, Kazutoshi
    Gunji, Toshiaki
    Sasabe, Noriko
    Iijima, Kimiko
    Naito, Toshio
    SCIENTIFIC REPORTS, 2019, 9 (1)
  • [39] A Study of Disease Prediction on Weighted Symptom Data Using Deep Learning and Machine Learning Algorithms
    Colak, Melike
    Sivri, Talya Tumer
    Akman, Nergis Pervan
    Berkol, Ali
    Ekici, Yahya
    2022 INTERNATIONAL CONFERENCE ON THEORETICAL AND APPLIED COMPUTER SCIENCE AND ENGINEERING (ICTASCE), 2022, : 116 - 119
  • [40] Revisiting CVD Risk Prediction Using Machine Learning Approaches: A Case Study
    Dashti, Hesam
    Liu, Yanyan
    Glynn, Robert J.
    Ridker, Paul M.
    Mora, Samia
    Demler, Olga
    CIRCULATION, 2020, 141