Production processes optimization through machine learning methods based on geophysical monitoring data

被引:3
|
作者
Osipov, A. V. [1 ]
Pleshakova, E. S. [1 ]
Gataullin, S. T. [1 ]
机构
[1] MIREA Russian Technol Univ, Vernadsky Ave 78, Moscow 119454, Russia
关键词
robotics; artificial intelligence; neural networks; engineering; CapsNet; geophysi- cal monitoring; drilling optimization;
D O I
10.18287/2412-6179-CO-1373
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
The purpose of the article is to create an effective method for low-delay monitoring of the operating state of a drill string and a drill bit without interfering with the proper drilling process. For the drilling process to be continuously controlled, an experimental setup that operates by utilizing the phase-metric method of control was developed. Any movement of the bit causes a change in the electrical characteristics of the probing signal. To obtain a stable signal from a bit immersion depth of up to 250 m, a frequency of probing electrical signals of 166 Hz and an amplitude of up to 500 V were used; the sampling rate of an analog-to-digital converter (ADC) was 10101 Hz. To identify the state of the drill string and the bit based on graphs of time-dependences of changes in the probing signal electrical characteristics, the present authors investigated a number of deep learning methods. Based on the results of the study, a series of capsular neural network methods ( CapsNet ) was chosen. The authors developed modifications of 2D-CapsNet: windowed Fourier transform (WFT)- 2D-CapsNet and frequency slice wavelet transform (FSWT)- 2DCapsNet. Both of these methods showed a 99 % accuracy in determining the transition between two layers of rocks with different properties, which is 2 - 3 % higher than the currently used measurement-while-drilling (MWD) and logging-while-drilling (LWD) rock surveys. Both of these methods unambiguously reveal self-oscillations in the drill string. When determining a fully serviceable bit in the case of self-oscillations, the (FSWT)- 2D-CapsNet method showed an accuracy of 99 %.
引用
收藏
页码:633 / 642
页数:11
相关论文
共 50 条
  • [1] Machine Learning Methods Based on Geophysical Monitoring Data in Low Time Delay Mode for Drilling Optimization
    Osipov, Alexey
    Pleshakova, Ekaterina
    Bykov, Artem
    Kuzichkin, Oleg
    Surzhik, Dmitry
    Suvorov, Stanislav
    Gataullin, Sergey
    IEEE ACCESS, 2023, 11 : 60349 - 60364
  • [2] A review of machine learning for the optimization of production processes
    Weichert, Dorina
    Link, Patrick
    Stoll, Anke
    Rüping, Stefan
    Ihlenfeldt, Steffen
    Wrobel, Stefan
    International Journal of Advanced Manufacturing Technology, 2019, 104 (5-8): : 1889 - 1902
  • [3] A review of machine learning for the optimization of production processes
    Dorina Weichert
    Patrick Link
    Anke Stoll
    Stefan Rüping
    Steffen Ihlenfeldt
    Stefan Wrobel
    The International Journal of Advanced Manufacturing Technology, 2019, 104 : 1889 - 1902
  • [4] A review of machine learning for the optimization of production processes
    Weichert, Dorina
    Link, Patrick
    Stoll, Anke
    Rueping, Stefan
    Ihlenfeldt, Steffen
    Wrobel, Stefan
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 104 (5-8): : 1889 - 1902
  • [5] Evaluation of machine learning methods for lithology classification using geophysical data
    Bressan, Thiago Santi
    de Souza, Marcelo Kehl
    Girelli, Tiago J.
    Chemale Junior, Farid
    COMPUTERS & GEOSCIENCES, 2020, 139
  • [6] Three Optimization Methods for Preprocessing Dam Safety Monitoring Data Using Machine Learning
    Jiang, Zihan
    Gu, Hao
    Fang, Yue
    Shao, Chenfei
    Lu, Xi
    Cao, Wenhan
    Wang, Jiayi
    Wu, Yan
    Zhu, Mingyuan
    STRUCTURAL CONTROL & HEALTH MONITORING, 2024, 2024 (01):
  • [7] Geophysical methods for monitoring soil stabilization processes
    Saneiyan, Sina
    Ntarlagiannis, Dimitrios
    Werkema, D. Dale, Jr.
    Ustra, Andrea
    JOURNAL OF APPLIED GEOPHYSICS, 2018, 148 : 234 - 244
  • [8] Driver Behavior Monitoring Based on Smartphone Sensor Data and Machine Learning Methods
    Lindow, Friedrich
    Kashevnik, Alexey
    PROCEEDINGS OF THE 2019 25TH CONFERENCE OF OPEN INNOVATIONS ASSOCIATION (FRUCT), 2019, : 196 - 203
  • [9] Optimization of Spatially-Coupled Multiuser Data Transmission Through Machine Learning Methods
    Zhongwei Si
    Min Jiang
    Ling Jiang
    Wireless Personal Communications, 2018, 102 : 2345 - 2362
  • [10] Monitoring soil mercury content based on hyperspectral data and machine learning methods
    Han, Lei
    Chang, Shanshan
    Chen, Rui
    Liu, Zhao
    Zhao, Yonghua
    Li, Risheng
    Xia, Longfei
    JOURNAL OF APPLIED REMOTE SENSING, 2022, 16 (02)