Enhanced petrophysical evaluation through machine learning and well logging data in an Iranian oil field

被引:0
|
作者
Mirghaed, Bahareh Rezaei [1 ]
Monfared, Abolfazl Dehghan [1 ]
Ranjbar, Ali [1 ]
机构
[1] Persian Gulf Univ, Fac Petr Gas & Petrochem Engn, Dept Petr Engn, Bushehr 7516913817, Iran
来源
SCIENTIFIC REPORTS | 2024年 / 14卷 / 01期
关键词
Petrophysical evaluation; Reservoir characterization; Well logging data; Machine-learning methods; Limestone formation; WATER SATURATION; PREDICTION; RESERVOIRS; ALGORITHM; POROSITY; ANFIS; LOGS;
D O I
10.1038/s41598-024-80362-w
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Reservoir petrophysical assessments are essential for determining hydrocarbon reserves, production, and characterizing reservoir layers. Advanced logging technology identifies crucial petrophysical parameters, including porosity type, rock pore size and type, and static/dynamic properties. The aim of this study is to present a petrophysical evaluation of the studied reservoir and to identify the reservoir layers by calculating and determining petrophysical indicators using well logging data. Additionally, various machine learning methods, including Adaptive Neuro-Fuzzy Inference System, Extreme Learning Machine, Multi Gene Genetic Programming, Decision Tree, and Adaptive Boosting, were compared to model the water saturation data according to different logs. The investigated depth ranged from 4050.6 to 4560 m, with each image containing over 3000 data at the desired depth. The main lithology of the formation was limestone with some shale. By conducting a petrophysical evaluation and applying parameter cutoffs, productive zones within the reservoir were identified. Layer 3 had the highest average net porosity (18%) and net water saturation (17%), with secondary porosity observed in most layers. Among the machine learning models tested the AdaBoost model demonstrated the lowest error value for estimating water saturation, with an RMSE of 0.0152 and an AARE% of 3.1610, establishing it as the most effective model in this study. Furthermore, the GP model provided a correlation between the input parameters and predicted water saturation, demonstrating good accuracy with an RMSE of 0.0231 and an AARE of 4.3597.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] ADVANCED PETROPHYSICAL INTERPRETATION OF NUCLEAR WELL LOGGING DATA
    KOZHEVNIKOV, DA
    LAZUTKINA, NY
    NUCLEAR GEOPHYSICS, 1995, 9 (02): : 83 - 97
  • [2] A machine learning approach to predict drilling rate using petrophysical and mud logging data
    Mohammad Sabah
    Mohsen Talebkeikhah
    David A. Wood
    Rasool Khosravanian
    Mohammad Anemangely
    Alireza Younesi
    Earth Science Informatics, 2019, 12 : 319 - 339
  • [3] A machine learning approach to predict drilling rate using petrophysical and mud logging data
    Sabah, Mohammad
    Talebkeikhah, Mohsen
    Wood, David A.
    Khosravanian, Rasool
    Anemangely, Mohammad
    Younesi, Alireza
    EARTH SCIENCE INFORMATICS, 2019, 12 (03) : 319 - 339
  • [4] Machine Learning Algorithms for Classification Geology Data from Well Logging
    Merembayev, Timur
    Yunussov, Rassul
    Yedilkhan, Amirgaliyev
    2018 14TH INTERNATIONAL CONFERENCE ON ELECTRONICS COMPUTER AND COMPUTATION (ICECCO), 2018,
  • [5] Wavelet analysis of well-logging data in petrophysical and stratigraphic correlation
    Zhang Rongxi
    2015 IEEE INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND COMMUNICATION TECHNOLOGY CICT 2015, 2015, : 18 - 21
  • [6] OIL WELL LOGGING - AN OPPORTUNE FIELD FOR THE PHYSICIST
    HADEN, HJ
    AMERICAN JOURNAL OF PHYSICS, 1949, 17 (06) : 368 - 375
  • [7] Petrophysical Software for Interpreting Integrated Well-Logging Data Based on Spectrometric Gamma-Logging
    Korost, D. V.
    Kalmykov, G. A.
    Reshetov, E. V.
    Belokhin, V. S.
    MOSCOW UNIVERSITY GEOLOGY BULLETIN, 2009, 64 (02) : 130 - 137
  • [8] Petrophysical software for interpreting integrated well-logging data based on spectrometric gamma-logging
    D. V. Korost
    G. A. Kalmykov
    E. V. Reshetov
    V. S. Belokhin
    Moscow University Geology Bulletin, 2009, 64 (2) : 130 - 137
  • [9] Porosity prediction of tight reservoir rock using well logging data and machine learning
    Yawen He
    Hongjun Zhang
    Zhiyu Wu
    Hongbo Zhang
    Xin Zhang
    Xiaojing Zhuo
    Xiaoli Song
    Sha Dai
    Wei Dang
    Scientific Reports, 15 (1)
  • [10] Well logging verification using machine learning algorithms
    Tsanda, A.
    Bukharev, A.
    Budennyy, S.
    Andrianova, A.
    2018 INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE: APPLICATIONS AND INNOVATIONS (IC-AIAI), 2018, : 75 - 77