A Machine-Learning-Based Approach to Assistive Well-Log Correlation

被引:23
|
作者
Brazell, Seth [1 ]
Bayeh, Alex [1 ]
Ashby, Michael [1 ]
Burton, Darrin [2 ]
机构
[1] Anadarko Petr Corp, 1201 Lake Robbins Dr, The Woodlands, TX 77380 USA
[2] Geo Southern Energy, 1425 Lake Front Circle 200, The Woodlands, TX 77380 USA
来源
PETROPHYSICS | 2019年 / 60卷 / 04期
关键词
D O I
10.30632/PJV60N4-2019a1
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
The process of well-log correlation requires significant time and expertise from the interpreter, is often subjective and can be a bottleneck to many subsurface characterization workflows. Algorithmic approaches to well-to-well correlation suffer from the inherent heterogeneity of geophysical measurements in the wellbore, both from a geologic and data-quality perspective. We demonstrate a rigorous and repeatable method for well-log correlation by deploying a correlation tool that leverages a machinelearning model for pattern matching between well logs and programmed stratigraphic correlation techniques. A supervised-learning approach was used to train a novel deep convolutional neural network (CNN) architecture using over five million data samples, which were derived from thousands of well logs and expert interpreted correlations. To ensure that a robust pattern-matching model was trained, well logs from several US onshore basins with various tectonic regimes and environments of deposition were used to construct training and validation datasets. The result is a universal model for pattern matching of wireline measurements that can incorporate multiple geophysical-log signals as input data and can be deployed at scale without the need for retraining. Overall, the pattern-matching model was able to achieve a level of accuracy of 96.6% and classification area-under-the curve (AUC) of 0.954 on a separate validation dataset. The universal deep CNN is one component of the correlation tool. Algorithmic three-dimensional search logic was constructed around the deep CNN model which determines the optimal correlation and marker propagation pathway. Rules-based criteria have also been applied to the model output ensuring conformance to stratigraphic principles including preserving stratigraphic order and honoring present-day structural trends. We present several examples to highlight the strengths and weaknesses of this machine-learning-based approach to well-log correlation which can be used to efficiently generate high-density datasets for regional exploration, development mapping and reservoir characterization exercises.
引用
收藏
页码:469 / 479
页数:11
相关论文
共 50 条
  • [41] Automated Well-Log Processing and Lithology Classification by Identifying Optimal Features Through Unsupervised and Supervised Machine-Learning Algorithms
    Singh, Harpreet
    Seol, Yongkoo
    Myshakin, Evgeniy M.
    SPE JOURNAL, 2020, 25 (05): : 2778 - 2800
  • [42] A Machine-Learning-Based Approach for Natural Gas Futures Curve Modeling
    Castello, Oleksandr
    Resta, Marina
    ENERGIES, 2023, 16 (12)
  • [43] Machine-Learning-Based Predictive Handover
    Masri, Ahmed
    Veijalainen, Teemu
    Martikainen, Henrik
    Mwanje, Stephen
    Ali-Tolppa, Janne
    Kajo, Marton
    2021 IFIP/IEEE INTERNATIONAL SYMPOSIUM ON INTEGRATED NETWORK MANAGEMENT (IM 2021), 2021, : 648 - 652
  • [44] WSULOG, MICROCOMPUTER-BASED WELL-LOG EVALUATION FOR CARBONATE RESERVOIRS IN KANSAS
    LINEHAN, JM
    SUTTERLIN, PG
    COMPUTERS & GEOSCIENCES, 1986, 12 (4B) : 499 - 517
  • [45] Machine Learning Approach to Predict the Illite Weight Percent of Unconventional Reservoirs from Well-Log Data: An Example from Montney Formation, NE British Columbia, Canada
    Barham, Azzam
    Abidin, Nor Syazwani Zainal
    APPLIED SCIENCES-BASEL, 2024, 14 (01):
  • [46] Using the pair-correlation function as a tool to identify the location for shale gas/oil reservoir based on well-log data
    Gassiyev, Aslan
    Huang, Feifei
    Chesnokov, Evgeni M.
    GEOPHYSICS, 2016, 81 (02) : D91 - D109
  • [47] Bakken Stratigraphic and Type Well-Log Learning Network for Transparent Prediction and Rigorous Data Mining
    David A. Wood
    Natural Resources Research, 2020, 29 : 1329 - 1349
  • [48] Machine-learning-based approach for nonunion prediction following osteoporotic vertebral fractures
    Takahashi, Shinji
    Terai, Hidetomi
    Hoshino, Masatoshi
    Tsujio, Tadao
    Kato, Minori
    Toyoda, Hiromitsu
    Suzuki, Akinobu
    Tamai, Koji
    Yabu, Akito
    Nakamura, Hiroaki
    EUROPEAN SPINE JOURNAL, 2023, 32 (11) : 3788 - 3796
  • [50] Improving fall prediction in Parkinson's disease: A machine-learning-based approach
    Panyakaew, P.
    Pornputtapong, N.
    Bhidayasiri, R.
    MOVEMENT DISORDERS, 2020, 35 : S306 - S307