Application of machine learning in predicting oil rate decline for Bakken shale oil wells

被引:0
|
作者
Subhrajyoti Bhattacharyya
Aditya Vyas
机构
[1] Indian Institute of Technology Kharagpur,Deysarkar Centre of Excellence in Petroleum Engineering
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Commercial reservoir simulators are required to solve discretized mass-balance equations. When the reservoir becomes heterogeneous and complex, more grid blocks can be used, which requires detailed and accurate reservoir information, for e.g. porosity, permeability, and other parameters that are not always available in the field. Predicting the EUR (Estimated Ultimate Recovery) and rate decline for a single well can therefore take hours or days, making them computationally expensive and time-consuming. In contrast, decline curve models are a simpler and speedier option because they only require a few variables in the equation that can be easily gathered from the wells' current data. The well data for this study was gathered from the Montana Board of Oil and Gas Conservation's publicly accessible databases. The SEDM (Stretched Exponential Decline Model) decline curve equation variables specifically designed for unconventional reservoirs variables were correlated to the predictor parameters in a random oil field well data set. The study examined the relative influences of several well parameters. The study's novelty comes from developing an innovative machine learning (ML) (random forest (RF)) based model for fast rate-decline and EUR prediction in Bakken Shale oil wells. The successful application of this study relies highly on the availability of good quality and quantity of the dataset.
引用
收藏
相关论文
共 50 条
  • [1] Application of machine learning in predicting oil rate decline for Bakken shale oil wells
    Bhattacharyya, Subhrajyoti
    Vyas, Aditya
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [2] Production decline curve analysis of shale oil wells: A case study of Bakken, Eagle Ford and Permian
    Tang, Hui-Ying
    He, Ge
    Ni, Ying-Ying
    Huo, Da
    Zhao, Yu-Long
    Xue, Liang
    Zhang, Lie-Hui
    PETROLEUM SCIENCE, 2024, 21 (06) : 4262 - 4277
  • [3] Production decline curve analysis of shale oil wells: A case study of Bakken, Eagle Ford and Permian
    HuiYing Tang
    Ge He
    YingYing Ni
    Da Huo
    YuLong Zhao
    Liang Xue
    LieHui Zhang
    Petroleum Science, 2024, 21 (06) : 4262 - 4277
  • [4] Application of Machine Learning for Shale Oil and Gas "Sweet Spots" Prediction
    Wang, Hongjun
    Guo, Zekun
    Kong, Xiangwen
    Zhang, Xinshun
    Wang, Ping
    Shan, Yunpeng
    ENERGIES, 2024, 17 (09)
  • [5] Production Decline Curves of Tight Oil Wells in Eagle Ford Shale
    Wachtmeister, Henrik
    Lund, Linnea
    Aleklett, Kjell
    Hook, Mikael
    NATURAL RESOURCES RESEARCH, 2017, 26 (03) : 365 - 377
  • [6] Production Decline Curves of Tight Oil Wells in Eagle Ford Shale
    Henrik Wachtmeister
    Linnea Lund
    Kjell Aleklett
    Mikael Höök
    Natural Resources Research, 2017, 26 : 365 - 377
  • [7] Price Responsiveness of Shale Oil: A Bakken Case Study
    Marc H. Vatter
    Samuel A. Van Vactor
    Timothy C. Coburn
    Natural Resources Research, 2022, 31 : 713 - 734
  • [8] Price Responsiveness of Shale Oil: A Bakken Case Study
    Vatter, Marc H.
    Van Vactor, Samuel A.
    Coburn, Timothy C.
    NATURAL RESOURCES RESEARCH, 2022, 31 (01) : 713 - 734
  • [9] Explainable Machine Learning-Based Method for Fracturing Prediction of Horizontal Shale Oil Wells
    Liu, Xinju
    Zhang, Tianyang
    Yang, Huanying
    Qian, Shihao
    Dong, Zhenzhen
    Li, Weirong
    Zou, Lu
    Liu, Zhaoxia
    Wang, Zhengbo
    Zhang, Tao
    Lin, Keze
    PROCESSES, 2023, 11 (09)
  • [10] Production-Strategy Insights Using Machine Learning: Application for Bakken Shale
    Luo, Guofan
    Tian, Yao
    Bychina, Mariia
    Ehlig-Economides, Christine
    SPE RESERVOIR EVALUATION & ENGINEERING, 2019, 22 (03) : 800 - 816