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Hydraulic Flow Unit Classification and Prediction Using Machine Learning Techniques: A Case Study from the Nam Con Son Basin, Offshore Vietnam

Author

Listed:
  • Ha Quang Man

    (PetroVietnam Exploration Production Corporation, Hanoi 100000, Vietnam)

  • Doan Huy Hien

    (Vietnam Petroleum Institute, Hanoi 100000, Vietnam)

  • Kieu Duy Thong

    (Faculty of Oil and Gas, Hanoi University of Mining and Geology, Hanoi 100000, Vietnam)

  • Bui Viet Dung

    (Vietnam Petroleum Institute, Hanoi 100000, Vietnam)

  • Nguyen Minh Hoa

    (Faculty of Oil and Gas, Hanoi University of Mining and Geology, Hanoi 100000, Vietnam)

  • Truong Khac Hoa

    (PetroVietnam Exploration Production Corporation, Hanoi 100000, Vietnam)

  • Nguyen Van Kieu

    (Faculty of Geology, Geophysics and Environmental Protection, AGH University of Science and Technology, 30-059 Krakow, Poland)

  • Pham Quy Ngoc

    (Vietnam Petroleum Institute, Hanoi 100000, Vietnam)

Abstract

The test study area is the Miocene reservoir of Nam Con Son Basin, offshore Vietnam. In the study we used unsupervised learning to automatically cluster hydraulic flow units (HU) based on flow zone indicators (FZI) in a core plug dataset. Then we applied supervised learning to predict HU by combining core and well log data. We tested several machine learning algorithms. In the first phase, we derived hydraulic flow unit clustering of porosity and permeability of core data using unsupervised machine learning methods such as Ward’s, K mean, Self-Organize Map (SOM) and Fuzzy C mean (FCM). Then we applied supervised machine learning methods including Artificial Neural Networks (ANN), Support Vector Machines (SVM), Boosted Tree (BT) and Random Forest (RF). We combined both core and log data to predict HU logs for the full well section of the wells without core data. We used four wells with six logs (GR, DT, NPHI, LLD, LSS and RHOB) and 578 cores from the Miocene reservoir to train, validate and test the data. Our goal was to show that the correct combination of cores and well logs data would provide reservoir engineers with a tool for HU classification and estimation of permeability in a continuous geological profile. Our research showed that machine learning effectively boosts the prediction of permeability, reduces uncertainty in reservoir modeling, and improves project economics.

Suggested Citation

  • Ha Quang Man & Doan Huy Hien & Kieu Duy Thong & Bui Viet Dung & Nguyen Minh Hoa & Truong Khac Hoa & Nguyen Van Kieu & Pham Quy Ngoc, 2021. "Hydraulic Flow Unit Classification and Prediction Using Machine Learning Techniques: A Case Study from the Nam Con Son Basin, Offshore Vietnam," Energies, MDPI, vol. 14(22), pages 1-21, November.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:22:p:7714-:d:681569
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    References listed on IDEAS

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    1. Nilesh Dixit & Paul McColgan & Kimberly Kusler, 2020. "Machine Learning-Based Probabilistic Lithofacies Prediction from Conventional Well Logs: A Case from the Umiat Oil Field of Alaska," Energies, MDPI, vol. 13(18), pages 1-15, September.
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    Cited by:

    1. Péter Koroncz & Zsanett Vizhányó & Márton Pál Farkas & Máté Kuncz & Péter Ács & Gábor Kocsis & Péter Mucsi & Anita Fedorné Szász & Ferenc Fedor & János Kovács, 2022. "Experimental Rock Characterisation of Upper Pannonian Sandstones from Szentes Geothermal Field, Hungary," Energies, MDPI, vol. 15(23), pages 1-22, December.
    2. Grzegorz Filo, 2023. "Artificial Intelligence Methods in Hydraulic System Design," Energies, MDPI, vol. 16(8), pages 1-19, April.

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