Skip to main content
Loading

Machine Learning Applications to Reservoir Engineering

Tuesday, 24 September
Room 217 - 219
Technical Session
This session highlights various applications of machine learning methods for reservoir engineering related problems, from optimization of well location and reservoir production, to estimation of petrophysical properties, including automation of history matching and productivity analysis.
Session Chairpersons
Guohua Gao - Shell
Keith Boyle - Chevron Australia Pty Ltd
  • 0830-0855 220783
    Embed-to-Control-Based Deep-Learning Surrogate for Robust Nonlinearly Constrained Life-Cycle Production Optimization: A Realistic Deepwater Application
    Q.M. Nguyen, M. Onur, University of Tulsa; F. Alpak, Shell International E&P Co.
  • 0855-0920 220964
    Developing a Novel Machine Learning-based Petrophysical Rock Typing (PRT) Classification: Applied to Heterogenous Carbonate Reservoirs
    M.A. Abbas, W.J. Al-Mudhafar, Basrah Oil Company; A. Alsubaih, University of Texas at Austin; A. Al-Maliki, A.M. Al Sukaini, Basrah Oil Company
  • 0920-0945 220992
    Estimating Rock Typing in Uncored Wells Using Machine Learning Techniques for Brazilian Pre-Salt Carbonate Reservoir
    M. AlLahham, V.E. Botechia, Center for Petroleum Studies; A. Davolio, D. Schiozer, Universidade Estadual De Campinas
  • 1015-1040 220847
    Estimating Petrophysical Properties Directly from Seismic: A Deep Learning Application to Carbonate Field For CO2 Storage Potential
    C.L. Lew, M. Ahmad Fuad, M. Jaya, A. Trianto, PETRONAS; C. Macbeth, Heriot-Watt University
  • 1040-1105 220876
    Efficacy Gain From A Deep Neural Network-based History-matching Workflow
    B. Yan, Y. Zhang, King Abdullah University of Science and Technology
  • 1105-1130 220754
    Deep Learning-driven Acceleration Of Stochastic Gradient Methods For Well Location Optimization Under Uncertainty
    E. Eltahan, K. Sepehrnoori, The University of Texas At Austin; F.O. Alpak, Shell International E&P Co.
  • Alternate 220715
    Machine-learning Workflow for Fracture Geometry Characterization using High-resolution Distributed Strain Sensing During Well Production
    W. Ma, K. Wu, Texas A&M University; G. Jin, Colorado School of Mines