Metamodelling colossal plans

Generative Models:

  • Gas injection
  • Aquifer
  • Tables (PVT \ RPP)
  • Better porosity, permeability, initial distributions

  • Geometry ?? (Ivan Makhotin)
  • Trajectories of wells ??
  • Hydrodynamical fracturing

Unconventional History-Matching

Production optimization
(Optima will not work properly):

  • Ensembling of neural networks
  • Risk-aware optimization
  • Entropy-seeking exploration

Aquifer options:

  • Check if substitutable with injection wells
  • Check if NN can work properly with it in a given architecture

Super-resolution:

  • Simple upscaling (several types)
  • Downscaling with NN (probably GAN or other generative network)
  • Exact shape match does not matter!
  • Combining forecasts for different upscalings

Metamodelling base in the framework:

  • Grid search for parameters and attributes
  • Simple block-based architectures (combine layers in nn.Sequential and go)
  • Platforms for non-linear geometry and graphs in a single solution
  • Micro-batching
  • Use Metaflow (Vadim Kuzmin)

tNavigator-like API

  • Run tNav in cycle
  • Make predictions for whole Fields, not samples

Control:

  • Control component in Field
  • Group control in the metamodel
  • Simple control with inequalities in the metamodel
  • Iterative check for non-negative rates in the metamodel

Rates:

  • Is it working on corner point?
  • Differentiable loss with rates?

Tables:

  • Table representations for metamodel:
    • PCA
    • NN-based
    • Physics-aware??
  • Regions?

Hydrodynamical fracturing:

  • Representation in the metamodel
  • Problems with symmetric influence
  • May be, it is enough to consider improvement of production, not exact representation of states.
Made with Slides.com