4.5 Article

End-to-end neural network approach to 3D reservoir simulation and adaptation

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Publisher

ELSEVIER
DOI: 10.1016/j.petrol.2021.109332

Keywords

Machine learning; Reservoir simulation; History matching; Neural networks

Funding

  1. Gazprom Neft, Russia
  2. Ministry of Science and Higher Education of the Russian Federation [075-10-2020-119]

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This paper introduces a unified approach to reservoir simulation and adaptation problems, utilizing a neural network model for forward pass and backward gradient propagation, combining model fitting and geological parameter adjustment into the same optimization problem. By utilizing real-world oilfield models and historical production rates, it demonstrates a significant acceleration in simulation speed.
Reservoir simulation and adaptation (also known as history matching) are typically considered as separate problems. While a set of models are aimed at the solution of the forward simulation problem assuming all initial geological parameters are known, the other set of models adjust geological parameters under the fixed forward simulation model to fit production data. This results in many difficulties for both reservoir engineers and developers of new efficient computation schemes. We present a unified approach to reservoir simulation and adaptation problems. A single neural network model allows a forward pass from initial geological parameters of the 3D reservoir model through dynamic state variables to well's production rates and backward gradient propagation to any model inputs and variables. The model fitting and geological parameters adaptation both become the optimization problem over specific parts of the same neural network model. Standard gradient-based optimization schemes can be used to find the optimal solution. Using real-world oilfield model and historical production rates we demonstrate that the suggested approach allows reservoir simulation and history matching with a benefit of several orders of magnitude simulation speed-up. Finally, to propagate this research we open-source a Python-based framework DeepField that allows standard processing of reservoir models and reproducing the approach presented in this paper.

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