4.6 Article

A deep learning-accelerated data assimilation and forecasting workflow for commercial-scale geologic carbon storage

Journal

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ijggc.2021.103488

Keywords

Deep learning; Data assimilation; Geologic carbon storage; Ensemble-based methods; Surrogate modeling

Funding

  1. US. Department of Energy (DOE) [DE-AC52-07NA2 7344]
  2. U.S. DOE Office of Fossil Energy's Carbon Storage Research program
  3. Total S.A. through the FC-MAELSTROM project
  4. U.S. Department of Energy, Office of Science, Exascale Computing Project

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Updating pressure buildup and CO2 plume migration forecasts quickly in geologic carbon storage faces challenges. A workflow combining physical understandings with deep learning techniques can achieve history matching and reservoir forecasting with uncertainty quantification in less than an hour. By leveraging surrogate models and advanced neural networks, this workflow provides a fast and accurate solution for reservoir management.
Fast assimilation of monitoring data to update forecasts of pressure buildup and carbon dioxide (CO2) plume migration under geologic uncertainties is a challenging problem in geologic carbon storage. The high computational cost of data assimilation with a high-dimensional parameter space impedes fast decision-making for commercial-scale reservoir management. We propose to leverage physical understandings of porous medium flow behavior with deep learning techniques to develop a fast data assimilation-reservoir response forecasting workflow. Applying an Ensemble Smoother Multiple Data Assimilation (ES-MDA) framework, the workflow updates geologic properties and predicts reservoir performance with quantified uncertainty from pressure history and CO2 plumes interpreted through seismic inversion. As the most computationally expensive component in such a workflow is reservoir simulation, we developed surrogate models to predict dynamic pressure and CO2 plume extents under multi-well injection. The surrogate models employ deep convolutional neural networks, specifically, a wide residual network and a residual U-Net. The workflow is validated against a flat three-dimensional reservoir model representative of a elastic shelf depositional environment. Intelligent treatments are applied to bridge between quantities in a true-3D reservoir model and those in a single-layer reservoir model. The workflow can complete history matching and reservoir forecasting with uncertainty quantification in less than one hour on a mainstream personal workstation.

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