Surrogate Model for Geological CO2 Storage and Its Use in MCMC-based History Matching

08/11/2023
by   Yifu Han, et al.
0

Deep-learning-based surrogate models show great promise for use in geological carbon storage operations. In this work we target an important application - the history matching of storage systems characterized by a high degree of (prior) geological uncertainty. Toward this goal, we extend the recently introduced recurrent R-U-Net surrogate model to treat geomodel realizations drawn from a wide range of geological scenarios. These scenarios are defined by a set of metaparameters, which include the mean and standard deviation of log-permeability, permeability anisotropy ratio, horizontal correlation length, etc. An infinite number of realizations can be generated for each set of metaparameters, so the range of prior uncertainty is large. The surrogate model is trained with flow simulation results, generated using the open-source simulator GEOS, for 2000 random realizations. The flow problems involve four wells, each injecting 1 Mt CO2/year, for 30 years. The trained surrogate model is shown to provide accurate predictions for new realizations over the full range of geological scenarios, with median relative error of 1.3 and 4.5 Monte Carlo history matching workflow, where the goal is to generate history matched realizations and posterior estimates of the metaparameters. We show that, using observed data from monitoring wells in synthetic `true' models, geological uncertainty is reduced substantially. This leads to posterior 3D pressure and saturation fields that display much closer agreement with the true-model responses than do prior predictions.

READ FULL TEXT

page 26

page 28

page 30

page 31

research
05/04/2021

Deep-learning-based coupled flow-geomechanics surrogate model for CO_2 sequestration

A deep-learning-based surrogate model capable of predicting flow and geo...
research
08/16/2019

A deep-learning-based surrogate model for data assimilation in dynamic subsurface flow problems

A deep-learning-based surrogate model is developed and applied for predi...
research
05/09/2021

A Deep Learning-Accelerated Data Assimilation and Forecasting Workflow for Commercial-Scale Geologic Carbon Storage

Fast assimilation of monitoring data to update forecasts of pressure bui...
research
08/28/2021

Variational Inference with NoFAS: Normalizing Flow with Adaptive Surrogate for Computationally Expensive Models

Fast inference of numerical model parameters from data is an important p...
research
08/26/2020

Uncertainty-Aware Surrogate Model For Oilfield Reservoir Simulation

Deep neural networks have gained increased attention in machine learning...
research
05/28/2022

Uncertainty quantification of two-phase flow in porous media via coupled-TgNN surrogate model

Uncertainty quantification (UQ) of subsurface two-phase flow usually req...
research
08/09/2021

Uncertainty quantification for industrial design using dictionaries of reduced order models

We consider the dictionary-based ROM-net (Reduced Order Model) framework...

Please sign up or login with your details

Forgot password? Click here to reset