Deep-learning-based coupled flow-geomechanics surrogate model for CO$_2$
sequestration
- URL: http://arxiv.org/abs/2105.01334v1
- Date: Tue, 4 May 2021 07:34:15 GMT
- Title: Deep-learning-based coupled flow-geomechanics surrogate model for CO$_2$
sequestration
- Authors: Meng Tang, Xin Ju, Louis J. Durlofsky
- Abstract summary: The 3D recurrent R-U-Net model combines deep convolutional and recurrent neural networks to capture the spatial distribution and temporal evolution of saturation, pressure and surface displacement fields.
The surrogate model is trained to predict the 3D CO2 saturation and pressure fields in the storage aquifer, and 2D displacement maps at the Earth's surface.
- Score: 4.635171370680939
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A deep-learning-based surrogate model capable of predicting flow and
geomechanical responses in CO2 storage operations is presented and applied. The
3D recurrent R-U-Net model combines deep convolutional and recurrent neural
networks to capture the spatial distribution and temporal evolution of
saturation, pressure and surface displacement fields. The method is trained
using high-fidelity simulation results for 2000 storage-aquifer realizations
characterized by multi-Gaussian porosity and log-permeability fields. These
numerical solutions are expensive because the domain that must be considered
for the coupled problem includes not only the storage aquifer but also a
surrounding region, overburden and bedrock. The surrogate model is trained to
predict the 3D CO2 saturation and pressure fields in the storage aquifer, and
2D displacement maps at the Earth's surface. Detailed comparisons between
surrogate model and full-order simulation results for new (test-case)
storage-aquifer realizations are presented. The saturation, pressure and
surface displacement fields provided by the surrogate model display a high
degree of accuracy, both for individual test-case realizations and for ensemble
statistics. Finally, the the recurrent R-U-Net surrogate model is applied with
a rejection sampling procedure for data assimilation. Although the observations
consist of only a small number of surface displacement measurements,
significant uncertainty reduction in pressure buildup at the top of the storage
aquifer (caprock) is achieved.
Related papers
- Constrained Transformer-Based Porous Media Generation to Spatial Distribution of Rock Properties [0.0]
Pore-scale modeling of rock images based on information in 3D micro-computed tomography data is crucial for studying complex subsurface processes.
We propose a two-stage modeling framework that combines a Vector Quantized Variational Autoencoder (VQVAE) and a transformer model for spatial upscaling and arbitrary-size 3D porous media reconstruction.
arXiv Detail & Related papers (2024-10-28T19:03:33Z) - Accelerated training of deep learning surrogate models for surface displacement and flow, with application to MCMC-based history matching of CO2 storage operations [0.0]
We introduce a new surrogate modeling framework to predict CO2 saturation, pressure and surface displacement for use in the history matching of carbon storage operations.
Training here involves a large number of inexpensive flow-only simulations combined with a much smaller number of coupled runs.
arXiv Detail & Related papers (2024-08-20T10:31:52Z) - Latent diffusion models for parameterization and data assimilation of facies-based geomodels [0.0]
Diffusion models are trained to generate new geological realizations from input fields characterized by random noise.
Latent diffusion models are shown to provide realizations that are visually consistent with samples from geomodeling software.
arXiv Detail & Related papers (2024-06-21T01:32:03Z) - DiffusionPCR: Diffusion Models for Robust Multi-Step Point Cloud
Registration [73.37538551605712]
Point Cloud Registration (PCR) estimates the relative rigid transformation between two point clouds.
We propose formulating PCR as a denoising diffusion probabilistic process, mapping noisy transformations to the ground truth.
Our experiments showcase the effectiveness of our DiffusionPCR, yielding state-of-the-art registration recall rates (95.3%/81.6%) on 3D and 3DLoMatch.
arXiv Detail & Related papers (2023-12-05T18:59:41Z) - Surrogate Model for Geological CO2 Storage and Its Use in Hierarchical
MCMC History Matching [0.0]
We extend the recently introduced recurrent R-U-Net surrogate model to treat geomodel realizations drawn from a wide range of geological scenarios.
We show that, using observed data from monitoring wells in synthetic true' models, geological uncertainty is reduced substantially.
arXiv Detail & Related papers (2023-08-11T18:29:28Z) - Conditional Korhunen-Lo\'{e}ve regression model with Basis Adaptation
for high-dimensional problems: uncertainty quantification and inverse
modeling [62.997667081978825]
We propose a methodology for improving the accuracy of surrogate models of the observable response of physical systems.
We apply the proposed methodology to constructing surrogate models via the Basis Adaptation (BA) method of the stationary hydraulic head response.
arXiv Detail & Related papers (2023-07-05T18:14:38Z) - Real-time high-resolution CO$_2$ geological storage prediction using
nested Fourier neural operators [58.728312684306545]
Carbon capture and storage (CCS) plays an essential role in global decarbonization.
Scaling up CCS deployment requires accurate and high-resolution modeling of the storage reservoir pressure buildup and the gaseous plume migration.
We introduce Nested Fourier Neural Operator (FNO), a machine-learning framework for high-resolution dynamic 3D CO2 storage modeling at a basin scale.
arXiv Detail & Related papers (2022-10-31T04:04:03Z) - Information Entropy Initialized Concrete Autoencoder for Optimal Sensor
Placement and Reconstruction of Geophysical Fields [58.720142291102135]
We propose a new approach to the optimal placement of sensors for reconstructing geophysical fields from sparse measurements.
We demonstrate our method on the two examples: (a) temperature and (b) salinity fields around the Barents Sea and the Svalbard group of islands.
We find out that the obtained optimal sensor locations have clear physical interpretation and correspond to the boundaries between sea currents.
arXiv Detail & Related papers (2022-06-28T12:43:38Z) - Learning Large-scale Subsurface Simulations with a Hybrid Graph Network
Simulator [57.57321628587564]
We introduce Hybrid Graph Network Simulator (HGNS) for learning reservoir simulations of 3D subsurface fluid flows.
HGNS consists of a subsurface graph neural network (SGNN) to model the evolution of fluid flows, and a 3D-U-Net to model the evolution of pressure.
Using an industry-standard subsurface flow dataset (SPE-10) with 1.1 million cells, we demonstrate that HGNS is able to reduce the inference time up to 18 times compared to standard subsurface simulators.
arXiv Detail & Related papers (2022-06-15T17:29:57Z) - A Deep Learning-Accelerated Data Assimilation and Forecasting Workflow
for Commercial-Scale Geologic Carbon Storage [2.464972164779053]
We propose to leverage physical understandings of porous medium flow behavior with deep learning techniques to develop a fast history matching-reservoir response forecasting workflow.
We developed surrogate models to predict dynamic pressure and CO2 plume extents under multi-well injection.
The workflow can complete history matching and reservoir forecasting with uncertainty quantification in less than one hour on a mainstream personal workstation.
arXiv Detail & Related papers (2021-05-09T16:38:29Z) - Surface Warping Incorporating Machine Learning Assisted Domain
Likelihood Estimation: A New Paradigm in Mine Geology Modelling and
Automation [68.8204255655161]
A Bayesian warping technique has been proposed to reshape modeled surfaces based on geochemical and spatial constraints imposed by newly acquired blasthole data.
This paper focuses on incorporating machine learning in this warping framework to make the likelihood generalizable.
Its foundation is laid by a Bayesian computation in which the geological domain likelihood given the chemistry, p(g|c) plays a similar role to p(y(c)|g.
arXiv Detail & Related papers (2021-02-15T10:37:52Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.