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Published April 2023 | public
Journal Article

Real-time high-resolution CO₂ geological storage prediction using nested Fourier neural operators

Abstract

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. However, such modeling is very challenging at scale due to the high computational costs of existing numerical methods. This challenge leads to significant uncertainties in evaluating storage opportunities, which can delay the pace of large-scale CCS deployment. We introduce Nested Fourier Neural Operator (FNO), a machine-learning framework for high-resolution dynamic 3D CO₂ storage modeling at a basin scale. Nested FNO produces forecasts at different refinement levels using a hierarchy of FNOs and speeds up flow prediction nearly 700 000 times compared to existing methods. By learning the solution operator for the family of governing partial differential equations, Nested FNO creates a general-purpose numerical simulator alternative for CO₂ storage with diverse reservoir conditions, geological heterogeneity, and injection schemes. Our framework enables unprecedented real-time modeling and probabilistic simulations that can support the scale-up of global CCS deployment.

Additional Information

© The Royal Society of Chemistry 2023. The authors gratefully acknowledge Yanhua Yuan from ExxonMobil for many helpful conversations and suggestions. G. W. and S. B. gratefully acknowledge the support by ExxonMobil through the Strategic Energy Alliance at Stanford University and the Stanford Center for Carbon Storage. Z. L. gratefully acknowledges the financial support from the Kortschak Scholars, PIMCO Fellows, and Amazon AI4Science Fellows programs. A. A. is supported in part by Bren endowed chair. Author contributions. G. W. conceptualization, methodology, software, data acquisition, data curation, formal analysis, investigation, validation, visualization, writing – original draft, writing – review & editing. Z. L. methodology, investigation, validation, writing – original draft, writing – review & editing. Q. L. data acquisition. K. A. methodology, software, investigation, validation, writing – review & editing. A. A. funding acquisition, supervision, writing – review & editing. S. B. conceptualization, formal analysis, funding acquisition, methodology, resources, supervision, writing – review & editing. Data and code availability. The python code for the Nested FNO model architecture and the data set used in training will be available at GitHub repository (https://github.com/gegewen/nested-fno). Web application. The trained Nested FNO model will be hosted in web application https://CCSNet.ai (https://ccsnet.ai) to provide real-time predictions upon the publication of this manuscript. Please also see this link for a demonstration of publicly accessible web application for our previous works. There are no conflicts to declare.

Additional details

Created:
August 22, 2023
Modified:
October 23, 2023