Another #newpaper using the same dataset:
Lu D, Painter SL, Azzolina NA, Burton-Kelly M, Jiang T and Williamson C (2022) Accurate and Rapid Forecasts for Geologic Carbon Storage via Learning-Based Inversion-Free Prediction. Front. Energy Res. 9:752185. doi: 10.3389/fenrg.2021.752185
https://www.frontiersin.org/articles/10.3389/fenrg.2021.752185/full
#carbonstorage #co2storage #salinestorage #reservoirsimulation #geology

Accurate and Rapid Forecasts for Geologic Carbon Storage via Learning-Based Inversion-Free Prediction
Carbon capture and storage (CCS) is one approach being studied by the U.S. Department of Energy to help mitigate global warming. The process involves capturing CO2 emissions from industrial sources and permanently storing them in deep geologic formations (storage reservoirs). However, CCS projects generally target “green field sites,” where there is often little characterization data and therefore large uncertainty about the petrophysical properties and other geologic attributes of the storage reservoir. Consequently, ensemble-based approaches are often used to forecast multiple realizations prior to CO2 injection to visualize a range of potential outcomes. In addition, monitoring data during injection operations are used to update the pre-injection forecasts and thereby improve agreement between forecasted and observed behavior. Thus, a system for generating accurate, timely forecasts of pressure buildup and CO2 movement and distribution within the storage reservoir and for updating those forecasts via monitoring measurements becomes crucial. This study proposes a learning-based prediction method that can accurately and rapidly forecast spatial distribution of CO2 concentration and pressure with uncertainty quantification without relying on traditional inverse modeling. The machine learning techniques include dimension reduction, multivariate data analysis, and Bayesian learning. The outcome is expected to provide CO2 storage site operators with an effective tool for time...
Frontiers#newpaper! "A deep learning-accelerated data assimilation and forecasting workflow for commercial-scale geologic carbon storage"[1]
My contribution was developing the geologic model realizations by extending one of the models from Bosshart et al. (2018).[2]
As always, I can share #PDF on request.
[1] https://www.sciencedirect.com/science/article/pii/S1750583621002401?via%3Dihub
[2] https://www.sciencedirect.com/science/article/abs/pii/S1750583617306151?via%3Dihub
#carbonstorage #co2storage #salinestorage #reservoirsimulation #geology
New paper! "A simulation study of carbon storage with active reservoir management"
My primary contributions were manipulation of the geologic model (upscaling) and processing simulation results.
View it online here or I can send a PDF on request: https://onlinelibrary.wiley.com/share/author/2TKZVDMYQWGDDJI5ITNI?target=10.1002/ghg.2119
#carbonstorage #co2storage #salinestorage #co2 #geology #reservoirsimulation