Title |
Exploring CO2 storage potential in Lithuanian deep saline aquifers using digital rock volumes: a machine learning guided approach / |
Authors |
Malik, Shruti ; Makauskas, Pijus ; Sharma, Ravi ; Pal, Mayur |
DOI |
10.21595/accus.2023.23906 |
Full Text |
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Is Part of |
Advances in carbon capture utilization and storage.. [S.l.] : Extrica. 2023, vol. 1, iss. 2, p. 44-47.. ISSN 2783-686X |
Abstract [eng] |
The increasing significance of carbon capture, utilization and storage (CCUS) as a climate mitigation strategy has underscored the importance of accurately evaluating subsurface reservoirs for CO 2 sequestration. In this context, digital rock volumes, obtained through advanced imaging techniques such as micro-Xray computed tomography (MXCT), offer intricate insights into the porous and permeable structures of geological formations. This study presents a comprehensive methodology for assessing CO 2 storage viability within Lithuanian deep saline aquifers, namely Syderiai and Vaskai, by utilizing petrophysical properties estimated from digital rock volumes of samples from analogous formations. It also demonstrates the potential of integrating advanced imaging techniques, machine learning, and numerical modeling for accurate assessment and effective management of subsurface CO 2 storage. |
Published |
[S.l.] : Extrica |
Type |
Journal article |
Language |
English |
Publication date |
2023 |
CC license |
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