Publication
GEOPHYSICS
Published
1 March 2023
Authors
Hongliu Zeng | Yawen He | Mariana Olariu | Ramón Treviño
Research funded by
DOE (DE-FE0031558)

The publisher of this work supports multiple resolution. The work is available from the following locations:

seg.org
geoscienceworld.org

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https://doi.org/10.1190/geo2021-0726.1
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