Learned non-linear simultenous source and corresponding supershot for seismic imaging.

TitleLearned non-linear simultenous source and corresponding supershot for seismic imaging.
Publication TypeConference
Year of Publication2023
AuthorsMathias Louboutin, Rafael Orozco, Ali Siahkoohi, Felix J. Herrmann
Conference NameInternational Meeting for Applied Geoscience and Energy
Month08
Keywordsdeep learning, Imaging, SEG, simultaneous
Abstract

Seismic imaging's main limiting factor is the scale of the involved dataset and the number of independent wave-equation solves required to migrate thousands of shots. To tackle this dimensionality curse, we introduce a learned framework that extends the conventional computationally reductive linear source superposition (e.g., via random simultaneous-source encoding) to a nonlinear learned source superposition and its corresponding learned supershot. With this method, we can image the subsurface at the cost of a one-shot migration by learning the most informative superposition of shots.

Notes

(IMAGE, Houston)

URLhttps://slimgroup.github.io/IMAGE2023/OneShot/abstract.html
Presentation
Citation Keylouboutin2023IMAGEloi