WISE: full-Waveform variational Inference via Subsurface Extensions
Yin, Ziyi, Orozco, Rafael, Louboutin, Mathias, Herrmann, Felix J.
–arXiv.org Artificial Intelligence
We introduce a probabilistic technique for full-waveform inversion, employing variational inference and conditional normalizing flows to quantify uncertainty in migration-velocity models and its impact on imaging. Our approach integrates generative artificial intelligence with physics-informed common-image gathers, reducing reliance on accurate initial velocity models. Considered case studies demonstrate its efficacy producing realizations of migration-velocity models conditioned by the data. These models are used to quantify amplitude and positioning effects during subsequent imaging.
arXiv.org Artificial Intelligence
Dec-10-2023