Enabling uncertainty quantification for seismic data pre-processing using normalizing flows (NF)—an interpolation example

TitleEnabling uncertainty quantification for seismic data pre-processing using normalizing flows (NF)—an interpolation example
Publication TypeConference
Year of Publication2021
AuthorsRajiv Kumar, Maria Kotsi, Ali Siahkoohi, Alison Malcolm
Conference NameSEG Technical Program Expanded Abstracts
Month09
Keywordsdeep learning, normalizing flow, SEG, wavefield reconstruction
Abstract

Seismic data go through a sequence of pre-processing steps before being made into an image. Although some work has been done to assess the uncertainties in the final images, how the uncertainty in the pre-processing affects the results remains largely unexplored. We use Normalizing Flows (NF), a type of deep neural network, to interpolate seismic data and quantify the associated uncertainty. A big advantage of NFs, over the more commonly used Markov Chain Monte Carlo methods, is that they can successfully sample a complex and high-dimensional probability space with fewer assumptions. We present the first application of NF in interpolating (synthetic) seismic data. The statistical measurements retrieved from the network can be used to better characterize the data as it is passed to the post-processing phase.

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(IMAGE, Denver)

URLhttps://slim.gatech.edu/Publications/Public/Conferences/SEG/2021/kumar2021SEGeuq/kumar2021SEGeuq.pdf
DOI10.1190/segam2021-3583705.1
Software
Citation Keykumar2021SEGeuq