Neural networks as a tool for domain translation of geophysical data

Author:

Yao Jiashun1ORCID,Guasch Lluis2ORCID,Warner Michael2ORCID

Affiliation:

1. Sinopec Geophysical Research Institute Co., Ltd., Nanjing, China. (corresponding author)

2. Imperial College London, London, UK.

Abstract

Many geophysical tasks are hindered in practice by the high costs of generating and processing data. We have developed a potential solution, mitigating the cost of certain data acquisition and generation processes by using data-domain-translation deep neural networks. Generative adversarial networks have demonstrated success in data translation in a wide variety of applications. By providing training data from domain A and domain B, networks can be trained to estimate the distributions of both domains, and hence establish a mapping from one to the other. We apply such data-translation neural networks to 3D geophysical field data examples and determine that they can be used as cost-reduction tools, providing an efficient mapping between different data types of interest in expensive data-processing workflows. Our approach is especially relevant for the translation between acoustic and elastic data sets during full-waveform inversion, which mitigates the elastic effect in the acoustic inversion.

Funder

Centre for Reservoir Geophysics, Resource Geophysics Academy, Imperial College London

Fullwave3D, Imperial College London

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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