A deep learning-enhanced framework for multiphysics joint inversion

Author:

Hu Yanyan1ORCID,Wei Xiaolong2ORCID,Wu Xuqing3ORCID,Sun Jiajia2ORCID,Chen Jiuping4ORCID,Huang Yueqin4ORCID,Chen Jiefu5ORCID

Affiliation:

1. University of Houston, Department of Electrical and Computer Engineering, Houston, Texas, USA.

2. University of Houston, Department of Earth and Atmospheric Sciences, Houston, Texas, USA.

3. University of Houston, Department of Information and Logistics Technology, Houston, Texas, USA.

4. Cyentech Consulting LLC, Houston, Texas, USA.

5. University of Houston, Department of Electrical and Computer Engineering, Houston, Texas, USA. (corresponding author)

Abstract

Joint inversion has drawn considerable attention due to the availability of multiple geophysical data sets, ever-increasing computational resources, the development of advanced algorithms, and its ability to reduce inversion uncertainty. A key issue of joint inversion is to develop effective strategies to link different geophysical data in a unified mathematical framework, in which the information obtained from different models can complement each other. We have developed a deep learning-enhanced joint inversion framework to simultaneously reconstruct different physical models by fusing different types of geophysical data. Traditionally, structure similarity constraints are pursued by joint inversion algorithms using manually crafted formulations (e.g., cross gradient). The constraint is constructed by a deep neural network (DNN) during the learning process. The framework is designed to combine the DNN and a traditional independent inversion workflow and improve the joint inversion result iteratively. The network can be easily extended to incorporate multiphysics without structural changes. Numerical experiments on the joint inversion of 2D DC resistivity data and seismic traveltime are used to validate our method. In addition, this learning-based framework demonstrates excellent generalization abilities when tested on data sets using different geologic structures. It also can handle different sensing configurations and nonconforming discretization.

Funder

U.S. Department of Energy

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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