DecNet: Decomposition network for 3D gravity inversion

Author:

Zhang Shuang1ORCID,Yin Changchun2ORCID,Cao Xiaoyue3ORCID,Sun Siyuan4ORCID,Liu Yunhe1ORCID,Ren Xiuyan1ORCID

Affiliation:

1. Jilin University, College of Geo-Exploration Science and Technology, Changchun, China.

2. Jilin University, College of Geo-Exploration Science and Technology, Changchun, China. (corresponding author)

3. Key Laboratory of Exploration Technologies for Oil and Gas Resources (Yangtze University), Ministry of Education, Wuhan, China.

4. China Aero Geophysical Survey and Remote Sensing Center for Natural Resources, Comprehensive Department of Aero Geophysical Survey, Beijing, China.

Abstract

Three dimensional gravity inversion is an effective way to extract subsurface density distribution from gravity data. Different from the conventional geophysics-based inversions, machine-learning-based inversion is a data-driven method mapping the observed data to a 3D model. We have developed a new machine-learning-based inversion method by establishing a decomposition network (DecNet). Unlike existing machine-learning-based inversion methods, the proposed DecNet method is a mapping from 2D to 2D, which requires less training time and memory space. Instead of learning the density information of each grid point, this network learns the boundary position, vertical center, thickness, and density distribution by 2D-to-2D mapping and reconstructs the 3D model by using these predicted parameters. Furthermore, by using the highly accurate boundary information learned from this network as supplement information, the DecNet method is optimized into a DecNetB method. By comparing the least-squares inversion and U-Net inversion on synthetic and real survey data, the DecNet and DecNetB methods have shown the advantage in dealing with inverse problems for targets with boundaries.

Funder

National Natural Science Foundation of China

S&T Program of Beijing

Key National Research Project of China

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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1. Forward constrained 3D gravity density inversion based on EdU-Net with well constraints;International Workshop on Gravity, Electrical & Magnetic Methods and Their Applications, Shenzhen, China, May 19–22, 2024;2024-08-23

2. Forward modeling guided deep learning for 3D gravity inversion;International Workshop on Gravity, Electrical & Magnetic Methods and Their Applications, Shenzhen, China, May 19–22, 2024;2024-08-23

3. Three-dimensional inversion for short-offset transient electromagnetic data based on 3D U-Net;Journal of Geophysics and Engineering;2024-04-22

4. Imaging of moho topography with conditional generative adversarial network from observed gravity anomalies;Journal of Asian Earth Sciences;2024-04

5. A Deep Learning Gravity Inversion Method Based on a Self-Constrained Network and Its Application;Remote Sensing;2024-03-12

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