A Deep Learning Gravity Inversion Method Based on a Self-Constrained Network and Its Application

Author:

Zhou Shuai1,Wei Yue1,Lu Pengyu1,Yu Guangrui2,Wang Shuqi2,Jiao Jian1,Yu Ping1,Zhao Jianwei1

Affiliation:

1. College of Geo-Exploration Science and Technology, Jilin University, Changchun 130026, China

2. Key Laboratory of Smart Earth, Dalian 116023, China

Abstract

Gravity inversion can be used to obtain the spatial structure and physical properties of subsurface anomalies through gravity observation data. With the continuous development of machine learning, geophysical inversion methods based on deep learning have achieved good results. Geophysical inversion methods based on deep learning often employ large-scale data sets to obtain inversion networks with strong generalization. They are widely used but face a problem of lacking information constraints. Therefore, a self-constrained network is proposed to optimize the inversion results, composed of two networks with similar structures but different functions. At the same time, a fine-tuning strategy is also introduced. On the basis of data-driven deep learning, we further optimized the results by controlling the self-constrained network and optimizing fine-tuning strategy. The results of model testing show that the method proposed in this study can effectively improve inversion precision and obtain more reliable and accurate inversion results. Finally, the method is applied to the field data of Gonghe Basin, Qinghai Province, and the 3D inversion results are used to effectively delineate the geothermal storage area.

Funder

Ningxia Key R&D Plan

National Natural Science Foundation of China

Fundamental Research Funds for the Central Universities

the scientific research project of Education Department of Jilin Province

Publisher

MDPI AG

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