Enhanced 3D Gravity Inversion Using ResU-Net with Density Logging Constraints: A Dual-Phase Training Approach
Siyuan Dong, Jinghuai Gao, Shuai Zhou, Baohai Wu, Hongfa Jia

TL;DR
This paper introduces a dual-phase deep learning approach for 3D gravity inversion that incorporates density logging constraints, significantly improving inversion accuracy and reliability over existing methods.
Contribution
It proposes a novel dual-phase training strategy with density logging constraints and a depth weighting function to enhance gravity inversion performance.
Findings
Improved inversion accuracy in synthetic and real data.
Reduced data fitting errors compared to unconstrained methods.
Better consistency with geological conditions in results.
Abstract
Gravity exploration has become an important geophysical method due to its low cost and high efficiency. With the rise of artificial intelligence, data-driven gravity inversion methods based on deep learning (DL) possess physical property recovery capabilities that conventional regularization methods lack. However, existing DL methods suffer from insufficient prior information constraints, which leads to inversion models with large data fitting errors and unreliable results. Moreover, the inversion results lack constraints and matching from other exploration methods, leading to results that may contradict known geological conditions. In this study, we propose a novel approach that integrates prior density well logging information to address the above issues. First, we introduce a depth weighting function to the neural network (NN) and train it in the weighted density parameter domain.…
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Taxonomy
TopicsGeophysical and Geoelectrical Methods · Geomagnetism and Paleomagnetism Studies · Reservoir Engineering and Simulation Methods
