Remote Sensing (Mar 2024)

Joint Gravity and Magnetic Inversion Using CNNs’ Deep Learning

  • Zhijing Bai,
  • Yanfei Wang,
  • Chenzhang Wang,
  • Caixia Yu,
  • Dmitry Lukyanenko,
  • Inna Stepanova,
  • Anatoly G. Yagola

DOI
https://doi.org/10.3390/rs16071115
Journal volume & issue
Vol. 16, no. 7
p. 1115

Abstract

Read online

Enhancing the reliability of inversion results has always been a prominent issue in the field of geophysics. In recent years, data-driven inversion methods leveraging deep neural networks (DNNs) have gained prominence for their ability to address non-uniqueness issues and reduce computational costs compared to traditional physically model-driven methods. In this study, we propose a GMNet machine learning method, i.e., a CNN-based inversion method for gravity and magnetic field data. This method relies more on data-driven training, and in the prediction phase after the model is trained, it does not heavily depend on a priori assumptions, unlike traditional methods. By forward modeling gravity and magnetic fields, we obtain a substantial dataset to train the CNN model, enabling the direct mapping from field data to subsurface property distribution. Applying this method to synthetic data and one-field data yields promising inversion results.

Keywords