Welcome to visit Geoscience!

Geoscience ›› 2023, Vol. 37 ›› Issue (01): 164-172.DOI: 10.19657/j.geoscience.1000-8527.2022.079

• Geophysics and Information Technology • Previous Articles     Next Articles

Inversion of Gravity Anomaly Based on AlexNet Deep Neural Network

LIU Caiyun1(), LI Mengdi1, XIONG Jie2(), WANG Rong2   

  1. 1. School of Information and Math, Yangtze University,Jingzhou, Hubei 434023, China
    2. School of Electronic Information, Yangtze University,Jingzhou, Hubei 434023, China
  • Received:2021-10-30 Revised:2022-08-30 Online:2023-02-10 Published:2023-03-20

Abstract:

In order to solve the problems of traditional inversion methods, such as dependence of initial model and long time for calculation, this paper proposes a noval gravity anomaly inversion method based on AlexNet deep neural network. This method designs an Alex inversion network (AlexInvNet) for gravity anomaly inversion inspired by classical deep neural network AlexNet firstly; constructs labeled datasets by forward modeling using a large number of synthetic density models secondly; uses the dataset train the AlexInvNet thirdly; and finally inputs the gravity anomaly data to the trained AlexInvNet to obtain the inversion result directly. The inversion experimental results of synthetic models show that this method can invert the position and density of anomaly body accurately, with good generalization and anti-noise ability, better than the full connected network deep learning inversion method. The field data inversion result demonstrates that this method can solve gravity anomaly inversion problem effectively.

Key words: gravity anomaly, inversion, deep neural network, AlexInvNet

CLC Number: