4.6 Article

Reparameterized full-waveform inversion using deep neural networks

期刊

GEOPHYSICS
卷 86, 期 1, 页码 V1-V13

出版社

SOC EXPLORATION GEOPHYSICISTS - SEG
DOI: 10.1190/GEO2019-0382.1

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资金

  1. National Natural Science Foundation of China [11801111, 91630202]
  2. National Key R&D Program of the Ministry of Science and Technology of China [2018YFC0603500]
  3. China Postdoctoral Science Foundation [2019M650831]
  4. Guizhou Science and Technology Plan Project [[2019]1122]
  5. Guizhou Science and Technology Platform talents [[2018]5781]

向作者/读者索取更多资源

The deep-learning inversion method reparameterizes physical parameters using DNN weights, serving as an iterative regularization method for solving ill-posed nonlinear problems. It offers good computational efficiency and can easily be accelerated, showing effectiveness in recovering sharp boundaries and capturing salient features of the model when compared to total-variation regularized FWI.
Full-waveform inversion (FWI) is a powerful method for providing a high-resolution description of the subsurface. However, the misfit function of the conventional FWI method (metric l(2)-norm) is usually dominated by spurious local minima owing to its nonlinearity and ill-posedness. In addition, FWI requires intensive wavefield computation to evaluate the gradient and step length. We have considered a general inversion method using a deep neural network (DNN) for the FWI problem. This deep-learning inversion method reparameterizes physical parameters using the weights of a DNN, such that the inversion amounts to reconstructing these weights. One advantage of this deep-learning inversion method is that it can serve as an iterative regularization method, benefiting from the representation of the network. Thus, it is suitable to solve ill-posed nonlinear inverse problems. Furthermore, this method possesses good computational efficiency because it only requires first-order derivatives. In addition, it can easily be accelerated by using multiple graphics processing units and central processing units, for weight updating and forward modeling. Synthetic experiments, based on the Marmousi2, 2004 BP, and a metal ore model, are used to show the numerical performance of the deep-learning inversion method. Comprehensive comparisons with a total-variation regularized FWI are presented to show the ability of our method to recover sharp boundaries. Our numerical results indicate that this deep-learning inversion approach is effective, efficient, and can capture salient features of the model.

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