Integrating deep neural networks with full-waveform inversion: Reparameterization, regularization, and uncertainty quantification

Author:

Zhu Weiqiang1ORCID,Xu Kailai2,Darve Eric3,Biondi Biondo4,Beroza Gregory C.4

Affiliation:

1. Stanford University, Department of Geophysics, Stanford, California 94305, USA. (corresponding author)

2. Stanford University, Institute for Computational and Mathematical Engineering, Stanford, California 94305, USA.

3. Stanford University, Institute for Computational and Mathematical Engineering, Stanford, California 94305, USA and Stanford University, Mechanical Engineering, Stanford, California 94305, USA.

4. Stanford University, Department of Geophysics, Stanford, California 94305, USA.

Abstract

Full-waveform inversion (FWI) is an accurate imaging approach for modeling the velocity structure by minimizing the misfit between recorded and predicted seismic waveforms. However, the strong nonlinearity of FWI resulting from fitting oscillatory waveforms can trap the optimization in local minima. We have adopted a neural-network-based full-waveform inversion (NNFWI) method that integrates deep neural networks with FWI by representing the velocity model with a generative neural network. Neural networks can naturally introduce spatial correlations as regularization to the generated velocity model, which suppresses noise in the gradients and mitigates local minima. The velocity model generated by neural networks is input to the same partial differential equation (PDE) solvers used in conventional FWI. The gradients of the neural networks and PDEs are calculated using automatic differentiation, which back propagates gradients through the acoustic PDEs and neural network layers to update the weights of the generative neural network. Experiments on 1D velocity models, the Marmousi model, and the 2004 BP model determine that NNFWI can mitigate local minima, especially for imaging high-contrast features such as salt bodies, and it significantly improves the inversion in the presence of noise. Adding dropout layers to the neural network model also allows analyzing the uncertainty of the inversion results through Monte Carlo dropout. NNFWI opens a new pathway to combine deep learning and FWI for exploiting the characteristics of deep neural networks and the high accuracy of PDE solvers. Because NNFWI does not require extra training data and optimization loops, it provides an attractive and straightforward alternative to conventional FWI.

Funder

Department of Energy Basic Energy Sciences

Applied Mathematics Program within the Department of Energy (DOE) Office of Advanced Scientific Computing Research

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

Reference57 articles.

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