Seismic Wave Propagation and Inversion with Neural Operators
Creators
Abstract
Seismic wave propagation forms the basis for most aspects of seismological research, yet solving the wave equation is a major computational burden that inhibits the progress of research. This is exacerbated by the fact that new simulations must be performed whenever the velocity structure or source location is perturbed. Here, we explore a prototype framework for learning general solutions using a recently developed machine learning paradigm called neural operator. A trained neural operator can compute a solution in negligible time for any velocity structure or source location. We develop a scheme to train neural operators on an ensemble of simulations performed with random velocity models and source locations. As neural operators are grid free, it is possible to evaluate solutions on higher resolution velocity models than trained on, providing additional computational efficiency. We illustrate the method with the 2D acoustic wave equation and demonstrate the method’s applicability to seismic tomography, using reverse‐mode automatic differentiation to compute gradients of the wavefield with respect to the velocity structure. The developed procedure is nearly an order of magnitude faster than using conventional numerical methods for full waveform inversion.
Copyright and License
© 2021. The Authors. This is an open access article distributed under the terms of the CC-BY license, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Acknowledgement
The authors thank Jack Muir for helpful comments on an early version of the article.
Data Availability
All the data presented in this study are synthetic and available upon request. The supplemental material for this article demonstrates that the misfit between the simulations using spectral element method (SEM) and the Fourier neural operator (FNO) is minimal.
Supplemental Material
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tsr-2021026.1.pdf
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Additional details
Related works
- Is new version of
- Discussion Paper: arXiv:2108.05421 (arXiv)
Dates
- Available
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2021-11-02First online