Solving Seismic Wave Equations on Variable Velocity Models with Fourier
Neural Operator
- URL: http://arxiv.org/abs/2209.12340v1
- Date: Sun, 25 Sep 2022 22:25:57 GMT
- Title: Solving Seismic Wave Equations on Variable Velocity Models with Fourier
Neural Operator
- Authors: Bian Li, Hanchen Wang, Xiu Yang, Youzuo Lin
- Abstract summary: We propose a new framework paralleled Fourier neural operator (PFNO) for efficiently training the FNO-based solver.
Numerical experiments demonstrate the high accuracy of both FNO and PFNO with complicated velocity models.
PFNO admits higher computational efficiency on large-scale testing datasets, compared with the traditional finite-difference method.
- Score: 3.2307366446033945
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the study of subsurface seismic imaging, solving the acoustic wave
equation is a pivotal component in existing models. With the advancement of
deep learning, neural networks are applied to numerically solve partial
differential equations by learning the mapping between the inputs and the
solution of the equation, the wave equation in particular, since traditional
methods can be time consuming if numerous instances are to be solved. Previous
works that concentrate on solving the wave equation by neural networks consider
either a single velocity model or multiple simple velocity models, which is
restricted in practice. Therefore, inspired by the idea of operator learning,
this work leverages the Fourier neural operator (FNO) to effectively learn the
frequency domain seismic wavefields under the context of variable velocity
models. Moreover, we propose a new framework paralleled Fourier neural operator
(PFNO) for efficiently training the FNO-based solver given multiple source
locations and frequencies. Numerical experiments demonstrate the high accuracy
of both FNO and PFNO with complicated velocity models in the OpenFWI datasets.
Furthermore, the cross-dataset generalization test verifies that PFNO adapts to
out-of-distribution velocity models. Also, PFNO has robust performance in the
presence of random noise in the labels. Finally, PFNO admits higher
computational efficiency on large-scale testing datasets, compared with the
traditional finite-difference method. The aforementioned advantages endow the
FNO-based solver with the potential to build powerful models for research on
seismic waves.
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