An Intriguing Property of Geophysics Inversion

04/28/2022
by   Yinan Feng, et al.
0

Inversion techniques are widely used to reconstruct subsurface physical properties (e.g., velocity, conductivity, and others) from surface-based geophysical measurements (e.g., seismic, electric/magnetic (EM) data). The problems are governed by partial differential equations (PDEs) like the wave or Maxwell's equations. Solving geophysical inversion problems is challenging due to the ill-posedness and high computational cost. To alleviate those issues, recent studies leverage deep neural networks to learn the inversion mappings from geophysical measurements to the geophysical property directly. In this paper, we show that such a mapping can be well modeled by a very shallow (but not wide) network with only five layers. This is achieved based on our new finding of an intriguing property: a near-linear relationship between the input and output, after applying integral transform in high dimensional space. In particular, when dealing with the inversion from seismic data to subsurface velocity governed by a wave equation, the integral results of velocity with Gaussian kernels are linearly correlated to the integral of seismic data with sine kernels. Furthermore, this property can be easily turned into a light-weight encoder-decoder network for inversion. The encoder contains the integration of seismic data and the linear transformation without need for fine-tuning. The decoder only consists of a single transformer block to reverse the integral of velocity. Experiments show that this interesting property holds for two geophysics inversion problems over four different datasets. Compared to much deeper InversionNet <cit.>, our method achieves comparable accuracy, but consumes significantly fewer parameters.

READ FULL TEXT

page 7

page 11

page 12

research
02/03/2022

Exploring Multi-physics with Extremely Weak Supervision

Multi-physical inversion plays a critical role in geophysics. It has bee...
research
10/14/2021

Unsupervised Learning of Full-Waveform Inversion: Connecting CNN and Partial Differential Equation in a Loop

This paper investigates unsupervised learning of Full-Waveform Inversion...
research
03/25/2021

InversionNet3D: Efficient and Scalable Learning for 3D Full Waveform Inversion

Recent progress in the use of deep learning for Full Waveform Inversion ...
research
11/23/2021

Variational encoder geostatistical analysis (VEGAS) with an application to large scale riverine bathymetry

Estimation of riverbed profiles, also known as bathymetry, plays a vital...
research
01/23/2019

Deep learning Inversion of Seismic Data

In this paper, we propose a new method to tackle the mapping challenge f...
research
02/24/2021

Reconstruction, with tunable sparsity levels, of shear-wave velocity profiles from surface wave data

The analysis of surface wave dispersion curves is a way to infer the ver...
research
11/17/2022

Learning 4DVAR inversion directly from observations

Variational data assimilation and deep learning share many algorithmic a...

Please sign up or login with your details

Forgot password? Click here to reset