Exploring Multi-physics with Extremely Weak Supervision
- URL: http://arxiv.org/abs/2202.01770v1
- Date: Thu, 3 Feb 2022 18:55:09 GMT
- Title: Exploring Multi-physics with Extremely Weak Supervision
- Authors: Shihang Feng, Peng Jin, Yinpeng Chen, Xitong Zhang, Zicheng Liu,
Youzuo Lin
- Abstract summary: We develop a new data-driven multi-physics inversion technique with extremely weak supervision.
Our key finding is that the pseudo labels can be constructed by learning the local relationship among geophysical properties at very sparse locations.
Our results show that we are able to invert for properties without explicit governing equations.
- Score: 23.421788453790302
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multi-physical inversion plays a critical role in geophysics. It has been
widely used to infer various physical properties (such as velocity and
conductivity), simultaneously. Among those inversion problems, some are
explicitly governed by partial differential equations (PDEs), while others are
not. Without explicit governing equations, conventional multi-physical
inversion techniques will not be feasible and data-driven inversion require
expensive full labels. To overcome this issue, we develop a new data-driven
multi-physics inversion technique with extremely weak supervision. Our key
finding is that the pseudo labels can be constructed by learning the local
relationship among geophysical properties at very sparse locations. We explore
a multi-physics inversion problem from two distinct measurements (seismic and
EM data) to three geophysical properties (velocity, conductivity, and CO$_2$
saturation). Our results show that we are able to invert for properties without
explicit governing equations. Moreover, the label data on three geophysical
properties can be significantly reduced by 50 times (from 100 down to only 2
locations).
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