Variational encoder geostatistical analysis (VEGAS) with an application
to large scale riverine bathymetry
- URL: http://arxiv.org/abs/2111.11719v1
- Date: Tue, 23 Nov 2021 08:27:48 GMT
- Title: Variational encoder geostatistical analysis (VEGAS) with an application
to large scale riverine bathymetry
- Authors: Mojtaba Forghani, Yizhou Qian, Jonghyun Lee, Matthew Farthing, Tyler
Hesser, Peter K. Kitanidis, and Eric F. Darve
- Abstract summary: Estimation of riverbed profiles, also known as bathymetry, plays a vital role in many applications.
We propose a reduced-order model (ROM) based approach that utilizes a variational autoencoder (VAE), a type of deep neural network with a narrow layer in the middle.
We have tested our inversion approach on a one-mile reach of the Savannah River, GA, USA.
- Score: 1.2093180801186911
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Estimation of riverbed profiles, also known as bathymetry, plays a vital role
in many applications, such as safe and efficient inland navigation, prediction
of bank erosion, land subsidence, and flood risk management. The high cost and
complex logistics of direct bathymetry surveys, i.e., depth imaging, have
encouraged the use of indirect measurements such as surface flow velocities.
However, estimating high-resolution bathymetry from indirect measurements is an
inverse problem that can be computationally challenging. Here, we propose a
reduced-order model (ROM) based approach that utilizes a variational
autoencoder (VAE), a type of deep neural network with a narrow layer in the
middle, to compress bathymetry and flow velocity information and accelerate
bathymetry inverse problems from flow velocity measurements. In our
application, the shallow-water equations (SWE) with appropriate boundary
conditions (BCs), e.g., the discharge and/or the free surface elevation,
constitute the forward problem, to predict flow velocity. Then, ROMs of the
SWEs are constructed on a nonlinear manifold of low dimensionality through a
variational encoder. Estimation with uncertainty quantification (UQ) is
performed on the low-dimensional latent space in a Bayesian setting. We have
tested our inversion approach on a one-mile reach of the Savannah River, GA,
USA. Once the neural network is trained (offline stage), the proposed technique
can perform the inversion operation orders of magnitude faster than traditional
inversion methods that are commonly based on linear projections, such as
principal component analysis (PCA), or the principal component geostatistical
approach (PCGA). Furthermore, tests show that the algorithm can estimate the
bathymetry with good accuracy even with sparse flow velocity measurements.
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