Deep learning-based fast solver of the shallow water equations
Mojtaba Forghani, Yizhou Qian, Jonghyun Lee, Matthew W. Farthing,, Tyler Hesser, Peter K. Kitanidis, and Eric F. Darve

TL;DR
This paper introduces a machine learning-based fast solver for the shallow water equations that predicts river flow velocities efficiently by estimating bathymetry indirectly and using neural networks, significantly reducing computational costs.
Contribution
It develops a two-stage approach combining bathymetry estimation via PCGA with ML-based solvers, enabling rapid and adaptable river flow predictions without direct bathymetry measurements.
Findings
Fast solvers predict flow velocities with good accuracy.
Significant reduction in computational cost compared to traditional methods.
Validated on Savannah River data with promising results.
Abstract
Fast and reliable prediction of river flow velocities is important in many applications, including flood risk management. The shallow water equations (SWEs) are commonly used for this purpose. However, traditional numerical solvers of the SWEs are computationally expensive and require high-resolution riverbed profile measurement (bathymetry). In this work, we propose a two-stage process in which, first, using the principal component geostatistical approach (PCGA) we estimate the probability density function of the bathymetry from flow velocity measurements, and then use machine learning (ML) algorithms to obtain a fast solver for the SWEs. The fast solver uses realizations from the posterior bathymetry distribution and takes as input the prescribed range of BCs. The first stage allows us to predict flow velocities without direct measurement of the bathymetry. Furthermore, we augment the…
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Taxonomy
TopicsFlood Risk Assessment and Management · Hydrology and Watershed Management Studies · Hydrology and Sediment Transport Processes
MethodsGenetic Algorithms
