TL;DR
This paper introduces a two-stage deep learning framework that estimates river flow velocities efficiently by combining bathymetry inference from flow data with machine learning-based flow prediction, reducing computational costs.
Contribution
It presents a novel two-stage approach integrating PCGA and multiple ML algorithms for fast, accurate river flow velocity prediction without direct bathymetry measurements.
Findings
Fast solvers achieve good accuracy in flow velocity prediction.
Significantly lower computational cost compared to traditional methods.
Method validated on Savannah River data.
Abstract
Fast and reliable prediction of riverine flow velocities is important in many applications, including flood risk management. The shallow water equations (SWEs) are commonly used for prediction of the flow velocities. However, accurate and fast prediction with standard SWE solvers is challenging in many cases. Traditional approaches are computationally expensive and require high-resolution riverbed profile measurement ( bathymetry) for accurate predictions. As a result, they are a poor fit in situations where they need to be evaluated repetitively due, for example, to varying boundary condition (BC), or when the bathymetry is not known with certainty. In this work, we propose a two-stage process that tackles these issues. First, using the principal component geostatistical approach (PCGA) we estimate the probability density function of the bathymetry from flow velocity measurements, and…
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Taxonomy
MethodsGenetic Algorithms
