Toward ultra-efficient high-fidelity prediction of bed morphodynamics of large-scale meandering rivers using a novel LES-trained machine learning approach
Zexia Zhang, Mehrshad Gholami Anjiraki, Hossein Seyedzadeh, Fotis, Sotiropoulos, and Ali Khosronejad

TL;DR
This paper introduces a novel machine learning approach trained on LES simulation data to accurately and efficiently predict bed morphodynamics in large-scale meandering rivers, reducing computational costs significantly.
Contribution
It presents a convolutional neural network autoencoder trained on LES data to predict river bed shear stress and morphology, offering a high-fidelity, low-cost alternative to traditional simulations.
Findings
The CNNAE accurately predicts bed shear stress and morphology.
The approach reduces computational costs compared to coupled LES models.
The method demonstrates high feasibility and efficiency.
Abstract
Flood-induced deformation of the bed topography of fluvial meandering rivers could lead to river bank displacement, structural failure of the infrastructures, and the propagation of scour or deposition features. The assessment of sediment transport in large-scale meanders is, therefore, a key environmental issue. High-fidelity numerical models provide powerful tools for such assessments. However, high-fidelity simulations of large-scale rivers using the coupled flow and morphodynamics modules can be computationally expensive, owing to the costly two-way coupling between turbulence and bed morphodynamics. This study seeks to present a novel machine learning approach, which is trained using coupled large-eddy simulation (LES) and morphodynamics results. The proposed machine learning approach predicts bed shear stress and equilibrium bed morphology of large-scale meanders under bankfull…
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Taxonomy
TopicsHydrology and Sediment Transport Processes · Landslides and related hazards · Hydrology and Watershed Management Studies
