Satellite-based mapping of sediment dynamics and planform mobility in large river basins

Fellow

LE STUDIUM Multidisciplinary Journal, 2026, 10, 21-25

Michael Nones1,2*, Stéphane Rodrigues3,4, Aurélien Lacoste5

1LE STUDIUM Institute for Advanced Studies, 45000 Orléans, France

2Institute of Geophysics Polish Academy of Sciences, 01452 Warsaw, Poland

3Université de Tours. UMR7324 CNRS CITERES. F-37200 Tours, France 

4Graduate School of Engineering, Polytech Tours, University of Tours, 37200, France

5Université de Tours. UR 6293 GéHCO (GéoHydrosystèmes continentaux). F-37200 Tours, France

Abstract

Suspended sediment concentration (SSC) is a key indicator of river morphodynamics and water quality, yet long-term spatial monitoring remains constrained by sparse in-situ measurements. This study develops a satellite-based framework to estimate SSC along the Loire River (France) over 2005–2025 by combining Landsat 5/7/8/9 imagery processed in Google Earth Engine (GEE) with field SSC observations. A feed-forward neural network (R² = 0.94, RMSE = 3.65 mg/l) was trained on five spectral bands across three turbidity regimes and approximated by a compact surrogate model (R² = 0.89) suitable for operational GEE deployment. SSC maps reveal contrasting morphodynamic behaviour along the reach, with secondary-channel connectivity upstream and channel deepening downstream. River discharge emerged as the dominant SSC control, while rainfall has secondary importance. The approach demonstrates the scalability of combining machine learning and satellite imagery for long-term sediment monitoring in large rivers.

Keywords

Google Earth Engine, Loire River, Planform dynamics, Satellite, Suspended sediment concentration
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LE STUDIUM Multidisciplinary Journal