A research team has developed an artificial intelligence (AI)-enabled method, named RivDepth, that can map river depth across long reaches with high sediment concentration, areas where conventional satellite bathymetry often struggles. The model combines Sentinel-2 satellite spectral information with an optically derived suspended sediment concentration (SSC) proxy to retrieve water depth pixel by pixel. Tested on the lower Yellow River, one of the world’s most sediment-laden rivers, the model captured complex links among water depth, reflectance, and sediment load with high accuracy. The approach offers a new way to monitor underwater river topography, supporting flood assessment, sediment budget, channel management, and integrated river management.
Researchers from the State Key Laboratory of Hydroscience and Engineering at Tsinghua University, the State Key Laboratory of Water Cycle and Water Security in River Basin, and the State Key Laboratory of Simulation and Regulation of Water Cycle in River Basin at the China Institute of Water Resources and Hydropower Research conducted the study, which was accepted for publication (DOI: 10.1016/j.ese.2026.100711) on May 20, 2026, in Environmental Science and Ecotechnology. The article reports a satellite-based artificial intelligence framework for mapping river depth in high-SSC environments.
The team applied RivDepth to an approximately 786-kilometer reach of the lower Yellow River, from Xixiayuan to Lijin. They used Sentinel-2 Level-2A imagery, field-measured cross-sectional elevation data, water-level records, and in situ SSC observations to construct training and validation datasets. Water bodies, channel centerlines, thalwegs, and river widths were extracted from satellite imagery, while cloud-affected pixels were reconstructed to improve coverage. RivDepth’s innovation lies in its adaptive AI expert module, which integrates parallel random forest (PRF), extreme gradient boosting (XGBoost), support vector regression (SVR), and multilayer perceptron (MLP). Rather than applying a single model uniformly to all pixels, RivDepth performs preliminary prediction, inference, and decision-making to select the most suitable strategy for each water condition. Shapley additive explanations (SHAP) analysis identified shortwave infrared bands, red and red-edge bands, the water vapor band, the aerosol/blue band, and the SSC proxy as key predictors.
By learning different depth–reflectance–SSC patterns and choosing prediction strategies at the pixel level, the model can adapt to spatially changing sediment and channel conditions. This is particularly important for rivers such as the Yellow River, where suspended sediment, flow structure, and optical signals vary sharply over long distances. The method turns routine satellite observations into actionable depth information for river science and management. More frequent and continuous bathymetric information could help track channel change, identify thalweg migration, improve sediment-transport modeling, and support flood-risk and habitat assessments. RivDepth can be further improved as higher-resolution satellite imagery and more accurate spatial SSC indicators become available. With broader validation, the workflow may be adapted to other turbid river systems, offering a scalable tool for integrated watershed monitoring and management.
The study was supported by the Team Key Project of the State Key Laboratory of Hydroscience and Engineering (No. sklhse-TD-2024-E01), and the National Natural Science Foundation of China (U2243218, U2243222).
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