Remote Sensing of River Discharge From Medium‐Resolution Satellite Imagery Based on Deep Learning

Author:

Hao Zhen12ORCID,Xiang Naier3,Cai Xiaobin1ORCID,Zhong Ming4,Jin Jin5,Du Yun1,Ling Feng16ORCID

Affiliation:

1. Key Laboratory for Environment and Disaster Monitoring and Evaluation Innovation Academy for Precision Measurement Science and Technology Chinese Academy of Sciences Wuhan China

2. University of Chinese Academy of Sciences Beijing China

3. College of Art and Sciences University of Virginia Charlottesville VA USA

4. School of Geography and Planning Sun Yat‐sen University Guangzhou China

5. Yellow River Institute of Hydraulic Research Zhengzhou China

6. State Key Laboratory of Geodesy and Earth's Dynamics Innovation Academy of Precision Measurement of Science and Technology Chinese Academy of Sciences Wuhan China

Abstract

AbstractAccurate monitoring of river discharge variations is essential for managing floods and droughts and understanding the response of global river systems to climate change. Remote sensing of discharge (RSQ) offers a timely and efficient alternative for widespread monitoring, particularly in ungauged areas. Current methods often struggle with accuracy, especially when estimating the width of narrow rivers from medium‐resolution images. We first observe that, although estimating the width variation of narrow rivers can be challenging from medium‐resolution satellite imagery, river discharge still correlates with river surface color or reflectance. However, existing methods can only correlate river surface reflectance with discharge in gauged rivers. Here, we introduce a novel method employing an advanced Transformer architecture to map river discharge variations directly from time‐series reflectance imagery. Our model, trained on quality‐checked data from 2,036 discharge gauges, outperforms existing methods in discharge estimation accuracy and is less affected by the need for precise river width estimation. The proposed model yields positive Kling‐Gupta Efficiency (KGE) in 68.6% of ungauged rivers, a substantial improvement over the BAM and geoBAM methods, which show positive KGEs in only 28.4% and 33.1% of rivers, respectively. Notably, this performance is achieved despite two‐thirds of the rivers being less than 100 m wide, a range where traditional RSQ methods typically struggle, and the RSQ performance does not show degradation for braided rivers. Our approach suggests a significant shift toward more efficient, extensive, and adaptable space‐based river discharge monitoring.

Publisher

American Geophysical Union (AGU)

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