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Renshaw, Megan and Magruder, Lori A., 2025. Advancing Scalable Methods for Surface Water Monitoring: A Novel Integration of Satellite Observations and Machine Learning Techniques. Geosciences, 15(7):255, doi:10.3390/geosciences15070255.
• from the NASA Astrophysics Data System • by the DOI System •
@ARTICLE{2025Geosc..15..255R, author = {{Renshaw}, Megan and {Magruder}, Lori A.}, title = "{Advancing Scalable Methods for Surface Water Monitoring: A Novel Integration of Satellite Observations and Machine Learning Techniques}", journal = {Geosciences}, keywords = {ICESat-2, GRACE-FO, machine learning, hydrology, Sentinel-2, surface water volume}, year = 2025, month = jul, volume = {15}, number = {7}, eid = {255}, pages = {255}, abstract = "{Accurate surface water volume (SWV) estimates are crucial for effective water resource management and for the regional monitoring of hydrological trends. This study introduces a multi-resolution surface water volume estimation framework that integrates ICESat-2 altimetry, Sentinel-1 Synthetic Aperture Radar (SAR), and Sentinel-2 multispectral imagery via machine learning to improve the vertical resolution of a digital elevation model (DEM) to improve the accuracy of SWV estimates. The machine learning approach provides a significant improvement in terrain accuracy relative to the DEM, reducing RMSE by \raisebox{-0.5ex}\textasciitilde66\% and 78\% across the two models, respectively, over the initial data product fidelity. Assessing the resulting SWV estimates relative to GRACE-FO terrestrial water storage in parts of the Amazon Basin, we found strong correlations and basin-wide drying trends. Notably, the high correlation (r > 0.8) between our surface water estimates and the GRACE-FO signal in the Manaus region highlights our method's ability to resolve key hydrological dynamics. Our results underscore the value of improved vertical DEM availability for global hydrological studies and offer a scalable framework for future applications. Future work will focus on expanding our DEM dataset, further validation, and scaling this methodology for global applications.}", doi = {10.3390/geosciences15070255}, adsurl = {https://ui.adsabs.harvard.edu/abs/2025Geosc..15..255R}, adsnote = {Provided by the SAO/NASA Astrophysics Data System} }
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