Publication | Open Access
Global high-resolution total water storage anomalies from self-supervised data assimilation using deep learning algorithms
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Citations
60
References
2024
Year
EngineeringMachine LearningWater QuantityClimate ModelingEarth System ScienceData AssimilationEarth ScienceGlobal TwsasData ScienceSpatial ResolutionHydroclimate ModelingHydrological ModelingWater StorageClimate SciencesSelf-supervised Data AssimilationGeographyNew Loss FunctionDeep LearningHydrologyClimate DynamicsWater BalanceClimatologyWater ResourcesSurface-water HydrologyLand Surface ModelingDeep Learning AlgorithmsSurface Water
Abstract Total water storage anomalies (TWSAs) describe the variations of the terrestrial water cycle, which is essential for understanding our climate system. This study proposes a self-supervised data assimilation model with a new loss function to provide global TWSAs with a spatial resolution of 0.5°. The model combines hydrological simulations as well as measurements from the Gravity Recovery and Climate Experiment (GRACE) and its follow-on (GRACE-FO) satellite missions. The efficiency of the high-resolution information is proved by closing the water balance equation in small basins while preserving large-scale accuracy inherited from the GRACE(-FO) measurements. The product contributes to monitoring natural hazards locally and shows potential for better understanding the impacts of natural and anthropogenic activities on the water cycle. We anticipate our approach to be generally applicable to other TWSA data sources and the resulting products to be valuable for the geoscience community and society.
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