• Sorted by Date • Sorted by Last Name of First Author •
Chen, Jun, Wang, Linsong, Chen, Chao, and Peng, Zhenran, 2025. Downscaling and Gap-Filling GRACE-Based Terrestrial Water Storage Anomalies in the Qinghai–Tibet Plateau Using Deep Learning and Multi-Source Data. Remote Sensing, 17(8):1333, doi:10.3390/rs17081333.
• from the NASA Astrophysics Data System • by the DOI System •
@ARTICLE{2025RemS...17.1333C, author = {{Chen}, Jun and {Wang}, Linsong and {Chen}, Chao and {Peng}, Zhenran}, title = "{Downscaling and Gap-Filling GRACE-Based Terrestrial Water Storage Anomalies in the Qinghai{\textendash}Tibet Plateau Using Deep Learning and Multi-Source Data}", journal = {Remote Sensing}, keywords = {GRACE, terrestrial water storage anomalies, downscaling, gated recurrent unit, Qinghai{\textendash}Tibet Plateau}, year = 2025, month = apr, volume = {17}, number = {8}, eid = {1333}, pages = {1333}, abstract = "{The Qinghai{\textendash}Tibet Plateau (QTP), a critical hydrological regulator for Asia through its extensive glacier systems, high- altitude lakes, and intricate network of rivers, exhibits amplified sensitivity to climate-driven alterations in precipitation regimes and ice mass balance. While the Gravity Recovery and Climate Experiment (GRACE) and its Follow-On (GRACE-FO) missions have revolutionized monitoring of terrestrial water storage anomalies (TWSAs) across this hydrologically sensitive region, spatial resolution limitations (3{\textdegree}, equivalent to \raisebox{-0.5ex}\textasciitilde300 km) constrain process-scale analysis, compounded by mission temporal discontinuity (data gaps). In this study, we present a novel downscaling framework integrating temporal gap compensation and spatial refinement to a 0.25{\textdegree} resolution through Gated Recurrent Unit (GRU) neural networks, an architecture optimized for univariate time series modeling. Through the assimilation of multi-source hydrological parameters (glacier mass flux, cryosphere{\textendash}precipitation interactions, and land surface processes), the GRU-based result resolves nonlinear storage dynamics while bridging inter-mission observational gaps. Grid-level implementation preserves mass conservation principles across heterogeneous topographies, successfully reconstructing seasonal-to-interannual TWSA variability and also its long-term trends. Comparative validation against GRACE mascon solutions and process-based hydrological models demonstrates enhanced capacity in resolving sub-basin heterogeneity. This GRU-derived high-resolution TWSA is especially valuable for dissecting local variability in areas such as the Brahmaputra Basin, where complex water cycling can affect downstream water security. Our study provides transferable methodologies for mountainous hydrogeodesy analysis under evolving climate regimes. Future enhancements through physics-informed deep learning and next-generation climatology{\textendash}hydrology{\textendash}gravimetry synergy (e.g., observations and models) could further constrain uncertainties in extreme elevation zones, advancing the predictive understanding of Asia's water tower sustainability.}", doi = {10.3390/rs17081333}, adsurl = {https://ui.adsabs.harvard.edu/abs/2025RemS...17.1333C}, adsnote = {Provided by the SAO/NASA Astrophysics Data System} }
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