Projects per year
Abstract
Global terrestrial water storage anomaly (TWSA) products from the Gravity Recovery and Climate Experiment (GRACE) and its Follow-On mission (GRACE/FO) have an approximately three-month latency, significantly limiting their operational use in water management and drought monitoring. To address this challenge, we develop a Bayesian convolutional neural network (BCNN) to predict TWSA fields with uncertainty estimates during the latency period. The results demonstrate that BCNN provides near-real-time TWSA estimates that closely match GRACE/FO observations, with median correlation coefficients of 0.92–0.95, Nash-Sutcliffe efficiencies of 0.81–0.89, and root mean squared errors of 1.79–2.26 cm for one- to three-month ahead predictions. More importantly, the model advances global hydrological drought monitoring by enabling detection up to three months before GRACE/FO data availability, with median characterization mismatches below 16.4%. This breakthrough in early warning capability addresses a fundamental constraint in satellite-based hydrological monitoring and offers water resource managers critical lead time to implement drought mitigation strategies.
Original language | English |
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Article number | e2024GL112677 |
Journal | Journal of Geophysical Research |
Volume | 52 |
Issue number | 7 |
ISSN | 0148-0227 |
DOIs | |
Publication status | Published - 16 Apr 2025 |
Keywords
- Deep Learning
- Drought
- Drought indices
- Forecast
- GRACE
- GRACE-FO
- Hydrology
- Land surface model
- Terrestrial water storage (TWS)
- data latency
- Bayesian convolutional neural network
- deep learning
- hydrological drought
- terrestrial water storage anomaly
Fingerprint
Dive into the research topics of 'Near-real-time monitoring of global terrestrial water storage anomalies and hydrological droughts'. Together they form a unique fingerprint.Projects
- 2 Active
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A Novel Synergy of Physics-based and Data-driven Methods for Reliable Hydrological Predictions under Changing Climate
Schumacher, M. (PI), Forootan, E. (CoI), Döll, P. (CoI), Wedi, N. (CoI), Bates, P. (CoI), Jagdhuber, T. (CoI) & van Dijk, A. I. (CoI)
01/04/2024 → 31/03/2029
Project: Research
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DANSk-LSM: Developing efficient multi-sensor Data Assimilation frameworks for integrating Earth ObservatioN Satellite data into Land Surface Models (DANSk-LSM)
Forootan, E. (PI), Schumacher, M. (CoI), Yang, F. (Project Participant) & Retegui Schiettekatte, L. A. (Project Participant)
Uddannelses- og forskningsministeriet
01/09/2022 → 31/08/2026
Project: Research
Datasets
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DL4TWS: Near-real-time monitoring of global terrestrial water storage anomalies and hydrological droughts
Mo, S. (Creator), Schumacher, M. (Creator), van Dijk, A. (Creator) & Forootan, E. (Creator), Github, Feb 2025
DOI: https://github.com/AAUGeodesy/DL4TWSA
Dataset