ID:
publications-2433
Type:
Peer reviewed articles
Year:
2022
Authors:
Eva Boergens, Andreas Kvas, Annette Eicker, Henryk Dobslaw, Lennart Schawohl, Christoph Dahle, Michael Murbƶck, Frank Flechtner
Title:
Uncertainties of GRACE-based terrestrial water storage anomalies for arbitrary averaging regions
Venue/Journal:
Journal of Geophysical Research: Solid Earth
DOI:
10.1029/2021jb022081
Research type:
Simulation & Modeling
Water System:
Natural Water Bodies
Technical Focus:
Abstract:
AbstractThe application of terrestrial water storage (TWS) data observed with GRACE and GRACEāFO often requires realistic uncertainties. For gridded TWS data, this requires the knowledge of the covariances, which can be derived from the formal, i.e., formally estimated in the parameter estimation, varianceācovariance matrix provided together with the Stokes coefficients. However, the propagation of monthly varianceācovariance matrices to TWS data is computationally expensive, so we apply a spatial covariance model for TWS data. The covariance model provides nonāhomogeneous (location depending), nonāstationary (time depending), and anisotropic (orientation depending) covariances between any two given points. Further, the model accommodates waveālike behavior of EastāWestādirected covariances, which residuals of GRACE striping errors can cause. The main application of such spatial covariances is the estimation of uncertainties for mean TWS time series for arbitrary regions such as river basins. Alternatively, regional uncertainties can be derived from the above mentioned formal varianceācovariance matrices of the Stokes coefficients. This study compares modeled basin uncertainties for GFZ RL06 and ITSGāGrace2018 TWS data with the formal basin uncertainties from the ITSGāGrace 2018 solution. The modeled and formal uncertainties fit both in the spatial and temporal domain. We further evaluate the modeled uncertainties by comparison to empirical uncertainties over arid regions. Here, again the appropriateness of the modeled uncertainties is shown. The results, namely the TWS uncertainties for global river basins, are available via the GravIS portal. Further, we provide a Python toolbox, which allows computing uncertainties and covariance matrices.
Link with Projects:
870353
Link with Tools:
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