Projects per year
Abstract
The level-2 time-variable gravity fields obtained from Gravity Recovery and Climate Experiment (GRACE) and its follow-on (GRACE-FO) mission are widely used in multi-discipline geoscience studies. However, the post-processing of these gravity fields to obtain a desired signal is rather challenging for users who are not familiar with the level-2 products. In addition, the error assessment/quantification of these derived signals, which is of increasing demand in science application, is still a challenging issue even among professional GRACE(-FO) users. In this paper, we review the known steps of post-processing, along with their implementation strategies. We also make a comprehensive investigation into the error of GRACE(-FO) based mass changes, and for the first time, we define the so-called error into three independent categories. This work, including the post-processing steps and the assessment of each error, is integrated into an open-source Python toolbox called SAGEA (SAtellite Gravity Error Assessment). With diverse options, SAGEA provides flexibility to generate signals along with the full error from level-2 products. In addition, a novel in-depth optimization of our post-processing implementation gains a speed-up of ∼100 times better than traditional method. For verification, a number of case studies are carried out with SAGEA to obtain a comprehensive error assessment of GRACE(-FO) level-2 product at global and local scales.
Original language | English |
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Article number | 105825 |
Journal | Computers & Geosciences |
Volume | 196 |
Number of pages | 15 |
ISSN | 0098-3004 |
DOIs | |
Publication status | Published - Feb 2025 |
Keywords
- Basin scale
- Error Analysis
- GRACE
- GRACE-FO
- Python Package
- Terrestrial water storage (TWS)
- Uncertainty Estimation
- Error assessment
- Post-processing
- Python toolbox
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Dive into the research topics of 'SAGEA: A toolbox for comprehensive error assessment of GRACE and GRACE-FO based mass changes'. Together they form a unique fingerprint.Projects
- 1 Active
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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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SaGEA Toolbox
Liu, S. (Creator), Yang, F. (Creator) & Forootan, E. (Contributor), Github, Dec 2024
DOI: https://github.com/AAUGeodesy/SaGEA
Dataset