• Sorted by Date • Sorted by Last Name of First Author •
Sun, Zhangli, Long, Di, Yang, Wenting, Li, Xueying, and Pan, Yun, 2020. Reconstruction of GRACE Data on Changes in Total Water Storage Over the Global Land Surface and 60 Basins. Water Resources Research, 56(4):e2019WR026250, doi:10.1029/2019WR026250.
• from the NASA Astrophysics Data System • by the DOI System •
@ARTICLE{2020WRR....5626250S,
author = {{Sun}, Zhangli and {Long}, Di and {Yang}, Wenting and {Li}, Xueying and {Pan}, Yun},
title = "{Reconstruction of GRACE Data on Changes in Total Water Storage Over the Global Land Surface and 60 Basins}",
journal = {Water Resources Research},
keywords = {GRACE, spherical harmonics, mascons, machine learning, data gaps, reconstruction},
year = 2020,
month = apr,
volume = {56},
number = {4},
eid = {e2019WR026250},
pages = {e2019WR026250},
abstract = "{Launched in May 2018, the Gravity Recovery and Climate Experiment
Follow-On mission (GRACE-FO){\textemdash}the successor of the
erstwhile GRACE mission{\textemdash}monitors changes in total
water storage, which is a critical state variable of the
regional and global hydrologic cycles. However, the gap between
data of the two missions is breaking the continuity of the
observations and limiting its further application. In this
study, we used three learning-based models, that is, deep neural
network, multiple linear regression (MLR), and seasonal
autoregressive integrated moving average with exogenous
variables, and six GRACE solutions (i.e., Jet Propulsion
Laboratory spherical harmonics (JPL-SH), Center for Space
Research SH (CSR-SH), GeoforschungsZentrum Potsdam SH (GFZ-SH),
JPL mass concentration blocks (mascons) (JPL-M), CSR mascons
(CSR-M), and Goddard Space Flight Center mascons (GSFC-M)) to
reconstruct the missing monthly data at a grid cell scale.
Evaluation showed that the three learning-based models were
reliable for the reconstruction of GRACE data in areas with
humid and no/low human interventions. The deep neural network
models slightly outperformed the seasonal autoregressive
integrated moving average with exogenous variables models and
significantly outperformed the multiple linear regression models
in most of 60 basins studied. The three GRACE mascon data sets
performed better than the SH data sets at the basin scale. The
models with SH solutions showed similar performance, but the
models with the mascon solutions varied markedly in some basins.
Results of this study are expected to provide a reference for
bridging the data gaps between the GRACE and GRACE-FO satellites
and for selecting suitable GRACE solutions for regional
hydrologic studies.}",
doi = {10.1029/2019WR026250},
adsurl = {https://ui.adsabs.harvard.edu/abs/2020WRR....5626250S},
adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}
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