Abstract
Abstract. A long-term time series of ice sheet surface elevation
change (SEC) is an essential parameter to assess the impact of climate
change. In this study, we used an updated plane-fitting least-squares
regression strategy to generate a 30-year surface elevation time series for
the Greenland Ice Sheet (GrIS) at monthly temporal resolution and 5×5 km grid spatial resolution using ERS-1 (European Remote Sensing), ERS-2, Envisat, and
CryoSat-2 satellite radar altimeter observations obtained between August 1991 and December 2020. The ingenious corrections for intermission bias were
applied using an updated plane-fitting least-squares regression strategy.
Empirical orthogonal function (EOF) reconstruction was used to supplement
the sparse monthly gridded data attributable to poor observations in the
early years. Validation using both airborne laser altimeter observations and
the European Space Agency GrIS Climate Change Initiative (CCI) product
indicated that our merged surface elevation time series is reliable. The
accuracy and dispersion of errors of SECs of our results were 19.3 % and
8.9 % higher, respectively, than those of CCI SECs and even 30.9 % and
19.0 % higher, respectively, in periods from 2006–2010 to 2010–2014.
Further analysis showed that our merged time series could provide detailed
insight into GrIS SEC on multiple temporal (up to 30 years) and spatial
scales, thereby providing an opportunity to explore potential associations
between ice sheet change and climatic forcing. The merged surface elevation
time series data are available at
https://doi.org/10.11888/Glacio.tpdc.271658 (Zhang
et al., 2021).
Funder
National Natural Science Foundation of China
National Key Research and Development Program of China
Chinese Academy of Sciences
Subject
General Earth and Planetary Sciences
Cited by
7 articles.
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