Abstract
Ground-based datasets of observed snow water equivalent (SWE) are scarce, while gridded SWE estimates from remote-sensing and climate reanalysis are unable to resolve the high spatial variability of snow on the ground. Long-term ground observations of snow depth, in combination with models that can accurately convert snow depth to SWE, can fill this observational gap. Here, we provide a new SWE dataset (NH-SWE) that encompasses 11 071 stations in the Northern Hemisphere (NH) and is available at https://doi.org/10.5281/zenodo.7515603 (Fontrodona-Bach et al., 2023). This new dataset provides daily time series of SWE, varying in length between 1 and 73 years, spanning the period 1950–2022, and covering a wide range of snow climates including many mountainous regions. At each station, observed snow depth was converted to SWE using an established snow-depth-to-SWE conversion model, with excellent model performance using regionalised parameters based on climate variables. The accuracy of the model after parameter regionalisation is comparable to that of the calibrated model. The key advantages and strengths of the regionalised model presented here are its transferability across climates and the high performance in modelling daily SWE dynamics in terms of peak SWE, total snowmelt and duration of the melt season, as assessed here against a comparison model. This dataset is particularly useful for studies that require accurate time series of SWE dynamics, timing of snowmelt onset, and snowmelt totals and duration. It can, for example, be used for climate change impact analyses, water resources assessment and management, validation of remote sensing of snow, hydrological modelling, and snow data assimilation into climate models.
Original language | English |
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Pages (from-to) | 2577–2599 |
Number of pages | 23 |
Journal | Earth System Science Data |
Volume | 15 |
Issue number | 6 |
DOIs | |
Publication status | Published - 23 Jun 2023 |
Bibliographical note
Funding Information:Adrià Fontrodona-Bach acknowledges the UK's Natural Environment Research Council (NERC) CENTA2 doctoral training programme. The computations described in this paper were performed using the University of Birmingham's BlueBEAR HPC service, which provides a high performance computing service to the University's research community. See http://www.birmingham.ac.uk/bear (last access: 20 January 2023) for more details.
Publisher Copyright:
© 2023 Adrià Fontrodona-Bach et al.
Structured keywords
- Water and Environmental Engineering