Dataset on new snow water equivalent

This dataset includes quality-controlled measurements of new snow depth (HN), new snow water equivalent (HNW), snow depth (HS), and snow water equivalent (SWE) from 41 stations located in Switzerland for the period from 2016-09-01 to 2022-08-31.

These data are the basis of the following publication: Magnusson J., Cluzet B., Quéno L., Mott R., Oberrauch M., Mazzotti G., Marty C., Jonas T., 2025, Evaluating methods to estimate the water equivalent of new snow from daily snow depth recordings, Cold Regions Science and Technology, https://doi.org/10.1016/j.coldregions.2025.104435.

Abstract

The water equivalent of new snow (HNW) plays a crucial role in various fields, including hydrological modeling, avalanche forecasting, and assessing snow loads on structures. However, in contrast to snow depth (HS), obtaining HNW measurements is challenging as well as time-consuming and is hence rarely measured. Therefore, we assess the reliability of two semi-empirical methods, HS2SWE and ΔSNOW, for estimating HNW. These methods are designed to simulate continuous water equivalent of the snowpack (SWE) from daily HS only, with changes in SWE yielding daily HNW estimates. We compare both parametric methods against HNW predictions from a physics-based snow model (FSM2oshd) that integrates daily HS recordings using data assimilation. Our findings reveal that all methods exhibit similar performance, with relative biases of less than ~3 % in replicating SWE observations commonly used for model evaluations. However, the ΔSNOW model tends to underestimate daily HNW by ~17 %, whereas HS2SWE and FSM2oshd combined with a particle filter data assimilation scheme provide nearly unbiased estimates, with relative biases below ~5 %. In contrast to the parsimonious parametric methods, we show that the physics-based approach can yield information about unobserved variables, such as total solid precipitation amounts, that may differ from HNW due to concurrent melt. Overall, our results underscore the potential of utilizing commonly available daily HS data in conjunction with appropriate modeling techniques to provide valuable insights into snow accumulation processes. Our study demonstrates that daily SWE observations or supplementary measurements like HNW are important for validating the day-to-day accuracy of simulations and should ideally already be incorporated during the calibration and development of models.

Acknowlegements

These data were recorded by SLF observers and staff members. Their contribution is gratefully acknowledged.

Funding Information:

This work was supported by:
  • WSL Institute for Snow and Avalanche Research SLF
  • Swiss Federal Office for the Environment (FOEN)

Related Publications

wsl:33890 wsl:6621

Citation:

Magnusson, Jan; Jonas, Tobias (2025). Dataset on new snow water equivalent. EnviDat. doi:10.16904/envidat.590.

DataCite ISO 19139 GCMD DIF README.txt BibTex RIS

Data and Resources

Metadata

Field Values
DOI 10.16904/envidat.590
Publication State Published
Authors
  • Email: jan.magnussonfoo(at)slf.ch Given Name: Jan Family Name: Magnusson
  • Email: jonasfoo(at)slf.ch ORCID: 0000-0003-0386-8676 Given Name: Tobias Family Name: Jonas Affiliation: SLF
Contact Person Given Name: Jan Family Name: Magnusson Email: jan.magnussonfoo(at)slf.ch
Subtitles
Publication Publisher: EnviDat Year: 2025
Dates
  • Type: Collected Date: 2016-09-01 End Date: 2022-08-31
Version 1.0
Type dataset
General Type Dataset
Language
Location
Content License Creative Commons Attribution    [Open Data]
Last Updated March 4, 2025, 10:59 (UTC)
Created February 5, 2025, 12:13 (UTC)