Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting

The combination of numerical weather prediction and snowpack models has potential to provide valuable information about snow avalanche conditions in remote areas. However, the output of snowpack models is sensitive to precipitation inputs, which can be difficult to verify in mountainous regions. To...

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Bibliographic Details
Published in:The Cryosphere
Main Authors: S. Horton, P. Haegeli
Format: Article in Journal/Newspaper
Language:English
Published: Copernicus Publications 2022
Subjects:
geo
Online Access:https://doi.org/10.5194/tc-16-3393-2022
https://tc.copernicus.org/articles/16/3393/2022/tc-16-3393-2022.pdf
https://doaj.org/article/9ab937f20b064c37a9c050a31ecb0aa4
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spelling fttriple:oai:gotriple.eu:oai:doaj.org/article:9ab937f20b064c37a9c050a31ecb0aa4 2023-05-15T18:32:17+02:00 Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting S. Horton P. Haegeli 2022-08-01 https://doi.org/10.5194/tc-16-3393-2022 https://tc.copernicus.org/articles/16/3393/2022/tc-16-3393-2022.pdf https://doaj.org/article/9ab937f20b064c37a9c050a31ecb0aa4 en eng Copernicus Publications doi:10.5194/tc-16-3393-2022 1994-0416 1994-0424 https://tc.copernicus.org/articles/16/3393/2022/tc-16-3393-2022.pdf https://doaj.org/article/9ab937f20b064c37a9c050a31ecb0aa4 undefined The Cryosphere, Vol 16, Pp 3393-3411 (2022) geo envir Journal Article https://vocabularies.coar-repositories.org/resource_types/c_6501/ 2022 fttriple https://doi.org/10.5194/tc-16-3393-2022 2023-01-22T18:59:33Z The combination of numerical weather prediction and snowpack models has potential to provide valuable information about snow avalanche conditions in remote areas. However, the output of snowpack models is sensitive to precipitation inputs, which can be difficult to verify in mountainous regions. To examine how existing observation networks can help interpret the accuracy of snowpack models, we compared snow depths predicted by a weather–snowpack model chain with data from automated weather stations and manual observations. Data from the 2020–2021 winter were compiled for 21 avalanche forecast regions across western Canada covering a range of climates and observation networks. To perform regional-scale comparisons, SNOWPACK model simulations were run at select grid points from the High-Resolution Deterministic Prediction System (HRDPS) numerical weather prediction model to represent conditions at treeline elevations, and observed snow depths were upscaled to the same locations. Snow depths in the Coast Mountain range were systematically overpredicted by the model, while snow depths in many parts of the interior Rocky Mountain range were underpredicted. These discrepancies had a greater impact on simulated snowpack conditions in the interior ranges, where faceting was more sensitive to snow depth. To put the comparisons in context, the quality of the upscaled observations was assessed by checking whether snow depth changes during stormy periods were consistent with the forecast avalanche hazard. While some regions had high-quality observations, other regions were poorly represented by available observations, suggesting in some situations modelled snow depths could be more reliable than observations. The analysis provides insights into the potential for validating weather and snowpack models with readily available observations, as well as for how avalanche forecasters can better interpret the accuracy of snowpack simulations. Article in Journal/Newspaper The Cryosphere Unknown Canada The Cryosphere 16 8 3393 3411
institution Open Polar
collection Unknown
op_collection_id fttriple
language English
topic geo
envir
spellingShingle geo
envir
S. Horton
P. Haegeli
Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
topic_facet geo
envir
description The combination of numerical weather prediction and snowpack models has potential to provide valuable information about snow avalanche conditions in remote areas. However, the output of snowpack models is sensitive to precipitation inputs, which can be difficult to verify in mountainous regions. To examine how existing observation networks can help interpret the accuracy of snowpack models, we compared snow depths predicted by a weather–snowpack model chain with data from automated weather stations and manual observations. Data from the 2020–2021 winter were compiled for 21 avalanche forecast regions across western Canada covering a range of climates and observation networks. To perform regional-scale comparisons, SNOWPACK model simulations were run at select grid points from the High-Resolution Deterministic Prediction System (HRDPS) numerical weather prediction model to represent conditions at treeline elevations, and observed snow depths were upscaled to the same locations. Snow depths in the Coast Mountain range were systematically overpredicted by the model, while snow depths in many parts of the interior Rocky Mountain range were underpredicted. These discrepancies had a greater impact on simulated snowpack conditions in the interior ranges, where faceting was more sensitive to snow depth. To put the comparisons in context, the quality of the upscaled observations was assessed by checking whether snow depth changes during stormy periods were consistent with the forecast avalanche hazard. While some regions had high-quality observations, other regions were poorly represented by available observations, suggesting in some situations modelled snow depths could be more reliable than observations. The analysis provides insights into the potential for validating weather and snowpack models with readily available observations, as well as for how avalanche forecasters can better interpret the accuracy of snowpack simulations.
format Article in Journal/Newspaper
author S. Horton
P. Haegeli
author_facet S. Horton
P. Haegeli
author_sort S. Horton
title Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
title_short Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
title_full Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
title_fullStr Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
title_full_unstemmed Using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
title_sort using snow depth observations to provide insight into the quality of snowpack simulations for regional-scale avalanche forecasting
publisher Copernicus Publications
publishDate 2022
url https://doi.org/10.5194/tc-16-3393-2022
https://tc.copernicus.org/articles/16/3393/2022/tc-16-3393-2022.pdf
https://doaj.org/article/9ab937f20b064c37a9c050a31ecb0aa4
geographic Canada
geographic_facet Canada
genre The Cryosphere
genre_facet The Cryosphere
op_source The Cryosphere, Vol 16, Pp 3393-3411 (2022)
op_relation doi:10.5194/tc-16-3393-2022
1994-0416
1994-0424
https://tc.copernicus.org/articles/16/3393/2022/tc-16-3393-2022.pdf
https://doaj.org/article/9ab937f20b064c37a9c050a31ecb0aa4
op_rights undefined
op_doi https://doi.org/10.5194/tc-16-3393-2022
container_title The Cryosphere
container_volume 16
container_issue 8
container_start_page 3393
op_container_end_page 3411
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