Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope

Abstract Continuous data on spatial and temporal patterns of snowmelt rates are essential for hydrological studies, but are commonly not available, especially in the subarctic, mainly due to high monitoring costs. In this study, temperature loggers were used to measure local and microscale variation...

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Main Authors: Meriö, L.-J. (Leo-Juhani), Marttila, H. (Hannu), Ala-aho, P. (Pertti), Hänninen, P. (Pekka), Okkonen, J. (Jarkko), Sutinen, R. (Raimo), Kløve, B. (Bjørn)
Format: Article in Journal/Newspaper
Language:English
Published: Elsevier 2018
Subjects:
Online Access:http://urn.fi/urn:nbn:fi-fe2018042418449
id ftunivoulu:oai:oulu.fi:nbnfi-fe2018042418449
record_format openpolar
spelling ftunivoulu:oai:oulu.fi:nbnfi-fe2018042418449 2023-07-30T04:05:50+02:00 Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope Meriö, L.-J. (Leo-Juhani) Marttila, H. (Hannu) Ala-aho, P. (Pertti) Hänninen, P. (Pekka) Okkonen, J. (Jarkko) Sutinen, R. (Raimo) Kløve, B. (Bjørn) 2018 application/pdf http://urn.fi/urn:nbn:fi-fe2018042418449 eng eng Elsevier info:eu-repo/semantics/altIdentifier/pissn/0165-232X info:eu-repo/semantics/altIdentifier/eissn/1872-7441 info:eu-repo/semantics/openAccess © 2018 Elsevier B.V. All rights reserved. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http:/creativecommons.org/licenses/by-nc-nd/4.0/ https://creativecommons.org/licenses/by-nc-nd/4.0/ Degree-day factor High resolution Low-cost Snow temperature measurements Snowmelt variability Subarctic info:eu-repo/semantics/article info:eu-repo/semantics/acceptedVersion 2018 ftunivoulu 2023-07-08T19:56:30Z Abstract Continuous data on spatial and temporal patterns of snowmelt rates are essential for hydrological studies, but are commonly not available, especially in the subarctic, mainly due to high monitoring costs. In this study, temperature loggers were used to measure local and microscale variations in snowpack temperature, in order to understand snowmelt processes and rates in subarctic northern Finland. The loggers were deployed on six test plots along a hillslope with varying topography (elevation and aspect) and vegetation (forest, transitional zone and mires, i.e. treeless peatlands) during two consecutive winters (2014 and 2015). At each test plot, the sensors were installed in five locations, at two heights in a snow profile. Algorithms were developed to analyse the snowmelt rates from high-resolution snowpack temperature data. The validity of the results was evaluated using snow depth and soil moisture data from adjacent reference sensors and the results were tested using an empirical degree-day snow model calibrated for each test plot. Snowmelt rates were relatively similar in mires (median 2.3 mm d−1 °C−1) and forests (median 2.6 mm d−1 °C−1) with apparent inter-annual variation. The observed melt rates were highest in the highest elevation plots, in transition zone in 2014 (median 4.6 mm d−1 °C−1) and southwest-facing forest line in 2015 (median 3.2 mm d−1 °C−1). The timing of the modelled meltwater outflow and snowpack ablation showed good agreement with the snowpack temperature-derived estimates and the soil moisture and snow depth measurements. The simple approach used represents a novel and cost-effective method to improve the spatial accuracy of in situ snow cover ablation measurements and melt rates and the precision of snowmelt models in the subarctic. An open-access R-based model is provided with this paper for analysis of high-frequency snow temperature data. Article in Journal/Newspaper Northern Finland Subarctic Jultika - University of Oulu repository
institution Open Polar
collection Jultika - University of Oulu repository
op_collection_id ftunivoulu
language English
topic Degree-day factor
High resolution
Low-cost
Snow temperature measurements
Snowmelt variability
Subarctic
spellingShingle Degree-day factor
High resolution
Low-cost
Snow temperature measurements
Snowmelt variability
Subarctic
Meriö, L.-J. (Leo-Juhani)
Marttila, H. (Hannu)
Ala-aho, P. (Pertti)
Hänninen, P. (Pekka)
Okkonen, J. (Jarkko)
Sutinen, R. (Raimo)
Kløve, B. (Bjørn)
Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
topic_facet Degree-day factor
High resolution
Low-cost
Snow temperature measurements
Snowmelt variability
Subarctic
description Abstract Continuous data on spatial and temporal patterns of snowmelt rates are essential for hydrological studies, but are commonly not available, especially in the subarctic, mainly due to high monitoring costs. In this study, temperature loggers were used to measure local and microscale variations in snowpack temperature, in order to understand snowmelt processes and rates in subarctic northern Finland. The loggers were deployed on six test plots along a hillslope with varying topography (elevation and aspect) and vegetation (forest, transitional zone and mires, i.e. treeless peatlands) during two consecutive winters (2014 and 2015). At each test plot, the sensors were installed in five locations, at two heights in a snow profile. Algorithms were developed to analyse the snowmelt rates from high-resolution snowpack temperature data. The validity of the results was evaluated using snow depth and soil moisture data from adjacent reference sensors and the results were tested using an empirical degree-day snow model calibrated for each test plot. Snowmelt rates were relatively similar in mires (median 2.3 mm d−1 °C−1) and forests (median 2.6 mm d−1 °C−1) with apparent inter-annual variation. The observed melt rates were highest in the highest elevation plots, in transition zone in 2014 (median 4.6 mm d−1 °C−1) and southwest-facing forest line in 2015 (median 3.2 mm d−1 °C−1). The timing of the modelled meltwater outflow and snowpack ablation showed good agreement with the snowpack temperature-derived estimates and the soil moisture and snow depth measurements. The simple approach used represents a novel and cost-effective method to improve the spatial accuracy of in situ snow cover ablation measurements and melt rates and the precision of snowmelt models in the subarctic. An open-access R-based model is provided with this paper for analysis of high-frequency snow temperature data.
format Article in Journal/Newspaper
author Meriö, L.-J. (Leo-Juhani)
Marttila, H. (Hannu)
Ala-aho, P. (Pertti)
Hänninen, P. (Pekka)
Okkonen, J. (Jarkko)
Sutinen, R. (Raimo)
Kløve, B. (Bjørn)
author_facet Meriö, L.-J. (Leo-Juhani)
Marttila, H. (Hannu)
Ala-aho, P. (Pertti)
Hänninen, P. (Pekka)
Okkonen, J. (Jarkko)
Sutinen, R. (Raimo)
Kløve, B. (Bjørn)
author_sort Meriö, L.-J. (Leo-Juhani)
title Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
title_short Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
title_full Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
title_fullStr Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
title_full_unstemmed Snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
title_sort snow profile temperature measurements in spatiotemporal analysis of snowmelt in a subarctic forest-mire hillslope
publisher Elsevier
publishDate 2018
url http://urn.fi/urn:nbn:fi-fe2018042418449
genre Northern Finland
Subarctic
genre_facet Northern Finland
Subarctic
op_relation info:eu-repo/semantics/altIdentifier/pissn/0165-232X
info:eu-repo/semantics/altIdentifier/eissn/1872-7441
op_rights info:eu-repo/semantics/openAccess
© 2018 Elsevier B.V. All rights reserved. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http:/creativecommons.org/licenses/by-nc-nd/4.0/
https://creativecommons.org/licenses/by-nc-nd/4.0/
_version_ 1772818098604212224