Snow albedo and its parameterization for natural systems and climate modeling

The physical factors having influence on albedo of snow cover, as well as the main methods for its parameterization in models of natural systems, are considered. Numerous studies by various authors have shown that the most important characteristics determining the snow albedo in the near infrared ra...

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Main Authors: D. V. Turkov, E. D. Drozdov, A. A. Lomakin
Format: Article
Language:Russian
Published: Nauka 2024-12-01
Series:Лëд и снег
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Online Access:https://ice-snow.igras.ru/jour/article/view/1438
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author D. V. Turkov
E. D. Drozdov
A. A. Lomakin
author_facet D. V. Turkov
E. D. Drozdov
A. A. Lomakin
author_sort D. V. Turkov
collection DOAJ
description The physical factors having influence on albedo of snow cover, as well as the main methods for its parameterization in models of natural systems, are considered. Numerous studies by various authors have shown that the most important characteristics determining the snow albedo in the near infrared range  (hereinafter referred to as NIR) is the size of snow grains and crystals, and in the visible and UV ranges –  the presence of impurities, primarily dust and soot. We have proposed the new scheme for parameterizing the albedo of snow cover, taking into account most of the processes and factors important for the metamorphism of snow and changes in its stratification and microstructure, namely: the influence of weather conditions during snowfall, its age, density and rate of background pollution, air temperature and solar radiation intensity, as well as the height of the Sun (angle of the Sun above the horizon). The proposed parameterization scheme is introduced into the LSM SPONSOR model. A new scheme for parameterizing snow albedo as part of the LSM SPONSOR model was tested using long-term observational data. Observational data were obtained for four ESM-SnowMIP project sites located in the mountainous regions of Europe and North America: Col-de Porte (France), Weissfluhjoch (Switzerland), Senator Beck and Swamp Angel (USA, Colorado). The series of observational data on the surface noon albedo are 20 years long for the first two sites, and 10 years long for the rest. When compared with the old scheme for parameterizing the albedo of snow cover in the LSM SPONSOR model, based on the dependence of the albedo only on the age of the snow, the new scheme showed a significant increase in the quality of albedo calculations: the correlation coefficients between the observed data and the calculation results are 0.78–0.83, which gives determination coefficients of 0.61–0.69. The new scheme makes it possible to obtain unbiased albedo estimates with statistical distribution characteristics that practically coincide with those obtained for observational data. The set of test sites covers the specific conditions of snow formation in the mountains, both in forested and treeless zones, so the scheme can be recommended for calculating albedo in a wide range of mountain landscapes. The quality of the scheme is also confirmed by the fact that the calculations were carried out with the same values of all model parameters  and coefficients for all four test sites located in different climatic conditions.
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spelling doaj-art-c140ce5698c74d62acb01e4b7ea9fa5d2025-08-04T14:07:48ZrusNaukaЛëд и снег2076-67342412-37652024-12-0164340341910.31857/S2076673424030079887Snow albedo and its parameterization for natural systems and climate modelingD. V. Turkov0E. D. Drozdov1A. A. Lomakin2Institute of Geography RASInstitute of Geography RAS; Lomonosov Moscow State UniversityNational Research University “Higher School of Economics”; Space Research Institute RASThe physical factors having influence on albedo of snow cover, as well as the main methods for its parameterization in models of natural systems, are considered. Numerous studies by various authors have shown that the most important characteristics determining the snow albedo in the near infrared range  (hereinafter referred to as NIR) is the size of snow grains and crystals, and in the visible and UV ranges –  the presence of impurities, primarily dust and soot. We have proposed the new scheme for parameterizing the albedo of snow cover, taking into account most of the processes and factors important for the metamorphism of snow and changes in its stratification and microstructure, namely: the influence of weather conditions during snowfall, its age, density and rate of background pollution, air temperature and solar radiation intensity, as well as the height of the Sun (angle of the Sun above the horizon). The proposed parameterization scheme is introduced into the LSM SPONSOR model. A new scheme for parameterizing snow albedo as part of the LSM SPONSOR model was tested using long-term observational data. Observational data were obtained for four ESM-SnowMIP project sites located in the mountainous regions of Europe and North America: Col-de Porte (France), Weissfluhjoch (Switzerland), Senator Beck and Swamp Angel (USA, Colorado). The series of observational data on the surface noon albedo are 20 years long for the first two sites, and 10 years long for the rest. When compared with the old scheme for parameterizing the albedo of snow cover in the LSM SPONSOR model, based on the dependence of the albedo only on the age of the snow, the new scheme showed a significant increase in the quality of albedo calculations: the correlation coefficients between the observed data and the calculation results are 0.78–0.83, which gives determination coefficients of 0.61–0.69. The new scheme makes it possible to obtain unbiased albedo estimates with statistical distribution characteristics that practically coincide with those obtained for observational data. The set of test sites covers the specific conditions of snow formation in the mountains, both in forested and treeless zones, so the scheme can be recommended for calculating albedo in a wide range of mountain landscapes. The quality of the scheme is also confirmed by the fact that the calculations were carried out with the same values of all model parameters  and coefficients for all four test sites located in different climatic conditions.https://ice-snow.igras.ru/jour/article/view/1438snow coveralbedomodellingparameterizationlsm sponsor
spellingShingle D. V. Turkov
E. D. Drozdov
A. A. Lomakin
Snow albedo and its parameterization for natural systems and climate modeling
Лëд и снег
snow cover
albedo
modelling
parameterization
lsm sponsor
title Snow albedo and its parameterization for natural systems and climate modeling
title_full Snow albedo and its parameterization for natural systems and climate modeling
title_fullStr Snow albedo and its parameterization for natural systems and climate modeling
title_full_unstemmed Snow albedo and its parameterization for natural systems and climate modeling
title_short Snow albedo and its parameterization for natural systems and climate modeling
title_sort snow albedo and its parameterization for natural systems and climate modeling
topic snow cover
albedo
modelling
parameterization
lsm sponsor
url https://ice-snow.igras.ru/jour/article/view/1438
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AT eddrozdov snowalbedoanditsparameterizationfornaturalsystemsandclimatemodeling
AT aalomakin snowalbedoanditsparameterizationfornaturalsystemsandclimatemodeling