Dynamic-stochastic modeling of snow cover formation on the European territory of Russia

A dynamic-stochastic model, which combines a deterministic model of snow cover formation with a stochastic weather generator, has been developed. The deterministic snow model describes temporal change of the snow depth, content of ice and liquid water, snow density, snowmelt, sublimation, re-freezin...

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Main Authors: A. N. Gelfan, V. M. Moreido
Format: Article
Language:Russian
Published: Nauka 2015-03-01
Series:Lëd i Sneg
Subjects:
Online Access:https://ice-snow.igras.ru/jour/article/view/40
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spelling doaj-228ebc025ce74eafb5dc6d1c7acb4f0e2021-08-02T08:42:06ZrusNaukaLëd i Sneg2076-67342412-37652015-03-01542445210.15356/2076-6734-2014-2-44-5234Dynamic-stochastic modeling of snow cover formation on the European territory of RussiaA. N. Gelfan0V. M. Moreido1Institute of Water Problems, Russian Academy of Sciences, MoscowInstitute of Water Problems, Russian Academy of Sciences, MoscowA dynamic-stochastic model, which combines a deterministic model of snow cover formation with a stochastic weather generator, has been developed. The deterministic snow model describes temporal change of the snow depth, content of ice and liquid water, snow density, snowmelt, sublimation, re-freezing of melt water, and snow metamorphism. The model has been calibrated and validated against the long-term data of snow measurements over the territory of the European Russia. The model showed good performance in simulating time series of the snow water equivalent and snow depth. The developed weather generator (NEsted Weather Generator, NewGen) includes nested generators of annual, monthly and daily time series of weather variables (namely, precipitation, air temperature, and air humidity). The parameters of the NewGen have been adjusted through calibration against the long-term meteorological data in the European Russia. A disaggregation procedure has been proposed for transforming parameters of the annual weather generator into the parameters of the monthly one and, subsequently, into the parameters of the daily generator. Multi-year time series of the simulated daily weather variables have been used as an input to the snow model. Probability properties of the snow cover, such as snow water equivalent and snow depth for return periods of 25 and 100 years, have been estimated against the observed data, showing good correlation coefficients. The described model has been applied to different landscapes of European Russia, from steppe to taiga regions, to show the robustness of the proposed technique.https://ice-snow.igras.ru/jour/article/view/40dynamic-stochastic modelingsnow coverweather generator
collection DOAJ
language Russian
format Article
sources DOAJ
author A. N. Gelfan
V. M. Moreido
spellingShingle A. N. Gelfan
V. M. Moreido
Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
Lëd i Sneg
dynamic-stochastic modeling
snow cover
weather generator
author_facet A. N. Gelfan
V. M. Moreido
author_sort A. N. Gelfan
title Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
title_short Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
title_full Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
title_fullStr Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
title_full_unstemmed Dynamic-stochastic modeling of snow cover formation on the European territory of Russia
title_sort dynamic-stochastic modeling of snow cover formation on the european territory of russia
publisher Nauka
series Lëd i Sneg
issn 2076-6734
2412-3765
publishDate 2015-03-01
description A dynamic-stochastic model, which combines a deterministic model of snow cover formation with a stochastic weather generator, has been developed. The deterministic snow model describes temporal change of the snow depth, content of ice and liquid water, snow density, snowmelt, sublimation, re-freezing of melt water, and snow metamorphism. The model has been calibrated and validated against the long-term data of snow measurements over the territory of the European Russia. The model showed good performance in simulating time series of the snow water equivalent and snow depth. The developed weather generator (NEsted Weather Generator, NewGen) includes nested generators of annual, monthly and daily time series of weather variables (namely, precipitation, air temperature, and air humidity). The parameters of the NewGen have been adjusted through calibration against the long-term meteorological data in the European Russia. A disaggregation procedure has been proposed for transforming parameters of the annual weather generator into the parameters of the monthly one and, subsequently, into the parameters of the daily generator. Multi-year time series of the simulated daily weather variables have been used as an input to the snow model. Probability properties of the snow cover, such as snow water equivalent and snow depth for return periods of 25 and 100 years, have been estimated against the observed data, showing good correlation coefficients. The described model has been applied to different landscapes of European Russia, from steppe to taiga regions, to show the robustness of the proposed technique.
topic dynamic-stochastic modeling
snow cover
weather generator
url https://ice-snow.igras.ru/jour/article/view/40
work_keys_str_mv AT angelfan dynamicstochasticmodelingofsnowcoverformationontheeuropeanterritoryofrussia
AT vmmoreido dynamicstochasticmodelingofsnowcoverformationontheeuropeanterritoryofrussia
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