Snowpack as Indicators of Atmospheric Pollution: The Valday Upland
Snowpack is a unique indicator in assessing both local and transboundary contaminants. We considered the features of the snow chemical composition of the Valday Upland, Russia, as a location without a direct influence of smelters (conditional background) in 2016–2019. We identified the influence of...
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doaj-0655d388a43741ccbe87172b735e2ee22020-11-25T02:40:34ZengMDPI AGAtmosphere2073-44332020-05-011146246210.3390/atmos11050462Snowpack as Indicators of Atmospheric Pollution: The Valday UplandMarina Dinu0Tatyana Moiseenko1Dmitry Baranov2Vernadsky Institute of Geochemistry and Analytical Chemistry, 119334 Moscow, RussiaVernadsky Institute of Geochemistry and Analytical Chemistry, 119334 Moscow, RussiaVernadsky Institute of Geochemistry and Analytical Chemistry, 119334 Moscow, RussiaSnowpack is a unique indicator in assessing both local and transboundary contaminants. We considered the features of the snow chemical composition of the Valday Upland, Russia, as a location without a direct influence of smelters (conditional background) in 2016–2019. We identified the influence of a number of geochemical (landscape), biological (trees of the forest zone, vegetation), and anthropogenic factors (technogenic elements—lead, nickel) on the formation of snow composition. We found increases in the content of metals of technogenic origin in city snowfall in the snowpack: cadmium, lead, and nickel in comparison with snowfall in the forest. Methods of sequential and parallel membrane filtration (in situ) were used along with ion-exchange separation to determine metal speciation (labile, unlabile, inorganic speciation with low molecular weight, connection with organic ligands) and explain their migration ability. We found that forest snow samples contain metal compounds (Cu, Pb, and Ni) with different molecular weights due to the different contributions of organic substances. According to the results of filtration, the predominant speciation of metals in the urban snow samples is suspension emission (especially more 8 mkm). The buffer abilities of snowfall in the forest (in various landscapes) and in the city of Valday were assessed. Based on statistical analysis, a significant difference in the chemical composition of snow in the forest and in the city, as well as taking into account the landscape, was shown. Snow on an open landscape on a hill is most susceptible to airborne pollution (sulfates, copper, nickel), city snow is most affected by local pollutants (turbidity, lead).https://www.mdpi.com/2073-4433/11/5/462snowfallbackground areaheavy metalslocal input and transboundary migration |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Marina Dinu Tatyana Moiseenko Dmitry Baranov |
spellingShingle |
Marina Dinu Tatyana Moiseenko Dmitry Baranov Snowpack as Indicators of Atmospheric Pollution: The Valday Upland Atmosphere snowfall background area heavy metals local input and transboundary migration |
author_facet |
Marina Dinu Tatyana Moiseenko Dmitry Baranov |
author_sort |
Marina Dinu |
title |
Snowpack as Indicators of Atmospheric Pollution: The Valday Upland |
title_short |
Snowpack as Indicators of Atmospheric Pollution: The Valday Upland |
title_full |
Snowpack as Indicators of Atmospheric Pollution: The Valday Upland |
title_fullStr |
Snowpack as Indicators of Atmospheric Pollution: The Valday Upland |
title_full_unstemmed |
Snowpack as Indicators of Atmospheric Pollution: The Valday Upland |
title_sort |
snowpack as indicators of atmospheric pollution: the valday upland |
publisher |
MDPI AG |
series |
Atmosphere |
issn |
2073-4433 |
publishDate |
2020-05-01 |
description |
Snowpack is a unique indicator in assessing both local and transboundary contaminants. We considered the features of the snow chemical composition of the Valday Upland, Russia, as a location without a direct influence of smelters (conditional background) in 2016–2019. We identified the influence of a number of geochemical (landscape), biological (trees of the forest zone, vegetation), and anthropogenic factors (technogenic elements—lead, nickel) on the formation of snow composition. We found increases in the content of metals of technogenic origin in city snowfall in the snowpack: cadmium, lead, and nickel in comparison with snowfall in the forest. Methods of sequential and parallel membrane filtration (in situ) were used along with ion-exchange separation to determine metal speciation (labile, unlabile, inorganic speciation with low molecular weight, connection with organic ligands) and explain their migration ability. We found that forest snow samples contain metal compounds (Cu, Pb, and Ni) with different molecular weights due to the different contributions of organic substances. According to the results of filtration, the predominant speciation of metals in the urban snow samples is suspension emission (especially more 8 mkm). The buffer abilities of snowfall in the forest (in various landscapes) and in the city of Valday were assessed. Based on statistical analysis, a significant difference in the chemical composition of snow in the forest and in the city, as well as taking into account the landscape, was shown. Snow on an open landscape on a hill is most susceptible to airborne pollution (sulfates, copper, nickel), city snow is most affected by local pollutants (turbidity, lead). |
topic |
snowfall background area heavy metals local input and transboundary migration |
url |
https://www.mdpi.com/2073-4433/11/5/462 |
work_keys_str_mv |
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