Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures

The snowflake microstructure determines the microwave scattering properties of individual snowflakes and has a strong impact on snowfall radar signatures. In this study, individual snowflakes are represented by collections of randomly distributed ice spheres where the size and number of the cons...

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Main Authors: M. Gergely, S. J. Cooper, T. J. Garrett
Format: Article
Language:English
Published: Copernicus Publications 2017-10-01
Series:Atmospheric Chemistry and Physics
Online Access:https://www.atmos-chem-phys.net/17/12011/2017/acp-17-12011-2017.pdf
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spelling doaj-0e90c6d1d3b54eac988be050c0b29edb2020-11-25T00:00:35ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242017-10-0117120111203010.5194/acp-17-12011-2017Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signaturesM. Gergely0S. J. Cooper1T. J. Garrett2Department of Atmospheric Sciences, University of Utah, 135 S 1460 E Room 819, Salt Lake City, UT 84112, USADepartment of Atmospheric Sciences, University of Utah, 135 S 1460 E Room 819, Salt Lake City, UT 84112, USADepartment of Atmospheric Sciences, University of Utah, 135 S 1460 E Room 819, Salt Lake City, UT 84112, USAThe snowflake microstructure determines the microwave scattering properties of individual snowflakes and has a strong impact on snowfall radar signatures. In this study, individual snowflakes are represented by collections of randomly distributed ice spheres where the size and number of the constituent ice spheres are specified by the snowflake mass and surface-area-to-volume ratio (SAV) and the bounding volume of each ice sphere collection is given by the snowflake maximum dimension. Radar backscatter cross sections for the ice sphere collections are calculated at X-, Ku-, Ka-, and W-band frequencies and then used to model triple-frequency radar signatures for exponential snowflake size distributions (SSDs). Additionally, snowflake complexity values obtained from high-resolution multi-view snowflake images are used as an indicator of snowflake SAV to derive snowfall triple-frequency radar signatures. The modeled snowfall triple-frequency radar signatures cover a wide range of triple-frequency signatures that were previously determined from radar reflectivity measurements and illustrate characteristic differences related to snow type, quantified through snowflake SAV, and snowflake size. The results show high sensitivity to snowflake SAV and SSD maximum size but are generally less affected by uncertainties in the parameterization of snowflake mass, indicating the importance of snowflake SAV for the interpretation of snowfall triple-frequency radar signatures.https://www.atmos-chem-phys.net/17/12011/2017/acp-17-12011-2017.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. Gergely
S. J. Cooper
T. J. Garrett
spellingShingle M. Gergely
S. J. Cooper
T. J. Garrett
Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
Atmospheric Chemistry and Physics
author_facet M. Gergely
S. J. Cooper
T. J. Garrett
author_sort M. Gergely
title Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
title_short Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
title_full Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
title_fullStr Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
title_full_unstemmed Using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
title_sort using snowflake surface-area-to-volume ratio to model and interpret snowfall triple-frequency radar signatures
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2017-10-01
description The snowflake microstructure determines the microwave scattering properties of individual snowflakes and has a strong impact on snowfall radar signatures. In this study, individual snowflakes are represented by collections of randomly distributed ice spheres where the size and number of the constituent ice spheres are specified by the snowflake mass and surface-area-to-volume ratio (SAV) and the bounding volume of each ice sphere collection is given by the snowflake maximum dimension. Radar backscatter cross sections for the ice sphere collections are calculated at X-, Ku-, Ka-, and W-band frequencies and then used to model triple-frequency radar signatures for exponential snowflake size distributions (SSDs). Additionally, snowflake complexity values obtained from high-resolution multi-view snowflake images are used as an indicator of snowflake SAV to derive snowfall triple-frequency radar signatures. The modeled snowfall triple-frequency radar signatures cover a wide range of triple-frequency signatures that were previously determined from radar reflectivity measurements and illustrate characteristic differences related to snow type, quantified through snowflake SAV, and snowflake size. The results show high sensitivity to snowflake SAV and SSD maximum size but are generally less affected by uncertainties in the parameterization of snowflake mass, indicating the importance of snowflake SAV for the interpretation of snowfall triple-frequency radar signatures.
url https://www.atmos-chem-phys.net/17/12011/2017/acp-17-12011-2017.pdf
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AT sjcooper usingsnowflakesurfaceareatovolumeratiotomodelandinterpretsnowfalltriplefrequencyradarsignatures
AT tjgarrett usingsnowflakesurfaceareatovolumeratiotomodelandinterpretsnowfalltriplefrequencyradarsignatures
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