Combining commercial microwave links and weather radar for classification of dry snow and rainfall

<p>Differentiating between snow and rainfall is crucial for hydrological modeling and understanding. Commercial microwave links (CMLs) can provide rainfall estimates for liquid precipitation but show minimal signal attenuation during dry snow events, causing the CML time series during these pe...

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Main Authors: E. Øydvin, R. Gaban, J. Andersson, R. (C. Z.) van de Beek, M. A. Wolff, N.-O. Kitterød, C. Chwala, V. Nilsen
Format: Article
Language:English
Published: Copernicus Publications 2025-05-01
Series:Atmospheric Measurement Techniques
Online Access:https://amt.copernicus.org/articles/18/2279/2025/amt-18-2279-2025.pdf
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author E. Øydvin
R. Gaban
R. Gaban
J. Andersson
R. (C. Z.) van de Beek
M. A. Wolff
M. A. Wolff
N.-O. Kitterød
C. Chwala
V. Nilsen
author_facet E. Øydvin
R. Gaban
R. Gaban
J. Andersson
R. (C. Z.) van de Beek
M. A. Wolff
M. A. Wolff
N.-O. Kitterød
C. Chwala
V. Nilsen
author_sort E. Øydvin
collection DOAJ
description <p>Differentiating between snow and rainfall is crucial for hydrological modeling and understanding. Commercial microwave links (CMLs) can provide rainfall estimates for liquid precipitation but show minimal signal attenuation during dry snow events, causing the CML time series during these periods to resemble non-precipitation periods. Weather radars can detect precipitation also for dry snow, yet they struggle to accurately differentiate between precipitation types. This study introduces a new approach to improve rainfall and dry snow classification by combining weather radar precipitation detection with CML signal attenuation. Specifically, events in which the radar detects precipitation but the CML does not are classified as dry snow. As a reference method, we use weather radar, with the precipitation type identified by the dew point temperature at the CML location. Both methods were evaluated using measurements from disdrometers located within 8 km of a CML, taken as ground truth. The analysis used data from Norway, including 550 CMLs in December 2021 and 435 CMLs in June 2022. Our results show that the use of CMLs can improve the classification of dry snow and rainfall, presenting an advantage over the reference method. In addition, our research provides valuable insight into how precipitation at temperatures around 0 °C, such as sleet or wet snow, can affect CMLs, contributing to a better understanding of CML applications in colder climates.</p>
format Article
id doaj-art-c98ef3f001214a4ea4f082ef925f877e
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issn 1867-1381
1867-8548
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publishDate 2025-05-01
publisher Copernicus Publications
record_format Article
series Atmospheric Measurement Techniques
spelling doaj-art-c98ef3f001214a4ea4f082ef925f877e2025-08-20T03:14:42ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482025-05-01182279229310.5194/amt-18-2279-2025Combining commercial microwave links and weather radar for classification of dry snow and rainfallE. Øydvin0R. Gaban1R. Gaban2J. Andersson3R. (C. Z.) van de Beek4M. A. Wolff5M. A. Wolff6N.-O. Kitterød7C. Chwala8V. Nilsen9Faculty of Science and Technology, Norwegian University of Life Sciences, Ås, NorwayFaculty of Science and Technology, Norwegian University of Life Sciences, Ås, NorwayNorwegian Meteorological Institute, Oslo, NorwaySwedish Meteorological and Hydrological Institute (SMHI), Norrköping, SwedenSwedish Meteorological and Hydrological Institute (SMHI), Norrköping, SwedenFaculty of Science and Technology, Norwegian University of Life Sciences, Ås, NorwayNorwegian Meteorological Institute, Oslo, NorwayFaculty of Environmental Sciences and Natural Resource Management, Norwegian University of Life Sciences, Ås, NorwayInstitute of Meteorology and Climate Research, Karlsruhe Institute of Technology, Campus Alpin, Garmisch-Partenkirchen, GermanyFaculty of Science and Technology, Norwegian University of Life Sciences, Ås, Norway<p>Differentiating between snow and rainfall is crucial for hydrological modeling and understanding. Commercial microwave links (CMLs) can provide rainfall estimates for liquid precipitation but show minimal signal attenuation during dry snow events, causing the CML time series during these periods to resemble non-precipitation periods. Weather radars can detect precipitation also for dry snow, yet they struggle to accurately differentiate between precipitation types. This study introduces a new approach to improve rainfall and dry snow classification by combining weather radar precipitation detection with CML signal attenuation. Specifically, events in which the radar detects precipitation but the CML does not are classified as dry snow. As a reference method, we use weather radar, with the precipitation type identified by the dew point temperature at the CML location. Both methods were evaluated using measurements from disdrometers located within 8 km of a CML, taken as ground truth. The analysis used data from Norway, including 550 CMLs in December 2021 and 435 CMLs in June 2022. Our results show that the use of CMLs can improve the classification of dry snow and rainfall, presenting an advantage over the reference method. In addition, our research provides valuable insight into how precipitation at temperatures around 0 °C, such as sleet or wet snow, can affect CMLs, contributing to a better understanding of CML applications in colder climates.</p>https://amt.copernicus.org/articles/18/2279/2025/amt-18-2279-2025.pdf
spellingShingle E. Øydvin
R. Gaban
R. Gaban
J. Andersson
R. (C. Z.) van de Beek
M. A. Wolff
M. A. Wolff
N.-O. Kitterød
C. Chwala
V. Nilsen
Combining commercial microwave links and weather radar for classification of dry snow and rainfall
Atmospheric Measurement Techniques
title Combining commercial microwave links and weather radar for classification of dry snow and rainfall
title_full Combining commercial microwave links and weather radar for classification of dry snow and rainfall
title_fullStr Combining commercial microwave links and weather radar for classification of dry snow and rainfall
title_full_unstemmed Combining commercial microwave links and weather radar for classification of dry snow and rainfall
title_short Combining commercial microwave links and weather radar for classification of dry snow and rainfall
title_sort combining commercial microwave links and weather radar for classification of dry snow and rainfall
url https://amt.copernicus.org/articles/18/2279/2025/amt-18-2279-2025.pdf
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