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Przegląd Geograficzny T. 96 z. 4 (2024)
Meteorological radar measurements provide precipitation data to a high level of spatial resolution, which are particularly needed for hydrodynamic modeling in urbanized areas. The main limitation in the estimation of precipitation using radars is attributed to the high variability of the Z-R relationship (i.e. between values for reflectivity and intensity of precipitation) in time and space. Measurements using a laser disdrometer (Parsivel1) located at the Meteorological Station of Warsaw University of Life Sciences, carried out in the years 2012–2014 and 2019–2020 (in the April-October periods), allowed to collect data enabling the determination of the Z-R relationships of the power type (parameters a and b) in relation to individual months. The work carried out identified significant differences among noted values for the parameter a (the multiplier in the Z-R relationships) for individual months, which justifies a need to take into account in the calibration procedure of radars variable Z-R relationships. It was found that there is a strong correlation (R = 0.70) between the a parameter in the Z-R relationships and the average monthly reflectivity of precipitation, the values of which were measured using the disdrometer. The results of the studies described here contribute to improve the accuracy of estimates of amounts of precipitation derived from radars.
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oai:rcin.org.pl:243832 ; 0033-2143 (print) ; 2300-8466 (on-line) ; 10.7163/PrzG.2024.4.2
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Institute of Geography and Spatial Organization of the Polish Academy of Sciences
Programme Innovative Economy, 2010-2014, Priority Axis 2. R&D infrastructure ; European Union. European Regional Development Fund
Jan 21, 2025
Jan 21, 2025
3
https://rcin.org.pl./publication/280583
Barszcz, Mariusz Paweł Kazanowska, Ewa Wasilewicz, Michał
Szafrańska, Ewa
Rosik, Piotr Stępniak, Marcin
Śleszyński, Przemysław
Kawecka-Endrukajtis, Barbara Tuszyńska-Rękawek, Halina Sielużycka, Jadwiga