2020
DOI: 10.5194/gmd-13-4229-2020
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PAMTRA 1.0: the Passive and Active Microwave radiative TRAnsfer tool for simulating radiometer and radar measurements of the cloudy atmosphere

Abstract: Abstract. Forward models are a key tool to generate synthetic observations given knowledge of the atmospheric state. In this way, they are an integral part of inversion algorithms that aim to retrieve geophysical variables from observations or in data assimilation. Their application for the exploitation of the full information content of remote sensing observations becomes increasingly important when these are used to evaluate the performance of cloud-resolving models (CRMs). Herein, CRM profiles or fields pro… Show more

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Cited by 56 publications
(49 citation statements)
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References 122 publications
(163 reference statements)
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“…However, we do not expect this to cause a selection bias due to the smoothness of the CS2SMOS SIT data and the size of the search area. Mech et al 2020) microwave emission model. Most sea-ice, snow, and atmosphere properties are not known to the satellite snow depth retrieval (only information about the ice type, multi-year or first-year, is provided).…”
Section: Sea-ice Thicknessmentioning
confidence: 99%
“…However, we do not expect this to cause a selection bias due to the smoothness of the CS2SMOS SIT data and the size of the search area. Mech et al 2020) microwave emission model. Most sea-ice, snow, and atmosphere properties are not known to the satellite snow depth retrieval (only information about the ice type, multi-year or first-year, is provided).…”
Section: Sea-ice Thicknessmentioning
confidence: 99%
“…Additionally, q c in the model is underestimated compared to the observations, which also contributes to the bias in cloud optical thickness in ICON. We attribute the lower q c to an underestimated number concentration of relatively small cloud droplets (diameters < 25 µm), which are commonly observed for this region and season (Mioche et al, 2017). The model also overestimates the number of hydrometeors with diameters larger than 25 µm.…”
Section: Representation Of Cloud Microphysical Parameters In Iconmentioning
confidence: 71%
“…WProf was calibrated by the manufacturer, Radiometer Physics GmbH (RPG), just before the ICE-POP 2018 campaign. This included a calibration of the 89 GHz radiometer with liquid nitrogen and a calibration of the radar with disdrometers following the method of Myagkov et al (2020). The uncertainty of WProf reflectivity calibration is ±1 dB.…”
Section: W-band Cloud Profiler: Wprofmentioning
confidence: 99%