P2.8
Identification and retrieval of snowfall from the Advanced Microwace Sounding Unit (AMSU)
Cezar Kongoli, QSS Group, Inc., Lanham, MD; and P. Pellegrino, R. Ferraro, and N. Grody
The retrieval of global precipitation from microwave remote sensing satellites has mostly been limited to rainfall. A few studies have dealt with identification of snowfall over oceans. To our knowledge, the potential for microwave snowfall retrievals over land has not yet been explored. In this paper, we report preliminary results of our on-going project to study the potential of snowfall detection over land from the Microwave Sounding Unit (AMSU). The greatest advantage of the AMSU instrument is that it contains window (e.g., 23, 31, 150 GHz) as well as atmospheric (50-60, 176-183 GHz) channels. These channels can be used in combination for discrimination of the scattering features due to land surfaces (especially snow cover) and that of the atmosphere (ice crystals due to precipitation).
Two case studies involving extensive winter storms over the US Great Plains were investigated. First, precipitation in the form of snow vs. non precipitation events were classified for large areas affected by these storms using NEXRAD radar estimates and ground-based synoptic "first order" weather stations of the US National Weather Service as truth. Next, AMSU measurements in the 23-183 GHz region were matched up with the classified events. Results show that snowfall can be reliably captured from AMSU measurements for a range of precipitation events using mainly the 54, 150, 176 and 180 GHz higher frequency channels. Based on these findings, a preliminary snowfall retrieval algorithm was developed and successfully tested over the US territory, capturing a major portion of snowfall and complex storm dynamics surprisingly well. However, this study was done for a limited geographical region, and work is continuing to develop a global snowfall retrieval scheme over land.
Poster Session 2, Environmental Applications
Tuesday, 11 February 2003, 10:00 AM-12:00 PM
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