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Presentation transcript:

Available for viewing at Current Real-Time CRAS Forecasts (R. Aune, ASPB) Config Res (km) BCs Hours Input Observations N America* 48 GFS 72 GOES PW/clouds, sfc Central US (nest) 20 CRAS 48 GOES PW/clouds, sfc SE US (nest) 20 CRAS 36 GOES PW/clouds, sfc South America 48 GFS 72 GOES-10 PW/clouds, sfc CONUS 48 GFS 72 MODIS clds, TPW South Pole 48 GFS 72 MODIS clds, TPW North Pole 48 GFS 72 MODIS clds, TPW China 48 GFS 72 MODIS clds, TPW Kazakhstan 48 GFS 72 MODIS clds, TPW N Hemisphere 90 GFS 168 GFS only * Providing forecast imagery for AWIPS C R A S CRAS TEMPESTUS HODIE Tomorrow’s Weather Today The Cooperative Institute for Meteorological Satellite Studies (CIMSS) uses the CIMSS Regional Assimilation System (CRAS) to assess the impact of space-based observations on numerical forecast accuracy. CRAS is unique in that, since 1996, it’s development was guided by validating forecasts using information from GOES. Available for viewing at http://cimss.ssec.wisc.edu/model/realtime