This is training that focuses on cloud-top cooling (CTC), and it replaces previous training on UW Convective Initiation as that product has evolved. The most significant cloud-top cooling is inferred to be the most intense growing convection, and that cooling correlates well with future NEXRAD signals. Vertical cloud growth – detected from satellite by cooling brightness temperatures – is what CTC keys on.
How clouds can give early convective information
How does the UW Cloud-Top Cooling algorithm work
Examples
How can CTC be used in conjunction with synoptic and mesoscale awareness to anticipate future development in NEXRAD
This is an experimental GOES-R Proving Ground Product designed to foster GOES-R readiness.
Training Session Options
NOAA/NWS students – to begin the training, use the web-based video, YouTube video, or audio playback options below (if present for this session). Certificates of completion for NOAA/NWS employees can be obtained by accessing the session via the Commerce Learn Center
Audio playback (recommended for low-bandwidth users) – This is an audio playback version in the form of a downloadable VISITview and can be taken at anytime.
After extracting the files into that directory click on either the visitplay.bat or visitauto.bat file to start the lesson. If both files are present, use visitauto.bat
References/Additional Links
Talking points are available for this lesson and may be printed out to easily review the session in detail at any time.
Sieglaff, J. M., L. M. Cronce, W. F. Feltz, K. M. Bedka, M. J. Pavolonis and A. K. Heidinger, 2011: Nowcasting convective storm initiation using satellite-based box-averaged cloud-top cooling and cloud-type trends. J Appl. Meteor. Climatol., 50, 110-126.
Hartung, D. C., J. M. Sieglaff, L. M. cronce and W. F. Feltz, 2012: An inter-comparison of UWCI-CTC Algorithm cloud-top cooling rates with WSR-88D Radar Data. Wea. Forecasting (submitted)
Hartung, D. C., J. M. Sieglaff, L. M. Cronce, and W. F. Feltz, 2013: An Inter-Comparison of UW Cloud-Top Cooling Rates with WSR-88D Radar Data. Wea. Forecasting, 28, 463-480.
Sieglaff, J. M., L. M. Cronce, and W. F. Feltz, 2013b: Improving satellite-based convective cloud growth monitoring with visible optical depth retrievals. J. Appl. Meteor. Climatol., In submission.
Sieglaff, J. M., D. C. Hartung, W. F. Feltz, L. M. Cronce, and V. Lakshmanan, 2013a: Development and application of a satellite-based convective cloud object-tracking methodology: A multipurpose data fusion tool. J. Atmos. Oceanic Technol., 30, 510-525.