Efforts Toward Development Of A Global Climatology Of Overshooting Cloud Top Detections Using MODIS and Geostationary Satellite Imager Data Researchers at NASA Langley Research Center have been developing an automated pattern recognition algorithm to identify overshooting convective cloud tops (OTs) in support of the GOES-R satellite program. This algorithm identify regions of overshooting at the individual 1-4 km geostationary satellite pixel scale using visible (during daytime only) and infrared channel imagery and numerical weather analysis data. The algorithm has been developed based upon analysis of 0.25-1 km spatial resolution Aqua MODIS imagery, using a database of over 2000 manually identified OT features throughout the world in storms with varying intensity and morphology. The OT database includes storms ranging from small, warm topped cells in Alaska and Mongolia, tornadic supercells over the U.S. Central Plains and Europe, large tropical mesoscale convective systems, and overshooting in the eyewalls and spiral bands of category 5 tropical cyclones. This database is available for use by the research community. The algorithm is designed to operate on data from any current and historical satellite imager, allowing for development of a highly accurate global OT detection climatology that extends back into the 1990's at up to a 15-30 min temporal resolution throughout the diurnal cycle. As members of the McIDAS Users Group, NASA LaRC has immediate access to the full global archive of geostationary imager data which would allows rapid development of OT climatologies and short-term databases. This type of capability has never been available within the weather and climate research community. Regional geostationary OT databases have been already developed over CONUS during SEAC4RS, for 18-years over the Eastern U.S., and for 5-10 years over Australia, Europe, Southeast Asia, and East Africa among many other regions. Some of these datasets are being used by climate researchers and private industry to examine UTLS-penetrating storm spatial distributions and their temporal variability, in addition to weather hazards associated with these storms at unprecedented spatial detail. This presentation will describe the OT pattern recognition algorithm and highlight recent product applications.
Document ID
20200007109
Acquisition Source
Langley Research Center
Document Type
Poster
Authors
Kristopher Bedka (Langley Research Center Hampton, United States)
Konstantin Khlopenkov (Science Systems & Applications, Inc. Hampton, VA, USA)
Patrick Minnis (Science Systems & Applications, Inc. Hampton, VA, USA)
Date Acquired
May 14, 2020
Subject Category
Meteorology and Climatology
Report/Patent Number
NF1676L-21193
Meeting Information
Meeting: SEAC4RS Science Team Meeting
Location: Pasadena, CA
Country: US
Start Date: April 28, 2015
End Date: May 1, 2015
Sponsors: National Aeronautics and Space Administration