Hail-Detection Algorithm for the GPM Core Observatory Satellite Sensors

Author:

Mroz Kamil1,Battaglia Alessandro12,Lang Timothy J.3,Cecil Daniel J.3,Tanelli Simone4,Tridon Frederic2

Affiliation:

1. a National Centre for Earth Observation, University of Leicester, Leicester, United Kingdom

2. b Earth Observation Science, Department of Physics and Astronomy, University of Leicester, Leicester, United Kingdom

3. c NASA Marshall Space Flight Center, Huntsville, Alabama

4. d Jet Propulsion Laboratory, California Institute of Technology, Pasadena, California

Abstract

AbstractBy exploiting an abundant number of extreme storms observed simultaneously by the Global Precipitation Measurement (GPM) mission Core Observatory satellite’s suite of sensors and by the ground-based S-band Next Generation Weather Radar (NEXRAD) network over the continental United States, proxies for the identification of hail are developed from the GPM Core Observatory satellite observables. The full capabilities of the GPM Core Observatory are tested by analyzing more than 20 observables and adopting the hydrometeor classification on the basis of ground-based polarimetric measurements being truth. The proxies have been tested using the critical success index (CSI) as a verification measure. The hail-detection algorithm that is based on the mean Ku-band reflectivity in the mixed-phase layer performs the best of all considered proxies (CSI of 45%). Outside the dual-frequency precipitation radar swath, the polarization-corrected temperature at 18.7 GHz shows the greatest potential for hail detection among all GPM Microwave Imager channels (CSI of 26% at a threshold value of 261 K). When dual-variable proxies are considered, the combination involving the mixed-phase reflectivity values at both Ku and Ka bands outperforms all of the other proxies, with a CSI of 49%. The best-performing radar–radiometer algorithm is based on the mixed-phase reflectivity at Ku band and on the brightness temperature (TB) at 10.7 GHz (CSI of 46%). When only radiometric data are available, the algorithm that is based on the TBs at 36.6 and 166 GHz is the most efficient, with a CSI of 27.5%.

Funder

Natural Environment Research Council

Marshall Space Flight Center

Jet Propulsion Laboratory

The National Centre for Earth Observation

Publisher

American Meteorological Society

Subject

Atmospheric Science

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