Title :
Classification of particles in stratiform clouds using the 33 and 95 GHz polarimetric cloud profiling radar system (CPRS)
Author :
Lohmeier, Stephen P. ; Sekelsky, Stephen M. ; Firda, John M. ; Sadowy, Gregory A. ; McIntosh, Robert E.
Author_Institution :
Microwave Remote Sensing Lab., Massachusetts Univ., Amherst, MA, USA
fDate :
3/1/1997 12:00:00 AM
Abstract :
This paper describes the identification of regions of ice, cloud droplets, rain, mixed-phase hydrometers, and insects in stratiform clouds using 33 and 95 GHz radar measurements of reflectivity, linear-depolarization ratio (LDR), dual-wavelength ratio, and velocity from a single-antenna radar system. First, the radar system, experiment, and data products are described. Then, regions are classified using a rule-based classifier derived primarily from LDR, velocity, and altitude. Next, a region-dependent attenuation-correction algorithm is developed to remove attenuation biases in the reflectivity estimate, and histograms of the corrected data are presented for each data product and class. The labeled regions and attenuation-corrected data are then used to train a neural net and maximum likelihood classifier. These agree with the rule-based classifier 96% and 94% of the time, respectively. Finally, the paper evaluates the importance of measuring dual-frequency parameters, velocity, and depolarization ratio
Keywords :
atmospheric techniques; clouds; geophysical signal processing; geophysics computing; maximum entropy methods; meteorological radar; neural nets; radar polarimetry; radar signal processing; remote sensing by radar; 33 GHz; 95 GHz; CPRS; EHF; atmosphere; cloud; cloud droplet; cloud profiling radar system; dual-frequency parameters; dual-wavelength ratio; ice; insect; insects; linear-depolarization ratio; maximum likelihood method; measurement technique; meteorological radar; microphysics; millimetre radar; millimetric radar; mixed-phase hydrometer; mm wave; neural net; particle classification; polarization; radar polarimetry; radar remote sensing; rule-based classifier; stratiform cloud; Attenuation; Clouds; Histograms; Ice; Insects; Maximum likelihood estimation; Neural networks; Radar measurements; Rain; Reflectivity;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on