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Polarimetric Radar Rain Estimation through Retrieval of Drop Size Distribution Using a Bayesian Approach
Ist Teil von
Journal of applied meteorology and climatology, 2010-05, Vol.49 (5), p.973-990
Ort / Verlag
Boston, MA: American Meteorological Society
Erscheinungsjahr
2010
Link zum Volltext
Quelle
EZB Electronic Journals Library
Beschreibungen/Notizen
This study proposes a Bayesian approach to retrieve raindrop size distributions (DSDs) and to estimate rainfall rates from radar reflectivity in horizontal polarizationZH
and differential reflectivityZ
DR. With this approach, the authors apply a constrained-gamma model with an updated constraining relation to retrieve DSD parameters. Long-term DSD measurements made in central Oklahoma by the two-dimensional video disdrometer (2DVD) are first used to construct a prior probability density function (PDF) of DSD parameters, which are estimated using truncated gamma fits to the second, fourth, and sixth moments of the distributions. The forward models ofZH
andZ
DRare then developed based on a T-matrix calculation of raindrop backscattering amplitude with the assumption of drop shape. The conditional PDF ofZH
andZ
DRis assumed to be a bivariate normal function with appropriate standard deviations. The Bayesian algorithm has a good performance according to the evaluation with simulatedZH
andZ
DR. The algorithm is also tested on S-band radar data for a mesoscale convective system that passed over central Oklahoma on 13 May 2005. Retrievals of rainfall rates and 1-h rain accumulations are compared with in situ measurements from one 2DVD and six Oklahoma Mesonet rain gauges, located at distances of 28–54 km from Norman, Oklahoma. Results show that the rain estimates from the retrieval agree well with the in situ measurements, demonstrating the validity of the Bayesian retrieval algorithm.