Sensitivity analysis of airborne microwave retrieval of stratiform precipitation to the melting layer parameterization

Citation
Fs. Marzano et P. Bauer, Sensitivity analysis of airborne microwave retrieval of stratiform precipitation to the melting layer parameterization, IEEE GEOSCI, 39(1), 2001, pp. 75-91
Citations number
39
Categorie Soggetti
Eletrical & Eletronics Engineeing
Journal title
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
ISSN journal
01962892 → ACNP
Volume
39
Issue
1
Year of publication
2001
Pages
75 - 91
Database
ISI
SICI code
0196-2892(200101)39:1<75:SAOAMR>2.0.ZU;2-2
Abstract
A sensitivity analysis for airborne microwave passive and active retrievals of hydrometeor profiles with respect to melting-layer parameterizations is carried out using synthetic data. The parameterizations of the melting lay er include the effects of snow density, particle size distributions of hydr ometeors as well as different permittivity models for mixed-phase particles . The hydrometeor profiles are obtained from a two-dimensional cloud ensemb le model simulating a convective-stratiform rainfall event over the East Me diterranean sea. The-statistical analysis reveals that the Maxwell-Garnett mixing formulas with water matrix and ice inclusions may be chosen for grau pel, while a new permittivity model from Meneghini and Liao is suitable for snowflakes. A new Bayesian inversion framework is set up for both airborne microwave radiometric, radar, and combined radar-radiometer retrievals of hydrometeor profiles. Using the cloud profiles as control training data set , a numerical analysis was carried out by testing the inversion algorithms on each melting model data set. Results are discussed in terms of estimate Sensitivity, defined as the statistical deviation bounds of the retrieved p rofiles from the control case ones. Relatively high values of estimate sens itivity to the melting-layer parameterizations are found for all hydrometeo r species, especially for low snow-density and Maxwell-Garnett dielectric m odel test cases, The need of including various melting-layer characterizati ons within a comprehensive training data set and its implications for model -based Bayesian retrieval algorithms is finally argued and numerically test ed.