Polarimetric weather radar retrieval of raindrop size distribution by means of a regularized artificial neural network

Journal Article (2006)
Author(s)

Gianfranco Vulpiani (IEEE, University of L'Aquila)

Frank Silvio Marzano (Sapienza University of Rome, IEEE, University of L'Aquila)

V. Chandrasekar (Colorado State University, IEEE)

Alexis Berne (Wageningen University & Research)

Remko Uijlenhoet (Wageningen University & Research)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1109/TGRS.2006.878438 Final published version
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Publication Year
2006
Language
English
Affiliation
External organisation
Issue number
11
Volume number
44
Article number
1717720
Pages (from-to)
3262-3274
Downloads counter
173

Abstract

The raindrop size distribution (RSD) is a critical factor in estimating rain intensity using advanced dualpolarized weather radars. A new neural-network algorithm to estimate the RSD from S-band dual-polarized radar measurements is presented. The corresponding rain rates are then computed assuming a commonly used raindrop diameter speed relationship. Numerical simulations are used to investigate the efficiency and accuracy of this method. A stochastic model based on disdrometer measurements is used to generate realistic range profiles of the RSD parameters, while a T-matrix solution technique is adopted to compute the corresponding polarimetric variables. The error analysis, which is performed in order to evaluate the expected errors of this method, shows an improvement with respect to other methodologies described in the literature. A further sensitivity evaluation shows that the proposed technique performs fairly well even for low specific differential phase-shift values.