Rainfall rate retrieval in presence of path attenuation using C-band polarimetric weather radars

Journal Article (2006)
Author(s)

Gianfranco Vulpiani (University of L'Aquila)

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

V Chandrasekar (Colorado State University)

A. Berne (Wageningen University & Research)

Remko Uijlenhoet (Wageningen University & Research)

Affiliation
External organisation
DOI related publication
https://doi.org/10.5194/nhess-6-439-2006
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Publication Year
2006
Language
English
Affiliation
External organisation
Issue number
3
Volume number
6
Pages (from-to)
439-450

Abstract

Weather radar systems are very suitable tools for the monitoring of extreme rainfall events providing measurements with high spatial and temporal resolution over a wide geographical area. Nevertheless, radar rainfall retrieval at C-band is prone to several error sources, such as rain path attenuation which affects the accuracy of inversion algorithms. In this paper, the so-called rain profiling techniques (namely the surface reference method FV and the polarimetric method ZPHI) are applied to correct rain path attenuation and a new neural network algorithm is proposed to estimate the rain rate from the corrected measurements of reflectivity and differential reflectivity. A stochastic model, based on disdrometer measurements, is used to generate realistic range profiles of raindrop size distribution parameters while a T-matrix solution technique is adopted to compute the corresponding polarimetric variables. A sensitivity analysis is performed in order to evaluate the expected errors of these methods. It has been found that the ZPHI method is more reliable than FV, being less sensitive to calibration errors. Moreover, the proposed neural network algorithm has shown more accurate rain rate estimates than the corresponding parametric algorithm, especially in presence of calibration errors.

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