Bayesian statistical analysis of ground-clutter for the relative calibration of dual polarization weather radars

A new data processing methodology, based on the statistical analysis of ground-clutter echoes and aimed at investigating the stability of the weather radar relative calibration, is presented. A Bayesian classification scheme has been used to identify meteorological and/or ground-clutter echoes. The...

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Bibliographic Details
Published inEuropean journal of remote sensing Vol. 49; no. 1; pp. 933 - 953
Main Authors Falconi, Marta Tecla, Montopoli, Mario, Marzano, Frank Silvio
Format Journal Article
LanguageEnglish
Published Cagiari Taylor & Francis 01.01.2016
Taylor & Francis Ltd
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Summary:A new data processing methodology, based on the statistical analysis of ground-clutter echoes and aimed at investigating the stability of the weather radar relative calibration, is presented. A Bayesian classification scheme has been used to identify meteorological and/or ground-clutter echoes. The outcome is evaluated on a training dataset using statistical score indexes through the comparison with a deterministic clutter map. After discriminating the ground clutter areas, we have focused on the spatial analysis of robust and stable returns by using an automated region-merging algorithm. The temporal series of the ground-clutter statistical parameters, extracted from the spatial analysis and expressed in terms of percentile and mean values, have been used to estimate the relative clutter calibration and its uncertainty for both co-polar and differential reflectivity. The proposed methodology has been applied to a dataset collected by a C-band weather radar in southern Italy.
ISSN:2279-7254
2279-7254
DOI:10.5721/EuJRS20164949