Finding
Paper
Abstract
ABSTRACT: The latest established generation of weather radars provides polarimetric measurements of a wide variety of meteorological and non-meteorological targets. While the classification of different precipitation types based on polarimetric data has been studied extensively, non-meteorological targets have garnered relatively less attention beyond an effort to detect them for removal from meteorological products. In this paper we present a supervised learning classification system developed in the Finnish Meteorological Institute (FMI) that uses Bayesian inference with empirical probability density distributions to assign individual range gate samples into 7 meteorological and 12 non-meteorological classes, belonging to five top level categories of hydrometeors, terrain, zoogenic, anthropogenic, and immaterial. We demonstrate how the accuracy of the class probability estimates provided by a basic Naive Bayes classifier can be further improved by introducing synthetic channels created through limited neighborhood filtering, by properly managing partial moment nonresponse, and by considering spatial correlation of class membership of adjacent range gates. The choice of Bayesian classification provides well-substantiated quality estimates for all meteorological products, a feature that is being increasingly requested by users of weather radar products. The availability of comprehensive, fine-grained classification of non-meteorological targets also enables a large array of emerging applications, utilizing non-precipitation echo types and demonstrating the need to move from a single, universal quality metric of radar observations to one that depends on the application, the measured target type, and on the specificity of the customers’ requirements.
Authors
T. Mäkinen, Jenna Ritvanen, S. Pulkkinen
Journal
Journal of Atmospheric and Oceanic Technology