Abstract

Abstract. We have developed an algorithm that retrieves the size, number concentration and density of falling snow from multifrequency radar observations. This work builds on previous studies that have indicated that three-frequency radars can provide information on snow density, potentially improving the accuracy of snow parameter estimates. The algorithm is based on a Bayesian framework, using lookup tables mapping the measurement space to the state space, which allows fast and robust retrieval. In the forward model, we calculate the radar reflectivities using recently published snow scattering databases. We demonstrate the algorithm using multifrequency airborne radar observations from the OLYMPEX–RADEX field campaign, comparing the retrieval results to hydrometeor identification using ground-based polarimetric radar and also to collocated in situ observations made using another aircraft. Using these data, we examine how the availability of multiple frequencies affects the retrieval accuracy, and we test the sensitivity of the algorithm to the prior assumptions. The results suggest that multifrequency radars are substantially better than single-frequency radars at retrieving snow microphysical properties. Meanwhile, triple-frequency radars can retrieve wider ranges of snow density than dual-frequency radars and better locate regions of high-density snow such as graupel, although these benefits are relatively modest compared to the difference in retrieval performance between dual- and single-frequency radars. We also examine the sensitivity of the retrieval results to the fixed a priori assumptions in the algorithm, showing that the multifrequency method can reliably retrieve snowflake size, while the retrieved number concentration and density are affected significantly by the assumptions.

Highlights

  • Atmospheric ice formation and growth processes have a major impact on the Earth’s radiative balance and on the hydrological cycle

  • We introduce a method for retrieving certain microphysical properties of snow – namely, the number concentration, size and density – from multifrequency radar observations

  • We described and evaluated an algorithm for snow microphysical retrievals using multifrequency radar measurements

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Summary

Introduction

Atmospheric ice formation and growth processes have a major impact on the Earth’s radiative balance and on the hydrological cycle. Several studies have shown, using detailed numerical scattering simulations and empirical evidence, that triplefrequency measurements provide information on both the size and density of icy hydrometeors (Kneifel et al, 2011, 2015; Leinonen et al, 2012a; Kulie et al, 2014; Stein et al, 2015; Leinonen and Moisseev, 2015; Leinonen and Szyrmer, 2015; Gergely et al, 2017; Yin et al, 2017) The availability of this information has been expected to enable more accurate quantitative estimation of ice water content (IWC) and snowfall rate and to provide a method to remotely distinguish and characterize icy hydrometeor growth processes.

Physical basis
Forward model
Retrieval
Derived variables
A priori assumptions
Case studies and comparison to NPOL
60 NPOL dBZ
Comparison to in situ data
Sensitivity to the number of frequencies
Sensitivity to prior assumptions
Sensitivity to mass–dimensional exponent
Conclusions
Full Text
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