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Radar polarimetric measurements for inferring ice particle habits

Radar polarimetric measurements for inferring ice particle habits Sergey Matrosov CIRES, University of Colorado and NOAA ESRL. (with help from other StormVEx participants). Traditional polarimetric radar approaches for hydrometeor ID

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Radar polarimetric measurements for inferring ice particle habits

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  1. Radar polarimetric measurements for inferring ice particle habits Sergey Matrosov CIRES, University of Colorado and NOAA ESRL (with help from other StormVEx participants)

  2. Traditional polarimetric radar approaches for hydrometeor ID Use of radar parameters in horizontal – vertical polarization basis (i.e., reflectivity Ze, differential reflectivity ZDR, copolar correlation ρhv, and specific differential phase shift KDP) Hydrometeor classes such as: rain, snow, simple ice, hail, drizzle are distinguished using fuzzy logic techniques with Ze, ZDR, ρhv, KDP These approaches are typically applied with S-, C- and X-band polarimetric radars operating at H-V basis at low radar beam tilts ------------------------------------------------------------------------------------------------ Drawbacks: Discrimination among different habits in the “simple ice” class remains largely uncertain. ARM cloud radars measure a single polarimetric parameter which is depolarization ratio (DR) (do not measure ZDR, ρhv, KDP)

  3. A different polarimetric radar approach for ice hydrometeor type identification and shape estimation Ice hydrometeor type: planar (e.g., single dendrites, plates, stellars, and aggregates of these types of crystals) columnar (e.g., columns, bullets, needles) quasi-spherical (e.g., ice pellets, graupel) Ice hydrometeor shape: mean aspect ratio (for a dominant ice hydrometeor type) --------------------------------------------------------------------------------------------------------------------- This approach uses depolarization ratios (DRs) for the whole range of radar beam tilts [from 0o to 90o (zenith) – so called RHI scans] DR≈10 log10[(Zcr+cZco)/(Zco+cZcr)] (c - is polarization “leak”) (exact formulas are more complex) could be used with ARM cloud radars (e.g., Ka, W-bands)

  4. Some polarization bases (states) other than H-V are more beneficial for the purpose of particle type identification (i.e., planar vs. columnar vs. irregular vs. spherical) and estimating particle aspect ratio ------------------------------------------------------------------------------ DR in the H-V polarization basis (HLDR) depends on particle density, aspect ratio and (strongly) orientation DR in the circular polarization basis (CDR) depends on particle density, aspect ratio and (very weakly) orientation DR in the slant 45o polarization basis (SLDR)depends on particle density, aspect ratio and (weakly) orientation Besides: cross-polar signals when measuring CDR and SLDR are stronger than in HLDR (which is important for weaker targets) -------------------------------------------------------------------------------------------------------------------

  5. Polarimetric Scanning W-band ARM Cloud Radar (SWACR) data were used to evaluate SLDR measurements for the purpose of ice hydrometer type and shape estimations Data were collected during the AMF2 deployment at the StormVEx IOP)

  6. Calibrating SWACR when observing freezing drizzle SLDR polarization cross-talk ~ -21.8 dB

  7. Observing round graupel with SWACR Mean SLDR ~ - 21.4 dB

  8. Observing pristine dendrites with SWACR cross-talk

  9. Observing lightly rimed dendrites cross-talk

  10. Observing moderately rimed dendrites cross-talk

  11. aggregates of dendrites particle mixture including some columns cross-talk

  12. Observing columnar crystals with SWACR cross-talk

  13. Summary Depolarization ratios (DR) from scanning polarimetric Ka and W-band cloud radar data can be used for ice particle identification and shape estimation Slant 45o degree linear and/or circular polarization bases (SLDR and CDR) are better than the traditional H-V basis (LDR) for ice particle ID and shape estimation because SLDR and CDR depends less on orientation the LDR DR trends with radar elevation angle β are indicative of the predominant planar or columnar crystal habit in the radar resolution volume: DRs for planar crystals increase when β changes from 90o (zenith) to 0o(horizontal beam) DRs for columnar crystals show relatively little trend with radar elevation angle As predominant habit is deduced (i.e., planar vs columnar), shape (mean aspect ratio) estimations are possible from DR values at a radar elevation angle of about 45o (a bulk density assumption is needed for aspect ratio estimations) In the absence of strong electrical fields and turbulence, ice crystals tend to be oriented with major dimensions close to horizontal. This results in reflectivity enhancement in the zenith (nadir) direction for planar crystals. This enhancement is stronger for W-band and can amount for several dB (up to 5-10 dB sometimes) in case of dendrites

  14. Estimations of hydrometeor flutter using DR measurements with the NOAA-K radar an example for planar crystals (SD =9 deg): Cross-pol signal in SLDR is much stronger than in HLDR for slant beams. Almost no dependence on particle flutter in SLDR (beam tilts 40O-50O) Strong dependence on particle flutter in (HLDR for all beam tilts) Measurements (below) confirm theoretical predictions (right). HLDRs are noisier than SLDRs (and weaker by more than 10 dB for low tilt data which are most informative If both SLDR and HLDR are available then shape and flutter influences can be decoupled

  15. Depolarization measurements can be used not only to identify the predominant habit of ice hydrometeors but also to estimate their aspect ratio (if an assumption about the bulk density is made) SLDR at an elevation angle of about 45o approximately does not depend on particle “wobbling” (i.e., σθ) and is determined for a given type (prolate or oblate) by the aspect ratio and density

  16. SLDR is superior to conventional H-V LDR for discriminating hydrometeor shapes (Ka-band) (SLDR depends on hydrometeor orientation only slightly while LDR depends on hydrometeor orientation strongly)

  17. SLDR is superior to conventional H-V LDR for discriminating hydrometeor shapes (Ka-band)

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