1 / 20

Dual-Polarization Quantitative Precipitation Estimation Group Discussion Report Edward A. Brandes National Center for At

Dual-Polarization Quantitative Precipitation Estimation Group Discussion Report Edward A. Brandes National Center for Atmospheric Research. Dual-Polarization Radar. Impacts: ● Data quality ● Hydrometeor classification ● Microphysics retrieval/understanding

vonda
Télécharger la présentation

Dual-Polarization Quantitative Precipitation Estimation Group Discussion Report Edward A. Brandes National Center for At

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Dual-Polarization Quantitative Precipitation Estimation Group Discussion Report Edward A. Brandes National Center for Atmospheric Research

  2. Dual-Polarization Radar Impacts: ● Data quality ● Hydrometeor classification ● Microphysics retrieval/understanding of precipitation processes ● Microphysics parameterization in numerical models ● Precipitation quantification

  3. Group Discussion Objectives • Identify science issues related to quantitative precipitation estimation with polarimetric radar • Facilitate the transfer from research to operations

  4. Discussion Topics ● Measurement accuracy/Calibration ● Drop axis ratios/DSD model ● Role of KDP ● Hail ● Estimator variable mix/functional form ● Algorithm testing and verification criteria ● Default algorithms ● New techniques/hardware

  5. Polarimetric Variables • Radar Reflectivity: • Specific Differential Propagation Phase: • Differential Reflectivity: _______________ • Correlation Coefficient:

  6. Measurement Accuracy Parameter Error Error in R Z 0.5 dB 10% ZDR 0.1−0.2 dB 5−25% KDP 0.2o km−1 5−100% Model Error Axis ratio ZDR error of 0.2−0.3 dB DSD form Algorithm Simulation or observations Canting angle

  7. KDP Advantages ● Immune to calibration problems ● Unaffected by attenuation ● Unaffected by beam blockage ● Insensitive to dry tumbling hail

  8. 12 June 1997 Rainfall Accumulation 0600-1030 UTC R(Z ) R(K ) H DP 60 30 30 60 60 90 90 120 120 40 40 150 150 60 60 80 80 (a) (b)

  9. KDP Potential problems ● Reflectivity gradients ● Differential backscatter phase shift ● Sensitivity to mismatched sidelobes ● DSD sensitivity ● High noise level in ΦDP measurements ● Reduced spatial resolution in rainfall estimates

  10. Estimator variable mix/functional form • Enhanced Z−R Relations • Power-law/Polynomial Relations • Composite Algorithms • Drop-Size Distribution Retrieval

  11. Florida-Tuned Power-Law Estimators(ZH and KDP in linear units, ZDR in dB) Empirical axis ratios: r = 0.9951 + 0.02510D – 0.03644D2 + 0.005303D3 – 0.0002492D4  Radar Reflectivity:  Specific Differential Phase:  Specific Diff. Phase/Diff. Reflectivity: Reflectivity/Diff. Reflectivity:

  12. Summary Results:Tuned Power-Law EstimatorsEmpirical Axis Ratios(388 radar−gauge comparisons)

  13. NSSL Composite Algorithm(linear units) R(Z) < 6 mm h−1 6 < R(Z) < 50 mm h−1 R(Z) > 50 mm h−1 Where:

  14. Polarimetric Rainfall Estimation Point Estimates Areal Estimates

  15. Drop-Size Distribution Retrieval with Polarimetric Radar Measurements Gamma drop size distribution: N(D)=N0Dμexp(-ΛD) N0 drop concentration parameter m distribution shape term L slope factor Solution:

  16. Spatial Distribution of Retrieved DSD Parameters 17 September 1998 Convective rain: 192646 UTC Stratiform rain: 222154 UTC

  17. Comparison: Physical ProcessesConstrained-Gamma and Marshall−Palmer DSD Models

  18. Recommendations ● Endorse the NSSL composite algorithm as an initial product ● Update and enhance methods for radar calibration ● Conduct a community-wide inter- comparison study to improve algorithms

  19. Questions! Comments!

More Related