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Hydrometeorology and Polarimetric Radar

Hydrometeorology and Polarimetric Radar. James J. Stagliano, Jr .1, James L. Alford 1 , Dean Nelson 1 , J. William Conway 2 , Barbara Gibson 3 and Don Hyde 3. How can Polarimetric radar aid in flash flood forecasting?. 1 Enterprise Electronics Corporation 2 Weather Decision Technologies

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Hydrometeorology and Polarimetric Radar

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  1. Hydrometeorology and Polarimetric Radar James J. Stagliano, Jr.1, James L. Alford1, Dean Nelson1, J. William Conway2, Barbara Gibson3 and Don Hyde3 How can Polarimetric radar aid in flash flood forecasting? 1Enterprise Electronics Corporation 2Weather Decision Technologies 3Choctawhatchee, Pea and Yellow Rivers Watershed Authority

  2. Outline • Failure of Radar • Promise of Polarimetric Weather Radar • Choctawhatchee, Pea, Yellow Rivers Watershed • EEC Polarimetric Weather Radar • Conclusion

  3. Failure of Radar • Numerous meteorological and physical effects limit accurate rainfall estimation • Marshall – Palmer (Z-R) Relationship • Different DSD  Varies from event to event • Different DSD  Varies within precipitation event • Mie Resonance Effects • Hail Contamination • Beam Blockage • Attenuation • Nonuniform beam filling • Height Above Ground • Wind dispersion • Precipitation Type (Melting Layer)

  4. Failure of Radar to Deliver

  5. Radar – Precipitation Estimation • Rainfall Estimates given by Marshall-Palmer Relationship • Dependent on sixth power of diameter A factor of 63 difference

  6. Radar – Drop Size Distribution Similar Reflectivity, Different Drop Size Distributions

  7. Scattering

  8. Precipitation Scattering • Assumption is all scattering is Rayleigh • True for S band • Not true for C and X band (Ryzhkov, 2005) C-band: l = 5.33 cm Mie ~ 4.5 mm  X-band: l = 3.0 cm Mie ~ 2.5 mm 

  9. Polarimetric Weather Radar • Transmits microwave energy in both horizontal and vertical polarizations • Able to measure entire scattering matrix • Much more information of scattering medium • Standard Base Moments: ZH, VH, WH • Polarimetric Base Moments : ZDR, FDP, rHV, LDR • Estimate the average Drop Size Density • Identify average particle shape  Hydrometeor Classification • Immunity from beam blockage • Variables change due to rainfall  Much better rainfall estimations

  10. Conventional Weather Radar

  11. Polarimetric Radar And Vertical Pulse

  12. Polarimetric Weather Radar Enhanced SIDPOLTM (2 Patents Granted to EEC)

  13. Vertical cross-sections of radar variables and results of classification. NCAR Spol radar. August 14, 1998. Florida LR – light rain, MR – moderate rain, HR – heavy rain, LD – large drops, R/H – rain / hail mixture, GSH – graupel / small hail, HA – hail, DS – dry snow, WS – wet snow, IH – horizontally oriented crystals, IV – vertically oriented crystals

  14. Polarimetric Weather Radar • Raindrops are oblate spheroids •  Horizontal Returns greater than vertical returns •  Phase shift in horizontal is more than in vertical •  FDP increases with range through rain

  15. Polarimetric Rainrate (Doviak and Zrnic, 1993)

  16. Polarimetric RainRate (KDP) Specific Differential Propagation Phase • Independent of receiver/transmitter calibration • Independent of attenuation • Less sensitive to variations of size distributions (compared to Z) • Immune to particle beam blocking • Unbiased if rain is mixed with spherical hail • Noisy at low rainrates

  17. Radar RainRate Marshall - Palmer KDP Zh - ZDR KDP - ZDR

  18. Polarimetric Radar vs. Gauge (Bringi and Chandrasekar, 2001)

  19. Polarimetric Weather RadarRainfall Measurements Polarimetric R(KDP) estimate “Traditional” R(Z) estimate

  20. Polarimetric Radar and Rainfall One hour point measurements: Radar estimates vs. gages

  21. Areal Mean Rain Rate Bias Hail

  22. Choctawhatchee, Pea, Yellow Rivers WatershedHistory • 1990 – Watershed Authorities created throughout state • After devastating Elba Flash Floods • CPYRWA only active authority • SE AL only region in the state with extensive data on its water resources and needs • Initially just Choctawhatchee – Pea Rivers • Started with 3 rain gauges • 1994 - COE Installed Network of Stage and Rain Gauges • 1997 – Yellow River Added • 1998 – Major Flood • 2005 – Conecuh River under consideration

  23. Choctawhatchee, Pea, Yellow Rivers Watershed

  24. EEC C-Band Polarimetric Radar • Greatly Improved Accuracy • Precipitation Estimates Improved Up to 40% • SidPolTM Radar is Now a True Hydrological Instrument • Better Clutter Identification and Elimination • True Precipitation Classification • Ice • Snow • Hail • Liquid Rain • Transmitter • 1 MW • Split between channels • 500 kW per channel • Magnetron • Coherent on Receive • PW 0.4, 0.8, 2.0 ms • PRF 300 – 2000 Hz • EDRP-9 Signal Processor Intermediate Frequency 60.00 MHz Digitization rate 80 MHz Linear dynamic range >100 dB Minimum discernable signal <110 dB Clutter suppression >50 dB Range resolution >45 meters PRF <250 Hz to >1300 Hz Phase noise <-53 dBc integrated over the Nyquist co-interval

  25. EEC C-Band Polarimetric Radar • 2 Installed • UK Met (250 kW) • EEC (1 MW) • 2 more installations this year • Valpraiso University (Indiana, USA) (1 MW) • Austria (250 kW)

  26. Hydrological Modelling - HDSS • QPE-SUMS • Multiple sensor integration for quantitative precipitation estimation • Accurate estimates of rainfall • Basin accumulation to forecast flood risk

  27. Alabama Consortium • Statewide Consortium • Universities • University of South Alabama • University of Alabama - Huntsville • Auburn University • University of Alabama - Tuscaloosa • Federal Agencies • NASA • State Agencies • Watershed Management Authorities • State EMA • Local Agencies • County EMA’s • Local First Responders • EEC

  28. Integration Research Laboratory • All data streams integrated • Satellite • Radar • AWS sensors • NWP • Integration • Sensors • Software • Communications • Training • Evaluation • Sensors • Software • Communications • Fully integrated and operational hydrometeorological forecasting center • Located at EEC • Operational testbed for new technology • Data freely shared with consortium partners

  29. Future Work South Alabama Valpariso, Indiana • Tropical • Convective • Hail shafts • Large Drops • More attenuation • Hurricanes • Run-off Modeling • AL Network • Hurricane Dissipation • ExtraTropical • Stratiform • Brightband • Smaller Drops • Snow / Ice • Run-off Modeling

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