1 / 15

MS QPE Discussion Group Report

MS QPE Discussion Group Report. Steve Hunter Witek Krajewski William Lawrence Kevin Low Brian Nelson Michael Perryman. Stephen Pilney Bob Rabin Bob Sandbo Greg Story Ben Weiger Jian Zhang. Thomas Adams Eyal Amitai Beth Clarke Norman Donaldson Henry Fuelberg Robert Gergens. Topics.

magnar
Download Presentation

MS QPE Discussion Group Report

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. MS QPE Discussion Group Report Steve Hunter Witek Krajewski William Lawrence Kevin Low Brian Nelson Michael Perryman Stephen Pilney Bob Rabin Bob Sandbo Greg Story Ben Weiger Jian Zhang Thomas Adams Eyal Amitai Beth Clarke Norman Donaldson Henry Fuelberg Robert Gergens Q2 Workshop, Norman, OK

  2. Topics • Main sensors for QPE • Advantages/deficiencies of each sensor • Outstanding issues/challenges for operational MS QPE • New and emerging science and technology solutions for improving MS QPE • Recommendations/action items w.r.t. MS QPE

  3. Main Sensors for QPE • Rain gauge • Various networks operated by different agencies • Radar • WSR-88D • Dual-pol • TDWR, CASA/gap-filling radars

  4. Main Sensors for QPE (cont.) • Satellite • GOES (imager and sounder) • Polar-orbiting satellite data • Additional data sources* • Surface observations • Sounding • NWP models

  5. Main Sensors for QPE (cont.) • Potential new sensors • Rain attenuations in telecommunication signals • GPS

  6. Pros/Cons of Each Sensor: Radar • Pros: • High spatial resolution • High temporal resolution • Relatively direct measure of precipitation • Cons: • Beam blockage/areal coverage • Vertical profile of reflectivity / extrapolation to surface precipitation • Bright band • Overshooting • Sub-cloud evaporation • Z-R and Z-S uncertainties (drop size distribution variations in the atmosphere, snow measurements) • Non-meteorological scatters contaminating precipitation estimates/AP

  7. Pros/Cons of Each Sensor: Gage • Pros: • Direct measure of precipitation • Cons: • Poor spatial resolution/non-uniform distribution • Latency in real-time data transfer • Problems with quality of measurements • Frozen hydrometeors • Local wind effect • Ground truth?

  8. Pros/Cons of Each Sensor: Satellite • Pros: • Good spatial coverage • Relatively high spatial/temporal resolution (GOES imager) • Cons: • Indirect measurements of precip • Difficulty with non-precipitation clouds • Poor spatial/temporal resolution (MW from polar-orbiting satellite)

  9. New Sci/Tech Solutions for Improving MS QPE • Scientific: • Range correction/VPR • Precipitation typing • Satellite-radar algorithms (MPE, NMQ, GMSRA, etc) • Satellite IR-MW algorithms (SCaMPR, etc) • Satellite IR-NWP model algorithms (Hydro Estimator, etc) • Improved data QC (REC, NMQ, WDSS-II QCNN) • Technology: • More data sources • Fast access (e.g., level-II) • More powerful computers

  10. Outstanding Issues with Existing Operational MS QPE • Radar: • Overestimation in 1) hail and 2) brightband • Underestimate for warm rain • Inaccurate snow water equivalent estimates • Problem in mountainous regions • Satellite: • Overestimate in precip areal coverage • Underestimate for warm rain • Inaccurate snow water equivalent estimates

  11. Recommendations/Action Items w.r.t. MS QPE • Gauge QC • Critical for bias adjustment and QPE evaluation • Investigate existing gage QC algorithms/concepts (Mountain mapper, OK mesonet) • Develop an automated gage QC for Q2 • Getting more gage data available in real-time and more frequently • NCEP/OHD

  12. Recommendations/Action Items w.r.t. MS QPE • Radar • Make necessary adjustments to radar QPE (e.g., range correction) before applying gage bias correction • Local vs. regional radar/gage bias adjustment • Accurate local gage adjustment can be achieved with a good gage QC • Satellite • Useful in regions without radar and gage coverage • A necessary component for MS QPE

  13. Recommendations/Action Items w.r.t. MS QPE • Improving snow estimates • SNOTEL/Snow Pillows • SAA (Snow Accumulation Algorithm) and PAA (Precipitation Accumulation Algorithm) by the Bureau of Reclamation • NOHRSC (National Operational Hydrologic Remote Sensing Center) expertise • Rain/snow delineation • Satellite MW?

  14. Recommendations/Action Items w.r.t. MS QPE • Verification/Evaluation -- very important! • Evaluations using independent, good quality gages • E.g., various micronets, OK mesonet? • Verifications against strategically planned gage network (e.g., something similar to the piconet?) • Hydro model/stream gages • Investigate/quantify uncertainties of each sensor’s QPE individually and collectively • Define uncertainties of MS QPE

  15. Recommendations/Action Items w.r.t. MS QPE • To combine efforts/expertise from multiple agencies to obtain best possible, cost-effective MS QPE • To make the best possible MS QPE available to the operational communities (e.g., RFCs) more quickly • Continuing collaborative research and development

More Related