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The Impact of GPS Radio Occultation Data on the Analysis and Prediction of Tropical Cyclones Bill Kuo UCAR.

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Presentation on theme: "The Impact of GPS Radio Occultation Data on the Analysis and Prediction of Tropical Cyclones Bill Kuo UCAR."— Presentation transcript:

1 The Impact of GPS Radio Occultation Data on the Analysis and Prediction of Tropical Cyclones Bill Kuo UCAR

2 GPS RO observations advantages for tropical cyclone prediction There are considerable uncertainties in global analyses over data void regions (e.g., where there are few or no radiosondes), despite the fact that most global analyses now make use of satellite observations. GPS RO missions (such as COSMIC) can be designed to have globally uniform distribution (not limited by oceans, or high topography). The accuracy of GPS RO is compatible or better than radiosonde, and can be used to calibrate other observing systems. GPS RO observations are of high vertical resolution and high accuracy. GPS RO is an active sensor, and provides information that other satellite observing systems could not provide GSP RO provide valuable information on the 3D distribution of moisture over the tropics, which is important for typhoon prediction.

3 Challenges for Tropical Cyclone Prediction Some of the operational GPS RO missions (e.g., METOP/GRAS) do not provide much data in the lower troposphere. There are still significant uncertainties and challenges for GPS RO to provide accurate measurement in the lowest 2 km of the tropical troposphere. How would this impact tropical cyclone prediction?

4 COSMIC and Metop/GRAS Comparisons With ECMWF Tropics Jul-Dec 2009 Metop COSMIC -Tropics, Jul-Dec 2009 -Metop/GRAS processed down to first data gap -Metop/GRAS profiles have worse penetration than COSMIC -Metop/GRAS BA’s negatively biased by several percent in lower troposphere Metop/COSMIC Bending Angles Courtesy of Bill Schreiner

5 Hurrican Ernesto: Formed: 25 August 2006 Reached Hurricane strength: 27 August Dissipated: 1 September 2006 15:50 UTC 27 August 2006 Picture taken by MODIS, 250 m resolution

6 4-Day Ernesto Forecasts with WRF-ARW Forecast with GPS Forecast without GPS The Actual Storm

7 WRF/DART ensemble assimilation of COSMIC GPSRO soundings WRF/DART ensemble Kalman filter data assimilation system 36-km, 32-members, 5-day assimilation Assimilation of 178 COSMIC GPSRO soundings (with nonlocal obs operator, Sokolovskiey et al) plus satellite cloud-drift winds Independent verification by ~100 dropsondes. 178 COSMIC GPSRO soundings during 21- 26 August 2006 From Liu et al. (2011)

8 Verification of WRF/DART analysis by about 100 dropsondes during the Ernesto genesis stage.

9 2-hour Forecast Difference of GPSonly-NODA (700 hPa) 00Z 24 August Water vapor 06Z 23 August Wind 00Z 25 August Ernesto’s genesis time

10 2-hour Water Vapor Differences (700 hPa) Only - NODA 06Z 23 August Only6km - NODA 00Z 24 August 00Z 25 August Ernesto’s genesis time

11 48h-forecast of SLP (starting at 00UTC 25 August) August 2006

12 Summary of Ernesto Study Assimilation of GPS RO data adds moisture in the lower troposphere, and produces noticeable wind increments, consistent with the convective environment. GPS RO data in the lower troposphere is crucial for creating a favorable environment for hurricane genesis. If we miss the bottom 6km, we will fail to capture hurricane genesis. The bottom 2km is also important. Assimilation of GPS RO data produced improved analysis and subsequent forecasts both in terms of track and intensity.

13 COSMIC-2 vs. COSMIC-1 10,000 vs 2,000 soundings per day Better and phase-steerable antenna Advanced receiver (Tri-G) Will track all GNSS and additional radiometric signals (GPS, GLONASS, Galileo, Compass, and DORIS) Improved retrieval and data assimilation algorithms All of this implies much greater impact on science and operational forecasting, Including tropical cyclones and heavy rainfall

14 From August 6 to 10, 2009, extraordinary rainfall was brought over Taiwan by Typhoon Morakot, breaking 50 year’s precipitation record, causing a loss of more than 700 people and estimated property damage exceeding US$3.3 billion Observed Rainfall of Typhoon Morakot (2009) Typhoon Morakot (2009) Max. 24-h gauge 1504 mm Max. 96-h gauge 2874mm at Chiayi County (windward slope of CMR) Accumulated rainfall: (a) 96-h on August 6-10 (b) 24-h on August 8-9 * Objective analysis ~450 automatic stations 24-h rain world record 1825 mm

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22 WRF/DART Analyses and Forecasts for Morakot (2009) Experiments performed using CWB operational configuration Control (with GPS RO) : CWB operational observations including TC BOGUS data, 6- hourly analysis cycle NOGPS : Remove the GPS RO data from the control run. Continuous assimilations from 12UTC Aug. 3, 2009 through 00UTC 6 August on the CWB 45-km grid, based on NCEP GFS analysis. Subsequent 16 member ensemble forecast using CWB 45/15/5 km operational configuration

23 12 UTC 6 August (12hr Fcst) GPS GPS – No GPSEC No GPS

24 Forecast initialized at 00 UTC 6 August With GPSNO GPS

25 Forecast initialized at 00 UTC 6 August With GPSNO GPS

26 48hr Rain Forecast (August 7-8 00Z) 48hr Rain Forecast (August 7-8 00Z)

27 72hr Rain Forecast (August 8-9 00Z) 72hr Rain Forecast (August 8-9 00Z)

28 96hr Rain Forecast (August 9-10 00Z) 96hr Rain Forecast (August 9-10 00Z)

29 00 UTC 6 August (Analysis) GPSNo GPS ECGPS – No GPS

30 12 UTC 7 August (36hr Fcst) GPSNo GPS ECGPS – No GPS

31 12 UTC 8 August (60hr Fcst) GPSNo GPS ECGPS – No GPS

32 FORMOSAT-7/COSMIC-2 Soundings GPS and GLONASS (6@72°, 6@24°) 1 hour 6 hour 3 hour 24 hour

33 Typhoon Forecast Improvements We perform two-day data assimilation, followed with three-day forecast for COSMIC-1 and COSMIC-2. Compared with the Control (without RO data) COSMIC-2 gives far superior results. Intensity forecastTrack forecast COSMIC-18.125.0 COSMIC-245.465.4


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