1 / 18

Ongoing Activities toward the Improvement of the AMSR-E L2 Rain over Land Algorithm

Ongoing Activities toward the Improvement of the AMSR-E L2 Rain over Land Algorithm. Ralph Ferraro, Nai-Yu Wang, Kaushik Gopalan and Arief Sudradjat NOAA/NESDIS, College Park, MD Cooperative Institute for Climate Studies, College Park, MD. Outline. GPROF/land algorithm history/problems

casey
Download Presentation

Ongoing Activities toward the Improvement of the AMSR-E L2 Rain over Land Algorithm

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. Ongoing Activities toward the Improvement of the AMSR-E L2 Rain over Land Algorithm Ralph Ferraro, Nai-Yu Wang, Kaushik Gopalan and Arief Sudradjat NOAA/NESDIS, College Park, MD Cooperative Institute for Climate Studies, College Park, MD AMSR-E Science Team Meeting Arlington, VA

  2. Outline • GPROF/land algorithm history/problems • Progress we are making • Warm season rain bias* • Convective/Stratiform separation • TB to RR conversions • *Land surface emissivity** • Land surface characterization** • Future plans *PMM Science Team **This project AMSR-E Science Team Meeting Arlington, VA

  3. Examples of Problems… • Regional biases • Compared to PR • Compared to gauges • Unrealistic rain rate PDF’s in various regions? • “Strange” conditional rates • Underlying surface • Systematic biases. Why? • Unrealistic profiles in database • Bias towards tropical, ocean type systems • Not enough precip. regimes • Other “dirty laundry” • Surface snow • Inland water bodies Liu and Zipser AMSR-E Science Team Meeting Arlington, VA

  4. Areas for Improvement • Convective classification (warm season bias)* • Diversify the land data base & better utilization of Bayesian retrieval • Land systems, all seasons* • Emissivity models • All useable measurements *Wang, N-Y., K. Gopalan, R. Ferraro, C. Liu, 2009: Version 7 of the TRMM2A12 Land Precipitation Algorithm, submitted, Geophysical Research Letter • Surface identification, Screening and removal of anomalous surfaces • “Modernize” for GPM era satellites • Commonality for GPM era satellites AMSR-E Science Team Meeting Arlington, VA

  5. 7 years of PR and TMI match ups (post-boost period) a) 100% Convective b) 100% Stratiform AMSR-E Science Team Meeting Arlington, VA

  6. Comparison of convective estimates from TMI and PR PR and New Version PR and Current Version AMSR-E Science Team Meeting Arlington, VA

  7. TMI – PR global bias maps for TMI v6 and TMI regression (v7) AMSR-E Science Team Meeting Arlington, VA

  8. Global RR Cumulative distributions for PR, TMI v6 and TMI v7 AMSR-E Science Team Meeting Arlington, VA

  9. Storm over Argentina : Dec 2003 V6 RR V7 RR PR RR AMSR-E Science Team Meeting Arlington, VA

  10. Scientific Need For Land Algorithms**From PMM Science Team Meeting, July 2008 • Improved surface characterization is urgently needed to advance the GPM-era precipitation over land algorithms • Algorithm scientists focusing on a wide range of topics, but not necessarily on land surface characterization • Land/winter season precipitation microphysics • Radiative transfer in precipitating atmospheres • Benefits/Utilization of high frequency measurements • However, much expertise is available through other programs • GEWEX • JCSDA/CRTM • CGMS – ITWG (+Emissivity Workshops), IPWG • However, it is not as simple as “plug and play” AMSR-E Science Team Meeting Arlington, VA

  11. LSWG Objectives and Goals **From PMM Science Team Meeting, July 2008 • Assess the current state of land surface emissivity models/retrievals • Must be applicable to all GPM sensors • 6 – 200 GHz • What happens during active precipitation (if using static data base)? • Engage experts external to PMM • Establish methodology to accurately characterize the land surface for GPM core and constellations sensors • Must consider sensor and orbital characteristics • Frequency/FOV • Sensitivity to surface • Must be both static and dynamic in nature • Static – Land/Water/Terrain/ЄClimatology • Dynamic - snow cover, Tsfc, Є, changing water boundaries (e.g., Aral Sea) AMSR-E Science Team Meeting Arlington, VA

  12. How we can use Єinformation Clear sky T/Q Profiles Precipitation Microphysical Information Surface Emissivity Surface Emissivity Atmosphere Emission scattering Emissivity Model Radiative Transfer Model Land Surface Type Simulated TB Observed TB AMSU, SSMIS Slide courtesy of N-Y. Wang AMSR-E Science Team Meeting Arlington, VA

  13. Study Parameters • 12 Targets/9 types of surfaces • 1 Year: 1 July 06 – 30 June 07 • Assemble data sets: • Satellite • AMSR-E, SSMI, SSMIS, TMI, AMSU, WindSat • Ancillary satellite • ISCCP, PR/VIRS, CloudSat • Model • GDAS, LSM, JCSDA Emissivity • Participants generate emissivity “their way” but: • Must use only the data sets supplied • Make results freely accessible by others (post on web) • Results to be stratified by site, cloud mask, etc. AMSR-E Science Team Meeting Arlington, VA

  14. Study Domain • A diverse set of targets were selected: • C3VP – 44 N, 80 W • Amazon(2) – 7 S, 70 W and 2 N, 55 W • Open Ocean(3) – 0 N, 150 W; 35 N, 30 W; 45 S, 35 W • Desert – 22 N, 29 E • SGP – 35 N, 97 W • Inland Water – 48 N, 87 W • SE US (HMT-E) - 34 N, 81 W • Wetland surface - 18 S, 57 W • Finland – 60 N, 25 E AMSR-E Science Team Meeting Arlington, VA

  15. Study Web Pagehttp://cics.umd.edu/~rferraro/LSWG.html AMSR-E Science Team Meeting Arlington, VA

  16. MIRS (1DVAR) Results – AMSR-E Results courtesy of S. Boukabara/W. Chen, NOAA/NESDIS • 6.9V: relatively small interannual • Variability EXCEPT: • Finland in winter • C3VP in winter • SGP due to vegetation/lack of it • Wetlands in fall • 89V: highly variable for most sites AMSR-E Science Team Meeting Arlington, VA

  17. CICS - Amazon Target Clear Sky Cloudy AMSR-E Results courtesy of N-Y. Wang/K. Gopalan TMI • 37 GHz or less • Reasonable stability of Єover vegetated target • Cloud affects minimal • 89 GHz • Cloud and precipitation affects dramatic • Similar values during clear conditions AMSR-E Science Team Meeting Arlington, VA

  18. Summary • Incremental progress made on GPROF-Land for TRMM V7 • Reduce warm season bias • Convective-Stratiform • TB85V to RR relationships • This version could be adopted for AMSR-E next version • TRMM version delivered and undergoing integration and testing • More work lies ahead on land surface characterization and its utilization • Larger algorithm overhaul for GPM-era AMSR-E Science Team Meeting Arlington, VA

More Related