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1' FY09 GOESR3 Project Proposal Title Page

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... 3-d multi-species hydrometeor fields within GSI via assimilation ... Updating cycled cloud / hydrometeor fields. with METAR, satellite, radar observations ... – PowerPoint PPT presentation

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Title: 1' FY09 GOESR3 Project Proposal Title Page


1
1. FY09 GOES-R3 Project Proposal Title Page
  • Title GOES imager assimilation in GSI cloud
    analysis for Rapid Refresh
  • Project Type 3
  • Status Renewal
  • Duration 2
  • Leads
  • Stan Benjamin, NOAA/ESRL
  • Other Participants
  • Steve Weygandt, NOAA/ESRL
  • Ming Hu, NOAA/ESRL
  • John Derber, NCEP/JCSDA

2
2. Project Summary
  • Develop techniques to improve initialization of
    3-d multi-species hydrometeor fields within GSI
    via assimilation of GOES imagery data.
  • Develop code to read in GOES imager-based data
    into GSI from NCEP prepBUFR
  • Test and refine cloud analysis technique using
    GOES imager-based data within GSI
  • Write plan for assimilation into sub-hourly
    imager data in GSI variational framework (jointly
    between ESRL/GSD and EMC)

3
3. Motivation/Justification
  • Supports NOAA Mission Goal(s) Weather Water
  • Operational data assimilation systems have not
    able to take advantage of GOES high temporal data
    because of a lack of advanced data assimilation
    capability
  • This work will demonstrate the use of high
    temporal and spatial resolution GEO data in the
    short-range hourly-updated operational prediction
    models (Rapid Refresh, building from current RUC)
    to improve short-range forecasts for
    aviation/transportation and severe weather users.

4
4. Methodology
  • NWP Models, Assimilation System, and Data Sets
  • NWP model - WRF configuration for Rapid Refresh
    (ARW core, Thompson microphysics (explicit
    forecasts of cloud water, ice, rain water, snow,
    graupel)
  • GSI for data assimilation component
  • Build from initial cloud analysis module in GSI,
    built from previous software for GOES cloud-top
    product assimilation in the RUC (along with METAR
    cloud/visibility, 3-d radar reflectivity,
    lightning)
  • JCSDA community radiative transfer model (CRTM)
  • GOES imager data - visible, IR, near-IR
  • Exploratory Research
  • Develop software to calculate observation-backgrou
    nd (O-B) differences between model background
    (1-h Rapid Refresh forecasts) and GOES
    imagery-based fields

5
5. Summary of Recent Results
  • Revised GSI cloud analysis code in continued
    testing at ESRL/GSD in experimental
    hourly-updated Rapid Refresh
  • Study of cloud retention from analysis to model
    in RUC, resulting in redesign, especially to
    ensure saturation in cloudy volumes after
    analysis increment applied
  • Recent revisions to operational RUC cloud
    analysis for
  • assimilation of 3-d radar reflectivity (17 Nov
    2008)
  • improved use of GOES and METAR cloud data and
    retention (17 Nov 08, 31 March 09).
  • Upgrades also being transferred to Rapid Refresh
    GSI cloud analysis code
  • Previous history
  • 2002 - Initial GOES-cloudtop product based cloud
    analysis introduced to operational RUC (using
    previous 1h forecast as background)
  • 2005 - Major revision to RUC cloud analysis to
    add assimilation of METAR multi-level cloud and
    visibility observations

6
GSI cloud analysis for Rapid Refresh -- Updating
cycled cloud / hydrometeor fields with METAR,
satellite, radar observations - 4 March 2008 12z
case
YES / NO / UNKNOWN
7
GSI cloud analysis for Rapid Refresh-- Updating
cycled cloud / hydrometeor fields with METAR,
satellite, radar observations
8
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9
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10
RUC 3h forecast of 1000 ceiling (IFR flight
conditions)-probability of detection
verification against METAR observations over US
every 3 h
2004 2005 2006 2007
2008 2009
Improvements in GOES-cloud and METAR assimilation
in Nov 2008 and March 2009 have led to major
improvement in NCEP RUC cloud forecasts
11
N. boundary
N. boundary
  • ESRL- experimental RUC
  • - Assimilating GOES
  • CTT/CTP/WP (water path)
  • NASA LaRC experimental
  • larger areal coverage

NCEP - operational RUC - Assimilating
GOES CTT/CTP - NESDIS operational
Cloud top height 15z 14 Jan 2009 - 0h (analysis)
12
July 2009 NASA Langley producing larger-area
cloud products for RR including Alaska coverage
NASA-LaRC Cloud-top retrieval 1415z - 14 Jan 2009
Rapid Refresh - 0h cloud-top 15z - 14 Jan
2009 Assimilating NESDIS-RUC cloud data
13
6. Expected Outcomes
  • Improved short-range cloud-top and cloud-base
    (ceiling) forecasts for Rapid Refresh
  • Improved surface radiation short-range forecasts
    from improved initial cloud fields
  • Initial GOES imager assimilation capability
    within GSI for improved initial hydrometeor
    fields for other NCEP models using GSI
  • Plan for direct variational assimilation of GOES
    cloud imager data within GSI

14
7. Major Milestones
  • FY09
  • Software to read in GOES imager data into GSI
  • Refine initial GSI cloud analysis data to
    assimilate GOES imager data
  • Develop initial plan for assimilation of GOES
    imager data into variational framework
  • FY10
  • Implement initial GOES imager assimilation
    technique as part of operational implementation
    of initial Rapid Refresh at NCEP
  • Refine cloud analysis techniques, including
    initial testing of variational approach

15
8. Funding Profile (K)
  • Summary of leveraged funding

16
9. Expected Purchase Items
  • FY08
  • (75K) Fund 35 of scientist FTE from Jul08 to
    Jun09
  • FY09
  • (75K) Fund 35 of scientist FTE from Jul09 to
    Jun10
  • FY10
  • (75K) Fund 35 of scientist FTE from Jul10 to
    Jun11
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