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Initialization of Numerical Forecast Models with Satellite data

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Presentation on theme: "Initialization of Numerical Forecast Models with Satellite data"— Presentation transcript:

1 Initialization of Numerical Forecast Models with Satellite data
Meteorology 415 Fall, 2010

2 Atmospheric Numerical Models
Basic Limits Initial Conditions (resolution) Boundary Conditions (forces) Physics (inexact, empirical relationships) Round-off errors (computational) Chaos (systemic)

3 Models Limits

4 Atmospheric Numerical Models
Starting the Model Start with first guess field Usually a 6 hour forecast from same model Advantages: On same grid domain with the parameters needed Reasonable assumption – errors accumulate with time Computational short-cuts Adjust with Observations - window of opportunity - discern good v bad reports - automate the process

5 Most Common Data Sources
RUC = Rapid Update Cycle – a forecast model run every 3 hrs with projections to 12hrs

6 The WRF Initialization

7 Reminder on WRF Initialization

8 Other Data Sources

9 SST Effects from Satellite

10 Snow/Ice Effects from Satellite

11 Terrain Definition in GSI

12 Better Resolution in Vertical

13 Non-Hydrostatic Effects in Mts

14 Global Model Initial Conditions

15 Satellite Input – Quality Assurance
Water Vapor derived winds: mb [1847 accepted] IR derived winds: mb [7048 accepted] IR derived winds: mb [4653 accepted]

16 Estimating Model Radiance

17 Shortcomings of Model Estimates
Radiative transfer law approximations are applied. Radiances from several different satellite channels are used together to produce one temperature sounding. The derived soundings essentially are layer averages in layers defined by the absorber weighting functions for the observed radiation wavelengths. These are interpolated to much thinner model layers to compare against model fields, or they are interpolated to standard sounding levels and model data are also interpolated to standard sounding levels for comparison.

18 Shortcomings of Model Estimates
Errors in various packages Analysis Schemes Observational (instrument) Representativeness* Model physics *Example: Satellite microwave soundings (actually, radiances) over the ocean. These are the only source of temperature profiles in cloudy regions! Resolving only 3 or 4 thick tropospheric levels, they vertically smear out model-resolved tropopause folds and sloping frontal zones. If use of this data degrades the background fields, then the data should be rejected.

19 Data Reliability Ascertaining what to keep and throw away

20 Data Reliability Ascertaining what to keep and throw away –
The No Surprise Snowstorm – Jan 25, 2000

21 Data Reliability Known error distributions for GOES in 4DAS

22 Challenges of Using Satellite Data
Any radiation that's sensed comes from a deep layer of the atmosphere, so vertical resolution is coarser than model vertical resolution This will improve greatly when interferometers replace radiometers. This is not scheduled on GOES until at least GOES-S The proper conversion of satellite radiances to temperatures requires knowing the emissivity at the bottom of the layer being sensed. This presents problems over land, so data over land are only reliable for channels sensing the upper troposphere and stratosphere

23 Atmospheric Numerical Models
The Pitfalls of Data Assimilation SUMMARY Data Void regions (particularly the oceans) Bad First Guess Fields Good Data rejected Analysis Assumptions

24 Fixing Errant Data with Complex Quality Control
References Fixing Errant Data with Complex Quality Control Collins, W.G., 1997: The use of complex quality control for the detection and correction of rough errors in rawinsonde heights and temperatures: A new algorithm at NCEP/EMC. NCEP Office Note 419, 49 pp. Julian, P.R., 1989: Quality control of the aircraft file at the NMC. Part I. NCEP Office Note 358, 13 pp. [Note - NCEP office notes are scheduled to be available online within a few months of publication of this module] References on Many Aspects of How 3D-VAR Works in the Global Data Assimilation System Derber, J. C., D.F. Parrish, and S. J. Lord, 1991: The new global operational analysis system at the National Meteorological Center. Wea. and Forecasting, 6,

25 References Derber, J. C. and W.-S. Wu, 1998: The use of TOVS cloud-cleared radiances in the NCEP SSI analysis system. Mon. Wea. Rev., 126, McNally, A.P., J.C. Derber, W.-S. Wu, and B.B. Katz, 2000: The use of TOVS level-1B radiances in the NCEP SSI analysis system. Quart. J. Roy. Meteor. Soc., 126, Parrish, D. F. and J. C. Derber, 1992: The National Meteorological Center's spectral statistical interpolation analysis system. Mon. Wea. Rev., 120, Spatial Patterns of Model Error Used in 3D-VAR Analysis Derber, J. C. and F. Bouttier, 1999: A reformulation of the background error covariance in the ECMWF global data assimilation system. Tellus, 51A,


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