Title: Uses of Satellite Data in Environmental Modeling Program
1Uses of Satellite Data in Environmental Modeling
Program
- Fuzhong WengJoint Center for Satellite Data
Assimilation - 14th Annual International TeraScan Conference
- Nanjing University of Information Science
Technology, China - June 10, 2004
2 Outline
- Background
- JCSDA Missions and Goals
- Science Priorities
- Ongoing Activities/Recent Accomplishments
- Recommendations
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4 5-Order Magnitude Increase in Satellite Data
Over 10 Years
Daily Upper Air Observation Count
Satellite Instruments by Platform
NPOESS METEOP NOAA Windsat GOES DMSP
2003
Count
2002
Count (Millions)
1990
2010
2000
1990
2010
2010-250ch
Year
Year
Year
5Global Measurements
TRMM
GOES-R
NPOESS
TOPEX
Aqua
NPP
NOAA/POES
Cloudsat
WindSAT
Aura
SSMIS
CALIPSO
COSMIC/GPS
Terra
6JCSDA Partners
Strategy Plan In 2000, NASA/NOAA White Paper on
A NASA and NOAA Plan to Maximize the Utilization
of Satellite Data to Improve Weather Forecasts
7JCSDA Organizational Structure
NASA NOAA DoD
Management Oversight Board of Directors NOAA
NCEP L. Uccellini (Chair) GSFC ESD F.
Einaudi NOAA ORA M. Colton NOAA OAR J.
Gaynor Navy S. Chang, R. McCoy USAF J. Lanici,
M. Farrar
Advisory Panel
Rotating Chair
Technical Liaisons GMAO D. Dee EMC J.
Derber GMAO M. Rienecker OWAQR A.
Gasiewski ORA D. Tarpley OSDPD Vacant Navy
N. Baker USAF M. McATee Army - Vacant
Joint Center for Satellite Data Assimilation
Staff Director John Le Marshall Executive
Directors Fuzhong Weng NESDIS/ORA Stephen
Lord NWS/NCEP/EMC Lars Peter Riishogjaard
GSFC/GMAO Pat Phoebus
DoD/NRL Secretary Ada Armstrong Consultant
George Ohring
Science Steering Committee
URL Site www.jcsda.noaa.gov
8The JCSDA Mission Goals
Mission accelerate and improve the quantitative
use of research and operational satellite data
in weather and climate prediction models
- Goals
- Reduce from two years to one year the average
time for operational implementation of new
satellite technology. - Increase uses of current satellite data in NWP
models. - Advance the common NWP models and data
assimilation infrastructure. - Assess the impacts of data from advanced
satellite sensors on weather and climate
predictions.
9JCSDA Scientific Priorities
- Improve radiative transfer modeling technique
- Early prepare for advanced instruments
- Advance techniques for assimilating cloud and
precipitation information - Improve uses of satellite products in land data
assimilation system - Improve uses of satellite data in ocean data
assimilation system - Assimilate satellite derived aerosol, ozone and
trace gas products
10Grants Program (FY03-AO)
- Improve radiative transfer model
- UCLA Advanced radiative transfer
- UMBC Including aerosols in OPTRAN
- NOAA/ETL Fast microwave radiance assimilation
studies - Prepare for advanced instruments
- U. Wisconsin Polar winds assimilation
- NASA/GSFC AIRS and GPS assimilation
- Advance techniques for assimilating cloud and
precipitation information - U. Wisconsin Passive microwave assimilation of
cloud and precipitation - Land data assimilation by improving emissivity
models/satellite products - Boston U. - Time varying land vegetation
- U. Arizona Satellite observation for snow data
assimilation - Colo. State U. Surface emissivity error
analysis - NESDIS/ORA Retrievals of real-time vegetation
properties - Improve use of satellite data in ocean data
assimilation - U. Md Ocean data assimilation bias correction
- Columbia U. Use of altimeter data
- NRL (Monterey) Aerosol contamination in SST
retrievals
11Grants Program (FY04-AO)
- Improve radiative transfer model
- AER. Inc Development of RT Models Based on the
Optimal Spectral Sampling (OSS) Method - Navy/NRL - Assimilation of Passive Microwave
Radiances over Land Use of the JCSDA Common
Microwave Emissivity Model (MEM) in Complex
Terrain Regions - NOAA/ETL Fully polarmetric surface models and
Microwave radiative transfer model - UCLA Vector radiative transfer model
- Prepare for advanced instruments
- Navy/NRL SSMIS Brightness Temperature
Evaluation in a Data Assimilation - Land data assimilation by improving emissivity
models/satellite products - NASA/GSFC - Assimilation of MODIS and AMSR-E Land
Products into the Noah LSMU. - Princeton U. - Development of improved forward
models for retrieval of snow properties from
EOS-era satellites - Boston U. Real time estimation and assimilation
of remotely sensed data for NWP
12JCSDA Major Successes
RD Projects
Impacts
- Direct assimilation of AMSU/HIRS radiances
- SSM/I and TMI precipitation estimates in physical
initialization (later use of TRMM data) - Uses of QUIKSCAT data in global forecast system
- Upgrade NCEP global forecast system data
assimilation system - 55 km/64 levels, top at 0.2 mb
- Microwave land emissivity model
- Improved thinning of all current satellite data
(reads 95 of all data, improved sampling
algorithm) - Implement MODIS winds into GFS
- Assess uses of AIRS data through target
experiment areas
- Improve the forecast for synoptic scale weather
by 1-2 days - Improve the precipitation by removing excessive
rain in the tropics - Make 3-8 improvement in 10 m winds vs.
mid-latitude deep ocean buoys at 24-96 h 7-17
improvement for MSLP - Uses more satellite data in stratosphere, over
land, reads in more data - MODIS winds show large positive impacts over
polar regions - Slightly positive to neutral impacts from AIRS
data
13Direct Assimilation of Satellite Radiances
- Satellite microwave radiation at each sounding
channel primarily arises from a particular
altitude, indicated by its weighting function - The vertical resolution of sounding is dependent
on the number of independent channel measurements - Lower tropospheric channels are also affected by
the surface radiation which is quite variable
over land
14Advanced Microwave Sounding UnitSounding Channels
183-3 GHz
52.8 GHz
183-1 GHz
53.7 GHz
15Impacts of AMSU on Forecasts
16Impacts of AMSU on Forecasts
17Uses of MODIS Winds
Unlike geostationary satellites at lower
latitudes, it is not be possible to obtain
complete polar coverage at a snapshot in time
with one or two polar-orbiters. Instead, winds
must be derived for areas that are covered by two
or three successive orbits, an example of which
is shown here. The whitish area is the overlap
between three orbits.
18Case Study Water Vapor Winds
Low Level Mid Level High Level
05 March 2001 Daily composite of 6.7 micron
MODIS data over half of the Arctic region. Winds
were derived over a period of 12 hours. There are
about 13,000 vectors in the image. Vector colors
indicate pressure level - yellow below 700 hPa,
cyan 400-700 hPa, purple above 400 hPa.
19Forecast skills verified against their own
analyses
(CIMSS winds) (NESDIS winds)
Forecast scores are the correlation between the
forecast geopotential height anomalies, with and
without the MODIS winds, and their own analyses.
203D-VAR Assimilation of TRMM TMI and SSM/I rain
rates
- Notes
- use 1 superobd SSM/I and TMI rain rates
- include rain rates over ocean and land
- assimilate transformed observation variable
- log(1 rain_rate)
- observation error, O, is defined as
- O 1.0 a0 a1log(1 rain_rate)
- coefficients a0 and a1 vary for land and ocean
- Scheme works as designed
- increase light rain rates and reduce excessive
rain rates - greater impact on reducing excessive rain rates
- larger impact over ocean than land
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24Impact of QuikSCAT Data
- Including QUIKSCAT data resulted in
- 3-8 improvement in 10 m winds vs. mid-latitude
deep ocean buoys at 24-96 hr - 7-17 improvement for MSLP
- Based on 40 forecasts from 45 days of GDAS
(T170, L42) experiment.
25Near-Term Challenges
Expected Outcomes
Requirements
- Better forecasts on severe storms as measured by
improved threat scores, rainfall potential - Improved prediction of winter storms over high
latitudes/polar regions - Improved information on atmospheric motion for
mesoscale applications - Better initialization of clouds and precipitation
processes and validation of cloud prediction
schemes - Improved parameterization in boundary layer
models
- Advance radiative transfer modeling techniques
(cloud scattering and polarization) - Improve snow and sea ice emissivity modeling
- Implement four dimensional data variation (4dvar)
techniques - Explore uses of active sensors containing
hydrometeor profile information - Use satellite derived products over land and
ocean (e.g. NDVI, SST, SSH, SSW)
26Planning for the Optimal Use of Satellite Data
- Operational access to advanced satellite
instrument data - Early access to the data
- Early evaluation of the data and its products
- Increase capability and accuracy of numerical
forecast models - More physical processes (e.g. cloud prognostic
prediction) - Higher spatial resolution
- Augment data assimilation techniques and
algorithms to increase information extraction - Scattering model for cloud and precipitation
- Surface model over sea ice and snow
- Cloud clearing radiances
- Data thinning techniques for advanced instruments
27JCSDA Road Map (2002 - 2010)
By 2010, a numerical weather prediction community
will be empowered to effectively assimilate
increasing amounts of advanced satellite
observations
The radiances can be assimilated under all
conditions with the state-of-the science NWP
models
Resources
NPOESS sensors ( CMIS, ATMS) GOES-R
OK
Deficiency
The CRTM includes scattering polarization from
cloud, precip and surface
Advanced JCSDA community-based radiative transfer
model, Advanced data thinning techniques
The radiances from advanced sounders will be
used. Cloudy radiances will be tested under
rain-free atmospheres, and more products (ozone,
water vapor winds) are assimilated
AIRS, ATMS, CrIS, VIIRS, IASI, SSM/IS, AMSR,
more products assimilated
Science Advance
A beta version of JCSDA community-based radiative
transfer model (CRTM) transfer model will be
developed, including non-raining clouds, snow and
sea ice surface conditions
Improved JCSDA data assimilation science
The radiances of satellite sounding channels were
assimilated into EMC global model under only
clear atmospheric conditions. Some satellite
surface products (SST, GVI and snow cover, wind)
were used in EMC models
AMSU, HIRS, SSM/I, Quikscat, AVHRR, TMI, GOES
assimilated
Pre-JCSDA data assimilation science
Radiative transfer model, OPTRAN, ocean microwave
emissivity, microwave land emissivity model, and
GFS data assimilation system were developed
2002
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