Real-time Generation of Winds and Sea Ice Motion from MODIS Jeff Key 1, Dave Santek 2, Chris Velden 2 1 Office of Research and Applications, NOAA/NESDIS,

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Presentation transcript:

Real-time Generation of Winds and Sea Ice Motion from MODIS Jeff Key 1, Dave Santek 2, Chris Velden 2 1 Office of Research and Applications, NOAA/NESDIS, Madison 2 Cooperative Institute for Meteorological Satellite Studies, University of Wisconsin

Raob locations are indicated by their WMO station numbers. Arctic and Antarctic Rawinsonde Distribution Sparse Observation Network

Model Wind Errors Francis, 2002 (GRL, accepted) examined differences between NCEP/NCAR and ECMWF Reanalysis winds and raob winds for raobs that were not assimilated in the reanalysis, from the LeadEx (1992) and CEAREX (1988) experiments. It was found that both reanalyses exhibit large biases in zonal and meridional wind components, being too westerly and too northerly. Winds are too strong by 25-65%.

Geostationary Cloud Motion Vectors Five geos provide coverage for winds in the tropics and mid-latitudes. However, the total number of wind vectors drops off steadily beyond a 30 degree view angle, with a sharp drop off beyond 60 degrees. The success rate (#vectors/total possible) drops off beyond 50 degrees. Winds from polar orbiters can help fill the high-latitude areas between geos where view angles are large.

Figures from Orbits

The figure at right shows the time of successive overpasses at a given latitude-longitude point on a single day with only the Terra satellite. The figure at the upper right shows the frequency of "looks" by two satellites: Terra and (the future) Aqua. The figure at the lower right shows the temporal sampling with five satellites. Overpass Frequency

One Day of Arctic Orbits MODIS band 27 (6.7  m)

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.

Infrared Winds 05 March 2001: Daily composite of 11 micron MODIS data over half of the Arctic region. Winds were derived over a period of 12 hours. There are about 4,500 vectors in the image. Vector colors indicate pressure level - yellow: below 700 hPa, cyan: hPa, purple: above 400 hPa. Low Level Mid Level High Level

Water Vapor Winds 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: hPa, purple: above 400 hPa. Low Level Mid Level High Level

One Day of Arctic Orbits MODIS band 27 (6.7  m)

Model Impact Studies These NWP centers have demonstrated a positive impact on weather forecasts when the MODIS polar winds are assimilated: European Centre for Medium-Range Weather Forecasts NASA Global Modeling and Assimilation Office (later talk) Canadian Meteorological Centre (UK) Met Office Japan Meteorological Agency U.S. Navy (FNMOC)

ECMWF Mean and Difference Wind Fields: 400 hPa Arctic: MODIS winds act to strengthen the circulation at upper levels; at lower levels the difference field suggests a weakening of the local circulation. Antarctic: MODIS winds act to strengthen the flow around the Antarctic Peninsula.

ECMWF Model Impact: Arctic 1000 hPa Forecast scores (anomaly correlations) as a function of forecast range for the geopotential at 1000 hPa (left) and 500 hPa (right). Study period is 5-29 March Forecast scores are the correlation between the forecast geopotential height anomalies, with and without the MODIS winds, and their own analyses. The Arctic (“N. Pole”) is defined as north of 65 degrees latitude. There is a significant positive impact on forecasts of the geopotential from the assimilation of MODIS winds, particularly for the Arctic. Forecast accuracy is extended by about 5 hrs. 500 hPa

ECMWF Model Impact: Northern Hemisphere 1000 hPa Forecast scores (anomaly correlations) as a function of forecast range for the geopotential at 1000 hPa (left) and 500 hPa (right). Study period is 5-29 March Forecast scores are the correlation between the forecast geopotential height anomalies, with and without the MODIS winds, and their own analyses. The Northern Hemisphere is defined as north of 20 degrees latitude. The improvements for the Northern Hemisphere are significant at the 2% or better level (t-test) for the forecast range of 2-5 days at most levels. 500 hPa

ECMWF: Error Propagation to the Midlatitudes This animation illustrates the propagation of analysis errors from the poles to the midlatitudes for one case study. Each frame shows the 500 hPa geopotential height for forecasts from 1 to 5 days in 1 day increments. The solid blue line is the geopotential from the experiment that included MODIS winds; the dashed black line is the control (CTL) experiment without MODIS winds. Solid red lines show positive differences in the geopotential height (MODIS minus CTL), and thick dashed blue lines show negative differences. The area of large positive differences near the Beaufort Sea (north of Alaska) moves southward over the 5-day period. The CTL run is forming a deeper trough over central Alaska and then over the Pacific south of Alaska than the MODIS run. The 5-day MODIS forecast verifies better against the subsequent analysis (not shown), so the initial analysis for this MODIS forecast was closer to the “truth” than the CTL (positive impact on forecast). The propagation of differences is therefore also a propagation of analysis errors in the CTL forecast. Better observations over the poles should improve forecasts in the midlatitudes.

Error Propagation to the Midlatitudes: Snowfall Accumulated snowfall forecasts (mm water equivalent) over Alaska for 03/20/02 (end of animation period). At right is the snowfall from the 5-day CTL forecast, below left is the snowfall from the 5-day MODIS forecast, below right is the snowfall from a 12-hr forecast for verification. The MODIS run verified better, and the CTL run produced spurious snowfall in southern Alaska.

Sea Ice Motion

Sea Ice Motion: Arctic Ice motion in the Greenland Sea on December 4, 2003 from Aqua MODIS. Greenland and the Canadian Archipelago are on the left side of the image.

Sea Ice Motion: Antarctic Ice motion in the Ross Sea on March 2, 2004 from Aqua MODIS.

Sea Ice Motion from AMSR-E: Coverage Overlap of three consecutive orbits (whitish area) from MODIS (left) and AMSR-E (right)

(Near) Real-Time Production

Near Real-Time Winds Examples MODIS winds are generated in real-time and are presented for each 200 minute triplet. AVHRR GAC winds are generated in near real-time and are presented on the Web as composites over the day. Both are available at MODIS AVHRR

MODIS Polar Winds Real-Time Processing Delays Relative to Two ECMWF Processing Cycles The blue points represent winds that will be included in the 12Z run; the black points represent winds that will be used in the 0Z run. The green points will not be used in either, as a result of the processing delay. The 12Z run is not done until 19Z; the 0Z run is done at 9Z. 1-3 hrs before MODIS data is available + 1/5 hr to transfer data from GSFC to CIMSS + 1 hr to process winds + 1-1/2 hrs offset because we assign vector time to middle image = 3-6 hours total time Frequency of Delays in Wind Retrievals

Aqua MODIS Acquisition Delays The figures above show the time delay in the availability of MODIS data, where the delay is the time between the image time (acquisition) and the time a granule is available on the NOAA “bent pipe”. This histogram is for the south polar region.

Terra MODIS Acquisition Delays The figures above show the time delay in the availability of MODIS data, where the delay is the time between the image time (acquisition) and the time a granule is available on the NOAA “bent pipe”. This histogram is for the south polar region.

Conclusions Tropospheric winds at high latitudes are being derived from MODIS and AVHRR. Model impact studies from five major NWP centers are encouraging and justify the use of the MODIS polar winds in numerical weather forecasts. (The MODIS winds are used in the ECMWF operational model.) Sea ice motion is another product that can be generated from Terra and Aqua data (MODIS and AMSR-E) in real-time. MODIS polar winds and sea ice motion are being produced in real-time with a 3-5 hour delay. Through the NOAA bent-pipe, MODIS level 1b data are not available for 2-4 hours or more. This precludes the use of much of the wind data at NWP centers. Data from direct broadcast sites is needed to fill the time gap. McMurdo Station is the best candidate for the south polar region. Note that the use of these data are for both local use (forecasters at McMurdo) and for use in global NWP systems. The benefit of more timely data is not just local, it’s global!