Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison ABI and AIRS Retrievals in McIDAS-V Kaba Bah.

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Presentation transcript:

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison ABI and AIRS Retrievals in McIDAS-V Kaba Bah

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Content – Introduction to McIDAS-V – Introduction to GOES-R ABI  Visualize simulated ABI using McIDAS-V  Analyze simulated ABI using McIDAS-V – Introduction to AIRS DPI  Visualizing AIRS DPI in McIDAS-V – Summary  References – End

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Intro. to McIDAS-V  Free  Open source software  Powerful visualization & data analysis tool  Build on SSEC’s VisAD and Unidata’s IDV  “Bridge” software enables McIDAS-X users to run commands/tasks in McIDAS-V environment

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Some features of McIDAS-V  Use of Java and Jython for platform independence.  Access to remote servers through firewall.  General display model supports 2D and 3D displays.  Versatile visualization and data analysis toolkit.  Numerous data formats supported (netCDF, AREA, GINI, EUMETCast LRIT, AVHRR L1b, ASCII etc).  Great support team with an online forum.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Intro. to GOES-R ABI  16 channel imaging radiometer that covers the visible, near-IR and IR Spectral regions.  Spatial Res.  IR = 2KM  Near-IR = 1KM  0.64um =0.5 KM  Temporal Res. (flex scan mode, [1hr]) ‏  Full disk = 4  CONUS = 12  Mesoscale (1000x1000KM) =120  Spectral Res.  Current GOES = ‘6 Bands’  GOES-R = 16 Bands.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Visualizing simulated ABI in McIDAS-V  With data from the AWG group, we created CF 1.4 compliant netCDF files for:  Full Disk (2km res.) ‏  CONUS (2km res.) ‏  Mesoscale (1km res.) ‏  Katrina (2km res.) ‏  Used McIDAS-V data explorer to ingest files.  NetCDF files.  Displayed images in McIDAS-V map display.  Full disk, CONUS, Mesoscale, Katrina, Analysis.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Full disk simulation ABI band 15 (12.3um) June at 20:00UTC.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison CONUS Simulations  Rapidly developing severe convection, June 04/  High res. WRF model cooperated with CIMSS forward radiate transfer model. McIDAS-X

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison CONUS band 02(0.64um) :30UTC  Daytime detection of fog, snow and ice cover  Estimation of solar insolation  Smoke, volcanic ash and hurricane analysis

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison ABI simulated 1Km res. Mesoscale.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Simulated ABI for Hurricane Katrina

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison McIDAS-V data analysis toolkit.  Easily create a simple formula in McIDAS-V to compute (NDVI) on the fly.  Use McIDAS-V for scatter analysis of two fields.  Data transect using McIDAS-V.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Band difference (NDVI) Band03(0.86um) – Band02(0.64um)‏  Can compute band difference on the fly.  Band 03 (0.86um) - Band 02 (0.64um) ‏

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Scatter Analysis Band 03 (0.86um) and Band 02 (0.64um)‏

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Scatter Analysis Band 14 (11.2um) and Band 11 (8.5um)‏

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Data Transect in McIDAS-V

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison AIRS DPI in McIDAS-V  Created CF 1.4 Compliant netCDF files for:  CAPE, LI, TPW, PW1, PW2, PW3  Ingested netCDF files using McIDAS-V data explorer and displayed them in the McIDAS-V map display.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Loop of AIRS DPI in McIDAS-V

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Summary  Pro’s  Little or no programming skills needed.  Very resourceful Users guide.  Lots of room for new ideas and improvements.  Con’s  Needs lots of memory for large files or loops.  Load time  Cannot display 16 bands in one frame.  Display labels are hard to manipulate.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison References

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Thank You. UW CIMSS/SSEC McIDAS-V Team GOES-R proving ground team. AIRS DPI team Everyone for attending and time.

Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison  END