Title: Using Cyberinfrastructure to Study the Earth
1Using Cyberinfrastructure to Study the Earths
Climate and Air Quality
Don Wuebbles Department of Atmospheric
Sciences University of Illinois,
Urbana-Champaign February 2005
2Special Acknowledgements
- Donna Cox
- John Martirano
- Lorne Leonard
- Stuart Levy
- Katharine Hayhoe
- And the students that contributed to the
visualization project
3Performance Data for MOZART-3
 MPI    OpenMP     wall-clock per
4WACCM-3 with chemistry
- Global climate model from ground to 140 km
- Integrates a stiff system of coupled nonlinear
differential equations over time - Domain 63 chemical species (or more), 66
vertical layers, 30 minute time step - 96 IBM power4 cpus full simulation year takes
about 6.6 wall clock hours (72 longit. x 46
latitud.) - 96 IBM power4 cpus full simulation year takes
about 27.7 wall clock hours (144 longit. x 96
latitud.)
5Geosciences CI Challenges
- Enormously complex human-natural system
- Vast temporal (sec to B yrs) and spatial (microns
to 1000s of km) scales - Highly nonlinear behavior
- Massive data sets
- physical and digital
- static/legacy and dynamic/streaming
- geospatially referenced
- multidisciplinary and heterogeneous
- open access
6Geosciences CI Challenges
- Massive computation
- weather, space weather, climate, hydrologic
modeling - seismic inversion
- coupled physical system models
- Inherently field-based, visual disciplines with
the need to manage information for long periods
of time - Bringing advanced CI capabilities to education at
all levels - Connecting the last mile to operational
practitioners
7Atmospheric Science Research
- Huge growth in observational and model data
volumes and data streams - Huge growth in model complexity, resolution and
sophistication requiring better initialization,
analysis and visualization techniques - Growing application of data assimilation as a
tool for providing homogeneous data sets and
extracting maximum information content from
observations - Distributed, intelligent observing systems
8Atmospheric Science Education
- Integration of collaboration tools and
distributed data capabilities into the
atmospheric sciences curriculum - Real-time weather data and archives of climate
data now commonly available in the classroom - Digital libraries assemblies of high-quality
teaching and learning resources with tools to
enable exploration of large atmospheric science
data sets
9Cyberinfrastructure and Science Analysis
Computing / Grid Services
Archive
Access/ Delivery
Information Technology Services
10Climate Data Visualization Development
- 2 stages
- Parallel Data Processing
- Prepare visualization data
- E.g., absolute temperature change over period
- Relative changes (departures / anomalies)
- Surface and altitude data
- Various projections (e.g., globe versus map)
11Climate Data Visualization Development
- Parallel Visualization
- Partiview on tiled display wall
- Multigigabytes visualizaions with separate views
- 40 node display wall at NCSA
- 15 node display wall at Atmospheric Sciences
- Arrange variables spatially for comparison and
analysis - 3-D and temporal interactivity
- Can be embedded in Virtual Director
- Allows for collaborators to see results in real
time - Recording and playback of spline-based navigation
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162000
172100
18A Few Findings from our project
- Need to learn each others language
- Just what is a rendering anyway?
- Undergraduate student help not reliable for
project completion - Good workers, but did not seem concerned with
whether they completed their tasks - The NCSA folks were great!
- Very helpful and always concerned about how they
could help me