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Award Abstract #0540347
Collaborative Research: DDDAS-TMRP: Dynamic Sensor Networks - Enabling the Measurement, Modeling, and Prediction of Biophysical Change in a Landscape

| NSF Org: |
CNS
Division of Computer and Network Systems
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| Initial Amendment Date: |
September 16, 2005 |
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| Latest Amendment Date: |
March 20, 2009 |
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| Award Number: |
0540347 |
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| Award Instrument: |
Continuing grant |
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| Program Manager: |
Krishna Kant
CNS Division of Computer and Network Systems
CSE Directorate for Computer & Information Science & Engineering
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| Start Date: |
January 15, 2006 |
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| Expires: |
December 31, 2010 (Estimated) |
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| Awarded Amount to Date: |
$1259842 |
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| Investigator(s): |
James Clark jimclark@duke.edu (Principal Investigator)
Carla Ellis (Co-Principal Investigator) Pankaj Agarwal (Co-Principal Investigator) Jun Yang (Co-Principal Investigator) Kameshwar Munagala (Co-Principal Investigator)
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| Sponsor: |
Duke University
2200 W. Main St, Suite 710
Durham, NC 27705 919/684-3030
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| NSF Program(s): |
DYNAMIC DATA DRIVEN APPL SYSTS, COMPUTER SYSTEMS, NAT ECOLOGICAL OBSERVATORY NET
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| Field Application(s): |
0000912 Computer Science
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| Program Reference Code(s): |
OTHR, HPCC, 9251, 9218, 2884, 0000
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| Program Element Code(s): |
7481, 7354, 7350
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ABSTRACT

The next generation of wireless sensor networks will be dynamic systems with the potential to
revolutionize understanding of environmental change, provided they can assimilate large amounts of heterogeneous data in real time, rapidly assess (optimize) the relative value and costs of new data collection, and schedule subsequent measurements accordingly. Thus, they are Dynamic Data Driven Application Systems that integrate sensing with modeling in an adaptive framework. Keen interest in broad application of wireless sensing of the environment, as in NEON and CLEANER, awaits DDDAS technology that can estimate the value of future data in terms of its contribution to understanding against the costs of deployment, acquisition, transmission, and storage. This balance is especially important for environmental data, because networks will typically be deployed in remote locations without access to infrastructure (e.g., power), and sampling intervals will range from meters and seconds to landscapes and years, depending on the process, the current state of the system, the uncertainty about that state, and the perceived potential for rapid change. Network control must be dynamic and driven by models capable of
learning about both the environment and the network. The focus of this project is the dynamic sensor network application involving understanding how biodiversity and carbon storage are influenced by global change. Specifically, this project is designed to learn how the growth, survival, and reproduction of forest trees are influenced by changes in climate, CO2 and disturbance, in the context of these and other variables that can fluctuate rapidly. This goal involves models of how tree growth and resource allocation are influenced by variables that can be understood through adaptive sampling across diverse scales in both time and space. The project will enable a general framework for dynamic data-driven wireless network control that combines environmental modeling and sensor network modeling both in and out of the network. Out of the network, environmental modeling entails full assimilation of all information, with exploitation of computing resources available there. Environmental modeling in the network is based on simplified representations that provide real-time, approximate answers. The in-network control model provides rapid scheduling for new measurements, and it communicates network information to the server, for diagnostics, supervisory control, and data assimilation. Periodically, the in-network model is updated
based on this most complete understanding of the environmental variables, parameters, and battery life. Specific goals are (i) to construct a wireless sensing and networking infrastructure that supports a new paradigm of joint in-network and supervisory measurement, modeling, and prediction, (ii) to develop the modeling strategy needed to combine system understanding with costs for efficient wireless sensing of the environment, (iii) to make significant progress in understanding the maintenance of biodiversity and in measuring ecosystem properties, and (iv) to improve collaboration between computer sciences, engineering, statisticians and environmental scientists.
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