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Award Abstract #0540259
DDDAS-SMRP: Data Assimilation by Field Alignment


NSF Org: CNS
Division of Computer and Network Systems
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Initial Amendment Date: September 15, 2005
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Latest Amendment Date: December 23, 2008
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Award Number: 0540259
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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 1, 2006
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Expires: December 31, 2009 (Estimated)
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Awarded Amount to Date: $459898
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Investigator(s): Dennis McLaughlin dennism@mit.edu (Principal Investigator)
Kerry Emanuel (Co-Principal Investigator)
Srinivas Ravela (Co-Principal Investigator)
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Sponsor: Massachusetts Institute of Technology
77 MASSACHUSETTS AVE
Cambridge, MA 02139 617/253-1000
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NSF Program(s): ITR-DYNAMIC DATA DRIV APP SYS,
COMPUTER SYSTEMS,
CYBERINFRASTRUCTURE
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Field Application(s): 0000912 Computer Science
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Program Reference Code(s): HPCC, 9218, 7231, 4444
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Program Element Code(s): 7581, 7354, 7231

ABSTRACT

An ideal DDDAS will optimally coordinate state estimation and the observation process. This is indispensable for environmental applications, where models are imperfect and measurements are limited and uncertain. A key part of environmental DDDAS is data assimilation, broadly defined as the process of estimating the state of a system using all relevant information. This project will develop a new approach to data assimilation that makes better use of observations to deal with model imperfections. This new approachwill be developed in the context of mesoscale weather, such as thunderstorms, squall-lines, hurricanes, precipitation, and fronts. In these situations, forecast errors occur in both position ("the storm is in the wrong place") and amplitude ("forecast winds are off"). Position errors are particularly important since they degrade our ability to predict storm tracks, issue warnings, and properly target observation platforms such as aircraft. Current assimilation methods have problems dealing with position errors. Instead of correcting these errors directly, they tend to compensate for them by distorting amplitudes. Distorted amplitude estimates can produce poor forecasts. Poor forecasts are a problem in their own right but, in the case of an environmental DDDAS, they can easily make strategies for gathering new observations ineffective. In this new formulation for data assimilation accounts for errors in both position and amplitude. This leads to a minimization algorithm that can be expressed in two steps: a regularized variational alignment problem and an amplitude adjustment problem. Alignment can be formulated with or without feature detection, it maintains dynamical consistency, and it permits the smoothness of the solution to be systematically controlled. Field alignment should significantly advance the state of DDDAS for environmental problems.

This work will lead to better analysis of mesoscale weather, especially hurricanes and severe storms. It turns out that expressing errors in terms of position and amplitude is quite general. Thus, from the perspective of DDDAS, this work will provide new ways to deal with model error in applications as diverse as hydrology, ecology, and oceanography. Field alignment also nicely complements existing amplitude-oriented assimilation methods used in operational weather forecasting centers. Finally, the regularization aspects of this work will also advance the state of the art in alignment methods, which will benefit biomedical imaging and object recognition research.


PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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Emanuel, K; Ravela, S; Vivant, E; Risi, C. "A statistical deterministic approach to hurricane risk assessment," BULLETIN OF THE AMERICAN METEOROLOGICAL SOCIETY, v.87, 2006, p. 299-+. 

Gamble, L; Ravela, S; McGarigal, K. "Multi-scale features for identifying individuals in large biological databases: an application of pattern recognition technology to the marbled salamander Ambystoma opacum," JOURNAL OF APPLIED ECOLOGY, v.45, 2008, p. 170-180. 

Jafarpour, B; McLaughlin, DB. "History matching with an ensemble Kalman filter and discrete cosine parameterization," COMPUTATIONAL GEOSCIENCES, v.12, 2008, p. 227-244. 

L. Gamble, S. Ravela and K. McGarigal. "Multi-scale Features for Identifying Individuals in Large Biological Databases: An Application of Pattern Recognition Technology in Amphibian Research,," Journal of Applied Ecology, v.45(1), 2008, p. 170.

Ravela, S. "Amplitude-position formulation of data assimilation," COMPUTATIONAL SCIENCE - ICCS 2006, PT 3, PROCEEDINGS, v.3993, 2006, p. 497-505. 

Ravela, S. "Two extensions of data assimilation by field alignment," Computational Science - ICCS 2007, Pt 1, Proceedings, v.4487, 2007, p. 1147-1154. 

Ravela, S; Emanuel, K; McLaughlin, D. "Data assimilation by field alignment," PHYSICA D-NONLINEAR PHENOMENA, v.230, 2007, p. 127-145. 

Ravela, S; Marshall, J; Hill, C; Wong, A; Stransky, S. "A realtime observatory for laboratory simulation of planetary circulation," Computational Science - ICCS 2007, Pt 1, Proceedings, v.4487, 2007, p. 1155-1162. 

Ravela, S; Marshall, J; Hill, C; Wong, A; Stransky, S. "Tracking rotating fluids in realtime using snapshots," 2008 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, VOLS 1-12, 2008, p. 1610-1617. 

Ravela, S; McLaughlin, D. "Fast ensemble smoothing," OCEAN DYNAMICS, v.57, 2007, p. 123-134. 


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Last Updated:April 2, 2007