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Award Abstract #0540419
DDDAS-TMRP: A Dynamic Data Driven System for Structural Health Monitoring and Critical Event Prediction


NSF Org: CNS
Division of Computer and Network Systems
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Initial Amendment Date: September 14, 2005
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Latest Amendment Date: September 14, 2005
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Award Number: 0540419
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Award Instrument: Standard 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: October 1, 2005
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Expires: September 30, 2009 (Estimated)
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Awarded Amount to Date: $825000
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Investigator(s): Charbel Farhat cfarhat@stanford.edu (Principal Investigator)
Fu-Kuo Chang (Co-Principal Investigator)
Leonidas Guibas (Co-Principal Investigator)
John Michopoulos (Co-Principal Investigator)
Adrian Lew (Co-Principal Investigator)
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Sponsor: Stanford University
340 Panama Street
STANFORD, CA 94305 650/723-2300
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NSF Program(s): ITR-DYNAMIC DATA DRIV APP SYS,
DYNAMIC DATA DRIVEN APPL SYSTS
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Field Application(s): 0000912 Computer Science
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Program Reference Code(s): HPCC, 9218, 7481
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Program Element Code(s): 7581, 7481

ABSTRACT

During the last two decades, great strides have been achieved in many aspects of computational sciences and engineering. Higher-fidelity mathematical models, higher-order approximation methods, and faster solution algorithms have been developed for many applications. Computing speed barriers have also been shattered by hardware manufacturers. As a result, the potential of modeling and simulation for reducing design-cycle time and enhancing system performance is recognized today in almost every field of engineering. However, for many complex structural systems, even the most elaborate computational models remain bound to be imperfect for numerous reasons. The Dynamic Data Driven Application Systems (DDDAS) concept is a unique paradigm for exploiting maturing computational and sensor networking technologies to compensate for model deficiencies and unforeseen system evolution and stimulus conditions, mitigate the effect of design imperfections on long-term as well as short-term system safety, and enable informed decision for maintenance planning and crisis management.

This project will design, implement, build, and demonstrate by simulations as well as by laboratory experiments a DDDAS for health monitoring, failure prediction, and crisis management of complex structural systems operating in various time-scales. The project will enable advances in: (i) Applications: Development of inverse algorithms for generating hybrid analytical, computational, and data-updated models representing the behavior of degrading systems at various time-scales; (ii) Application Measurement Systems and Methods: Development of methods for preserving autonomous sensor network infrastructure in highly dynamic environments, preserving routing capabilities and time synchronization in the presence of system damage or degradation, sensor scoring and self-consistency checks, and dynamic models for reducing simulator-sensor node communication; (iii) Mathematical and Statistical Algorithms: Development of innovative algorithms for on-line identification of degrading systems, damage tracking, stable adaptive reduced-order modeling, and near real-time computing, and (iv) Systems Software Infrastructure: Development of a proof of concept software architecture that encapsulates all the advances in the above areas and furthermore addresses the issue of dynamically selecting and optimizing at run-time components of heterogeneous functionality over heterogeneous computing resources. Development of real-time, data driven, redundancy exploitation schemes for addressing the service quality degradation of wired and wireless sensor networks embedded in multidisciplinary systems, as a function of operating conditions.



A unique feature of the proposed research is a set of test-beds and associated laboratory experiments conceived not only to demonstrate the envisioned DDDAS, but also to support a strong educational component of the project.


PUBLICATIONS PRODUCED AS A RESULT OF THIS RESEARCH

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C. Farhat, J. Cortial, C. Dastillung and H. Bavestrello. "Time-Parallel Implicit Integrators for the Near-Real-Time Prediction of Linear Structural Dynamic Responses," International Journal for Numerical Methods in Engineering, v.67, 2006, p. 697.

C. Farhat, J. G. Michopoulos, F.K. Chang, L.J. Guibas, and A.J. Lew. "Towards a Dynamic Data Driven System for Structural and Material Health Monitoring," Proceedings, International Conference Computational Science - ICCS 2006, Reading, UK, May 28-31, 2006, Series: Lecture Notes in Computer Science, v.3, 2006, p. 456.

D. Amsallem and C. Farhat. "An Interpolation Method for Adapting Reduced-Order Models and Application to Aeroelasticity," AIAA Journal, v.46, 2008, p. 1803.

J. Cortial, C. Farhat, M. Rajashekhar and L. Guibas. "Compressed Sensing and Time-Parallel Reduced-Order Modeling for Structural Health Monitoring using a DDDAS," Lecture Notes in Computer Science, v.4487, 2007, p. 1171.

J. G. Michopoulos and M. Shahinpoor. "Data-Driven Inverse Modelling of Ionic Polymer Conductive Composite Plates," Proceedings of Third World Congress on Biomimetics, Artificial Muscles & Nano-Bio, Lausanne Switzerland, May 25-27, 2006, 2006, p. CD-ROM.

J. G. Michopoulos, T. Furukawa. "Multi-level Coupling of Dynamic Data-Driven Experimentation with Material Identification," International Conference on Computational Science (ICCS07), 2007, p. 1180.

J.G. Michopoulos, C. Farhat. "Towards Data-Driven Modeling and Simulation of Multiphysics Degrading Systems," Proceedings of the 16th European Conference of Fracture, Alexandroupolis, Greece, July 3-7, 2006 July 2006, 2006, p. 1416.

J.G. Michopoulos, C. Farhat, C. Bou-Mosleh. "On Data-Driven Modeling and Simulation of Aero-Thermo-Mechanically Degrading Nonlinear Continuum Systems," Proceedings of IDETC/CIE 2006 ASME 2006 International Design Engineering Technical Conferences & Computers and Information in Engineering Conference September 10-13, 2006, Philadelphia, Pennsylvania, Paper DETC2006-99737, 2006, p. CD-ROM.

J.G. Michopoulos, J. C. Hermanson, R. Badaliance. "Characterizing Wood-Plastic Composites via Data-Driven Methodologies," 9th International Conference on Wood & Biofiber Plastic Composites, July 21-23, 2007, 2007, p. CD.

J.G. Michopoulos, T. Furukawa. "Towards Data-Driven Optimal Design of Multi-axial Experiments for Characterizing Anisotropic Materials," Proceedings of 7th World Congress on Computational Mechanics WCCM-VII, Los Angeles, California July 16 - 22, 2006, 2006, p. CD-ROM.


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Last Updated:April 2, 2007