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Coordinated Machine Learning and Decision Support for Situation Awareness
Electrical and Computer Engineering Faculty Research & Creative Works
  • Timothy Draelos
  • Pengchu Zhang
  • Donald C. Wunsch, Missouri University of Science and Technology
  • John E. Seiffertt, IV, Missouri University of Science and Technology
  • Gregory Conrad
  • Nathan Brannon
Abstract

For applications such as force protection, an effective decision maker needs to maintain an unambiguous grasp of the environment. Opportunities exist to leverage computational mechanisms for the adaptive fusion of diverse information sources. The current research employs neural networks and Markov chains to process information from sources including sensors, weather data, and law enforcement. Furthermore, the system operator's input is used as a point of reference for the machine learning algorithms. More detailed features of the approach are provided, along with an example force protection scenario.

Department(s)
Electrical and Computer Engineering
Report Number
SAND2007-6058
Document Type
Technical Report
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2007 United States. Department of Energy, All rights reserved.
Publication Date
1-1-2007
Publication Date
01 Jan 2007
Citation Information
Timothy Draelos, Pengchu Zhang, Donald C. Wunsch, John E. Seiffertt, et al.. "Coordinated Machine Learning and Decision Support for Situation Awareness" (2007) p. 1 - 46
Available at: http://works.bepress.com/donald-wunsch/184/