Communicating optimized decision input from stochastic turbulence forecasts
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Authors
Szczes, Jeanne R.
Subjects
Advisors
Eckel, F. Anthony
Date of Issue
2008-03
Date
Publisher
Monterey, California. Naval Postgraduate School
Language
Abstract
The uncertainty of weather forecasts contributes to mission risk. Ensemble data can improve combat capability by incorporating forecast uncertainty into the warfighter decision process. The study transforms raw ensemble data into optimized decision inputs for upper level turbulence using ORM principles and decision science. It demonstrates the methodology and importance of incorporating ambiguity, the uncertainty in forecast uncertainty, into the decision making process using the Taijitu method to estimate ambiguity. Comparing ambiguity and risk tolerance uncertainty intervals produces a more appropriate decision input compared to currently existing methods. Significant differences between the current and research derived decision input products demonstrate potential value added to decision making by incorporating ambiguity information. An effective visualization is devised for varying levels of risk tolerance and mission thresholds that is educational and practical for users. Research procedures and results can serve as an example to further education and development of stochastic methods in the Air Force and Department of Defense.
Type
Thesis
Description
Series/Report No
Department
Organization
Naval Postgraduate School (U.S.)
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NPS Report Number
Sponsors
Funder
Format
xx, 137 p : ill. ;
Citation
Distribution Statement
Approved for public release; distribution is unlimited.