Study on Private Pilot Error Prevention Theory Based on Rough Set

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Abstract:

The paper studies on the theory of Private Pilot Error Prevention aiming at its peculiarity of operation and is based on the experienced data being evaluated by the resourceful pilots. Data Resource of Prevention Rule integrated analysis is proposed which using the two data sources from the civil aviation flight terms and the questionnaire from resourceful pilots. Knowledge Reasoning of Private Pilot Error Prevention Rules mainly analyzes that the requirement of traditional civil aviation flight terms include the experience from resourceful pilots, it is useful to represent information form meeting rough set requirements, these transversion need to go through complex bureaucratic procedures.

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1288-1291

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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