Fuzzy Controller for Aircraft Anti-Icing System - Initial Design and Analysis

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Abstract:

Authors research concern use of fuzzy expert systems in military and civilian aviation applications. Generally, the main effect of human efforts, in the case of those systems, is to create a machine with a set of behaviors and attitudes that would allow it to work independently, adjustable to changing environmental conditions and participate in decision making process. Fuzzy expert inference system supporting aircraft anti-icing system designing algorithm was described in this publication. The system uses Matlab, Fuzzy Logic Toolbox software. All problem analysis are only authors point of view about anti-icing system support. Use this technology in aircraft anti-icing system is pioneer. There are lack of publications in this topic in worldwide literature.

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Periodical:

Solid State Phenomena (Volume 251)

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218-223

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July 2016

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© 2016 Trans Tech Publications Ltd. All Rights Reserved

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