Eliciting a human understandable model of ice adhesion strength for rotor blade leading edge materials from uncertain experimental data

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Abstract

The published ice adhesion performance data of novel ice-phobic coatings varies significantly, and there are not reliable models of the properties of the different coatings that help the designer to choose the most appropriate material. In this paper it is proposed not to use analytical models but to learn instead a rule-based system from experimental data. The presented methodology increases the level of post-processing interpretation accuracy of experimental data obtained during the evaluation of ice-phobic materials for rotorcraft applications. Key to the success of this model is a possibilistic representation of the uncertainty in the data, combined with a fuzzy fitness-based genetic algorithm that is capable to elicit a suitable set of rules on the basis of incomplete and imprecise information.

Year of Publication
2012
Journal
Expert Systems with Applications
Volume
39
Number of Pages
10212-10225
ISSN Number
0957-4174
URL
http://www.sciencedirect.com/science/article/pii/S0957417412004186
DOI
10.1016/j.eswa.2012.02.155
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