Fault detection of aircraft system with random forest algorithm and similarity measure

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Abstract

Research on fault detection algorithm was developed with the similarity measure and random forest algorithm. The organized algorithm was applied to unmanned aircraft vehicle (UAV) that was readied by us. Similarity measure was designed by the help of distance information, and its usefulness was also verified by proof. Fault decision was carried out by calculation of weighted similarity measure. Twelve available coefficients among healthy and faulty status data group were used to determine the decision. Similarity measure weighting was done and obtained through random forest algorithm (RFA); RF provides data priority. In order to get a fast response of decision, a limited number of coefficients was also considered. Relation of detection rate and amount of feature data were analyzed and illustrated. By repeated trial of similarity calculation, useful data amount was obtained. © 2014 Sanghyuk Lee et al.

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Lee, S., Park, W., & Jung, S. (2014). Fault detection of aircraft system with random forest algorithm and similarity measure. Scientific World Journal, 2014. https://doi.org/10.1155/2014/727359

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