Prediction of dental milling time-error by flexible neural trees and fuzzy rules

IDEAL'12 Proceedings of the 13th international conference on Intelligent Data Engineering and Automated Learning(2012)

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摘要
This multidisciplinary study presents the application of two soft computing methods utilizing the artificial evolution of symbolic structures --- evolutionary fuzzy rules and flexible neural trees --- for the prediction of dental milling time-error, i.e. the error between real dental milling time and forecast given by the dental milling machine. In this study a real data set obtained by a dynamic machining center with five axes simultaneously is analyzed to empirically test the novel system in order to optimize the time error.
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关键词
evolutionary fuzzy rule,real dental milling time,multidisciplinary study,artificial evolution,time error,dynamic machining center,flexible neural tree,dental milling time-error,dental milling machine
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