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Original Articles

A Bayesian network model for surface roughness prediction in the machining process

, , &
Pages 1181-1192 | Received 19 Apr 2007, Accepted 01 Nov 2007, Published online: 05 Nov 2008
 

Abstract

The literature reports many scientific works on the use of artificial intelligence techniques such as neural networks or fuzzy logic to predict surface roughness. This article aims at introducing Bayesian network-based classifiers to predict surface roughness (Ra) in high-speed machining. These models are appropriate as prediction techniques because the non-linearity of the machining process demands robust and reliable algorithms to deal with all the invisible trends present when a work piece is machining. The experimental test obtained from a high-speed milling contouring process analysed the indicator of goodness using the Naïve Bayes and the Tree-Augmented Network algorithms. Up to 81.2% accuracy was achieved in the Ra classification results. Therefore, we envisage that Bayesian network-based classifiers may become a powerful and flexible tool in high-speed machining.

Acknowledgements

We are grateful to the referees for their useful comments. This work was partially supported by the AFAVE Project under Grant DPI2003-07798-C04-01 and by the Spanish Ministry of Education and Science under Grant TIN2004-21428-E.

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