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Published in: Journal of Intelligent Manufacturing 8/2018

22-02-2016

A comparison of machine learning methods for cutting parameters prediction in high speed turning process

Authors: Zoran Jurkovic, Goran Cukor, Miran Brezocnik, Tomislav Brajkovic

Published in: Journal of Intelligent Manufacturing | Issue 8/2018

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Abstract

Support vector machines are arguably one of the most successful methods for data classification, but when using them in regression problems, literature suggests that their performance is no longer state-of-the-art. This paper compares performances of three machine learning methods for the prediction of independent output cutting parameters in a high speed turning process. Observed parameters were the surface roughness (Ra), cutting force \((F_{c})\), and tool lifetime (T). For the modelling, support vector regression (SVR), polynomial (quadratic) regression, and artificial neural network (ANN) were used. In this research, polynomial regression has outperformed SVR and ANN in the case of \(F_{c}\) and Ra prediction, while ANN had the best performance in the case of T, but also the worst performance in the case of \(F_{c}\) and Ra. The study has also shown that in SVR, the polynomial kernel has outperformed linear kernel and RBF kernel. In addition, there was no significant difference in performance between SVR and polynomial regression for prediction of all three output machining parameters.

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Appendix
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Metadata
Title
A comparison of machine learning methods for cutting parameters prediction in high speed turning process
Authors
Zoran Jurkovic
Goran Cukor
Miran Brezocnik
Tomislav Brajkovic
Publication date
22-02-2016
Publisher
Springer US
Published in
Journal of Intelligent Manufacturing / Issue 8/2018
Print ISSN: 0956-5515
Electronic ISSN: 1572-8145
DOI
https://doi.org/10.1007/s10845-016-1206-1

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