Abstract
Data-mining methods using hierarchical and non-hierarchical clustering are proposed that will help engineers determine appropriate end-milling conditions. We have constructed a system that uses clustering techniques and tool catalog data to support the determination of end-milling conditions for different types of difficult-to-cut materials such as austenitic stainless steel, Ni-base superalloy, and titanium alloy. Variable cluster analysis and the K-means method were used together to identify tool shape parameters that have a linear relationship with the end-milling conditions listed in the catalogs. The response surface method and significant tool shape parameters obtained by clustering were used to derive end-milling condition decision equations, which were used to determine the indicative end-milling conditions for each material. Comparison with the conditions recommended by toolmakers demonstrated that our proposed system can be used to determine the cutting speeds for various difficult-to-cut materials.
Publisher
Trans Tech Publications, Ltd.
Reference7 articles.
1. Y. Yamane et al.: J. of Precision Engineering, Vol. 70, No. 3, (2004), pp.407-411 (in Japanese).
2. B. Ozcelik et al.: Int. J. of Advanced Manufacturing Technology, Vol. 27, (2005), pp.234-241.
3. M. Rahman et al.: JSME International Journal, Series C, Vol. 49, No. 1 (2006), pp.11-20.
4. P. Huang et al.: Int. J. of Advanced Manufacturing Technology, Vol. 55, (2011), pp.153-160.
5. H. Kodama et al.: Advanced Materials Research, Vol. 325, (2011), pp.345-350.