Journal of the Japan Society for Abrasive Technology
Online ISSN : 1880-7534
Print ISSN : 0914-2703
ISSN-L : 0914-2703
Knowledge exploration of microdrill catalog database based on clustering
Yoshito NOHARAToshiki HIRIGAKIEiichi AOYAMAHiroyuki KODAMA
Author information
JOURNAL FREE ACCESS

2022 Volume 66 Issue 7 Pages 400-407

Details
Abstract

In this study, we applied data mining methods to printed circuit board (PCB) tool catalogs (defined as catalog mining), which contain a wealth of information on machining, to search for machining conditions, formulate hypotheses, and ultimately discover and construct new knowledge useful for drilling holes in PCBs. In particular, this paper focuses on classification by clustering methods. Application of the overlapping k-means method to the relationship between spindle speed and tool peripheral speed, common elements were found in all clusters. Hole drilling experiments under common conditions showed that the number of holes drilled exceeded the number of holes recommended in the catalog, indicating that these cutting conditions may provide representative stable drilling conditions.

Content from these authors
© 2022 by The Japan Society for Abrasive Technology
Next article
feedback
Top