
Jan-Eric Ståhl
Professor

Sensitivity of Colding tool life equation on the dimensions of experimental dataset
Author
Summary, in English
In this work, 22 sets of cutting data and tool life for longitudinal turning of steel are analyzed using the Colding equation. When modeling tool life with a limited number of tool performance data points, the model error may be low for these points. Evaluating the model for test points not used when computing the model coefficients may give larger errors for these points. This work proves that the Colding model also provides sufficient precision when modelling data points not being used to create the model, and is therefore a well-functioning instrument for tool life modelling. The results also prove that for the selected data, the precision of the model can be greatly improved when the dimension of the data set is increased from 5 to 10 data points. Above 13 data points the precision improvements are negligible.
Department/s
- Production and Materials Engineering
- SPI: Sustainable Production Initiative
Publishing year
2017-07-01
Language
English
Pages
271-281
Publication/Series
Journal of Superhard Materials
Volume
39
Issue
4
Full text
- Available as PDF - 633 kB
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Document type
Journal article
Publisher
Springer
Topic
- Metallurgy and Metallic Materials
Keywords
- machining
- the Colding equation
- tool life
- turning
Status
Published
Project
- Flintstone2020
ISBN/ISSN/Other
- ISSN: 1063-4576