Evolutionary approach for cutting forces prediction in milling
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Kovacic:2004:JMPT,
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author = "M. Kovacic and J. Balic and M. Brezocnik",
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title = "Evolutionary approach for cutting forces prediction in
milling",
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journal = "Journal of Materials Processing Technology",
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year = "2004",
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volume = "155-156",
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pages = "1647--1652",
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month = "30 " # nov,
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abstract = "Knowing cutting forces is important for choosing
cutting parameters for milling. Traditionally, cutting
forces are calculated by equation which includes
empirically measured specific cutting forces. In the
article modelling of cutting forces with genetic
programming is proposed, which imitates principles of
living beings. Measurements have been made for two
materials (aluminium alloy AlMgSi1 and steel 1.2343)
and two different types of milling (conventional
milling and STEP milling). For each material and type
of milling parameters, tensile strength and hardness of
workpiece, tool diameter, cutting depth, spindle speed,
feeding and type of milling were monitored, and for
each combination of milling parameters cutting forces
were measured. On the basis of the experimental data,
different models for cutting forces prediction were
obtained by genetic programming. Research shows that
genetically developed models fit the experimental
data.",
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owner = "wlangdon",
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URL = "http://www.sciencedirect.com/science/article/B6TGJ-4CHS1T2-9/2/ca7fc5b9431830386384db78e7ee233a",
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keywords = "genetic algorithms, genetic programming, Milling
cutting forces prediction",
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ISSN = "0924-0136",
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DOI = "doi:10.1016/j.jmatprotec.2004.04.318",
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notes = "Journal article given in preference to conference
{"}Proceedings of the International Conference on
Advances in Materials and Processing Technologies{"}
AMPT 2003 Part 2 ISBN 1-8723-2739-7, 2003, Dublin City
University, pages 852-855. 8-11 July
",
- }
Genetic Programming entries for
Miha Kovacic
Joze Balic
Miran Brezocnik
Citations