DEVELOPMENT OF SUPPORT VECTOR MACHINE MODEL FOR CHIP FORM CLASSIFICATION IN TURNING OF POM-C

XIV International Conference on Industrial Engineering and Environmental Protection – IIZS 2024, str. 171-175

 

АУТОР / AUTHOR(S): Miloš Madić , Milan Trifunović , Marko Kovačević 

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DOI: 10.46793/IIZS24.171M

САЖЕТАК / ABSTRACT:

Chip form is considered as important turning process performance measure. It is the prevalent criteria for the evaluation of industrial plastics machinability. Chips of unfavourable forms also create difficulties in production, such as stopping of the machine tool and damage to the machined surface. This factor is influenced by the cutting parameters in turning, which are the depth of cut, feed rate and cutting speed. This study focuses on the development of optimized support vector machine model for binary classification of chip forms in turning of commonly used industrial plastic, unreinforced polyoxymethylene copolymer POM-C.

КЉУЧНЕ РЕЧИ / KEYWORDS:

 turning, chip, form, classification, POM-C, PCD, support vector machine

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