Modeling surface roughness of point robot laser hardening, with emphasis on the surface
Article1_V5_No1

Keywords

modeling
surface roughness
robot
laser
hardening

How to Cite

Babič, M. (2021). Modeling surface roughness of point robot laser hardening, with emphasis on the surface. Polytechnica, 5(1), 6-9. https://doi.org/10.36978/cte.5.1.1

Abstract

The topic of Machine Learning is so popular that it is not only the future trend, but also the money tide. Machine learning technique and intelligent system methods are very popular in mechanical engineering. Robot laser surface hardening is one of the most promising techniques for surface modification of the microstructure of a material to improve wear and corrosion resistance. For predicting the surface roughness of the hardened specimens, the support vector machine and multiple regression is used. The aim of this paper is to present modeling roughness of point robot laser hardened specimens with different parameters of robot laser cell.
https://doi.org/10.36978/cte.5.1.1
Article1_V5_No1

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