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Modeling of Surface Roughness in Honing Processes by UsingFuzzy Artificial Neural Networks

Abstract

Honing processes are abrasive machining processes which are commonly employed to improve the surface of manufactured parts such as hydraulic or combustion engine cylinders. These processes can be employed to obtain a cross-hatched pattern on the internal surfaces of cylinders. In this present study, fuzzy artificial neural networks are employed for modeling surface roughness parameters obtained in finishing honing operations. As a general trend, main factors influencing roughness parameters are grain size and pressure. Mean spacing between profile peaks at the mean line parameter, on the contrary, depends mainly on tangential and linear velocity. Grain Size of 30 and pressure of 600 N/cm 2 lead to the highest values of core roughness (Rk) and reduced valley depth (Rvk), which were 1.741 µm and 0.884 µm, respectively. On the other hand, the maximum peak-to-valley roughness parameter (Rz) so obtained was 4.44 µm, which is close to the maximum value of 4.47 µm. On the other hand, values of the grain size equal to 14 and density equal to 20, along with pressure 600 N/cm 2 and both tangential and linear speed of 20 m/min and 40 m/min, respectively, lead to the minimum values of core roughness, reduced peak height (Rpk), reduced valley depth and maximum peak-to-valley height of the profile within a sampling length, which were, respectively, 0.141 µm, 0.065 µm, 0.142 µm, and 0.584 µm.

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Authors (3)

Keywords

Details

Category:
Articles
Type:
artykuły w czasopismach
Published in:
Journal of Manufacturing and Materials Processing no. 7,
ISSN:
Language:
English
Publication year:
2023
Bibliographic description:
Buj - Corral I., Sender P., Luis-Pérez C. J. L.: Modeling of Surface Roughness in Honing Processes by UsingFuzzy Artificial Neural Networks// Journal of Manufacturing and Materials Processing -,iss. 23 (2023),
DOI:
Digital Object Identifier (open in new tab) 10.3390/jmmp7010023
Sources of funding:
  • COST_FREE
Verified by:
Gdańsk University of Technology

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