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Published in: The International Journal of Advanced Manufacturing Technology 11-12/2021

23-07-2021 | ORIGINAL ARTICLE

Multi-response optimization using artificial neural network-based GWO algorithm for high machining performance with minimum quantity lubrication

Authors: Mourad Nouioua, Aissa Laouissi, Mohamed Athmane Yallese, Riad Khettabi, Salim Belhadi

Published in: The International Journal of Advanced Manufacturing Technology | Issue 11-12/2021

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Abstract

In the current work, an experimental study has been carried out in order to evaluate the influence of cutting settings on surface roughness and tangential force, when turning of X210Cr12 steel using coated carbide insert with various nose radius. The ANOVA analysis has been performed to determine the effect of cutting conditions on studied outputs. The experimental data have been analyzed using S/N ratios, mean effect graphs, and 3D response surface plots. The results indicate that the cutting insert nose radius and the feed rate are the mainly affecting factors on surface roughness, while tangential force is affected principally by depth of cut followed by feed rate. Confirmatory experiments have been established after Taguchi’s optimization. Mathematical prediction models have been developed using artificial neural network (ANN), and the multi-objective GWO algorithm was integrated for multi-objective optimization of Ra and Fz. It has been found that the cutting force is largely affected by the cutting depth with contribution and feed rate. Also, low feeds and cutting inserts with a large nose are useful for finishing process where low roughness is desired. Regarding the cooling mode, the minimum quantity lubrication is an interesting way to minimize lubricant quantity and protect operator health and environment with keeping better machining quality.

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Metadata
Title
Multi-response optimization using artificial neural network-based GWO algorithm for high machining performance with minimum quantity lubrication
Authors
Mourad Nouioua
Aissa Laouissi
Mohamed Athmane Yallese
Riad Khettabi
Salim Belhadi
Publication date
23-07-2021
Publisher
Springer London
Published in
The International Journal of Advanced Manufacturing Technology / Issue 11-12/2021
Print ISSN: 0268-3768
Electronic ISSN: 1433-3015
DOI
https://doi.org/10.1007/s00170-021-07745-5

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