Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids

Precise milling of thin-walled components is a difficult task process owing to the geometric complexity and low stiffness connected with them. This paper is concerned with a systematic comparative study between predicted and measured surface roughness. RSM and ANN applied in prediction and optimizat...

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Main Authors: Yanis, M., Mohruni, A. S., Sharif, S., Yani, I.
Format: Article
Published: Asian Research Publishing Network 2019
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Online Access:http://eprints.utm.my/id/eprint/92670/
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spelling my.utm.926702021-10-28T10:09:51Z http://eprints.utm.my/id/eprint/92670/ Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids Yanis, M. Mohruni, A. S. Sharif, S. Yani, I. TJ Mechanical engineering and machinery Precise milling of thin-walled components is a difficult task process owing to the geometric complexity and low stiffness connected with them. This paper is concerned with a systematic comparative study between predicted and measured surface roughness. RSM and ANN applied in prediction and optimization of milling thin-walled steel components. Cutting speed, feed rate, radial and axial depth of cut are the main affecting process parameters on surface roughness. In order to protect our precious environment, this work utilized vegetable oil as biodegradable cutting fluids that resolve the lowest amount of ecological contamination provide well economic conditions. The milling have done under flood cooling and using uncoated carbide as cutting tool. The results indicate that the RSM and ANN models are very close to the experimental results, ANN predictions show better convergence than the RSM model. The best of surface roughness value (0.314 μm) can be achieved with a desirability of 98.6%, cutting speed, feed rate, radial and axial depth of cut were 125 m/min, 0.04 mm/tooth, 0.25 mm and 10 mm, respectively. The best configuration of the ANN structure was 4-16-1. The feed rate cause most significant effect on surface roughness, followed by axial and radial depth of cut. Asian Research Publishing Network 2019 Article PeerReviewed Yanis, M. and Mohruni, A. S. and Sharif, S. and Yani, I. (2019) Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids. ARPN Journal of Engineering and Applied Sciences, 14 (18). pp. 3124-3134. ISSN 1819-6608
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Yanis, M.
Mohruni, A. S.
Sharif, S.
Yani, I.
Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
description Precise milling of thin-walled components is a difficult task process owing to the geometric complexity and low stiffness connected with them. This paper is concerned with a systematic comparative study between predicted and measured surface roughness. RSM and ANN applied in prediction and optimization of milling thin-walled steel components. Cutting speed, feed rate, radial and axial depth of cut are the main affecting process parameters on surface roughness. In order to protect our precious environment, this work utilized vegetable oil as biodegradable cutting fluids that resolve the lowest amount of ecological contamination provide well economic conditions. The milling have done under flood cooling and using uncoated carbide as cutting tool. The results indicate that the RSM and ANN models are very close to the experimental results, ANN predictions show better convergence than the RSM model. The best of surface roughness value (0.314 μm) can be achieved with a desirability of 98.6%, cutting speed, feed rate, radial and axial depth of cut were 125 m/min, 0.04 mm/tooth, 0.25 mm and 10 mm, respectively. The best configuration of the ANN structure was 4-16-1. The feed rate cause most significant effect on surface roughness, followed by axial and radial depth of cut.
format Article
author Yanis, M.
Mohruni, A. S.
Sharif, S.
Yani, I.
author_facet Yanis, M.
Mohruni, A. S.
Sharif, S.
Yani, I.
author_sort Yanis, M.
title Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
title_short Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
title_full Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
title_fullStr Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
title_full_unstemmed Optimization of surface roughness using RSM and ann modelling on thin-walled machiningunder biodegradable cutting fluids
title_sort optimization of surface roughness using rsm and ann modelling on thin-walled machiningunder biodegradable cutting fluids
publisher Asian Research Publishing Network
publishDate 2019
url http://eprints.utm.my/id/eprint/92670/
_version_ 1715189672403009536
score 13.18916