DSpace logo

Please use this identifier to cite or link to this item: http://142.54.178.187:9060/xmlui/handle/123456789/905
Title: OPTIMIZATION OF SURFACE ROUGHNESS USING RSM AND ANN MODELLING ON THIN-WALLED MACHININGUNDER BIODEGRADABLE CUTTING FLUIDS
Authors: Yanis, M.
Mohruni, A. S.
Sharif, S.
Yani, I.
Keywords: Engineering and Technology
Optimization
Thin-walled
Surface roughness
Coconut oil
RSM
ANN
Issue Date: 20-Sep-2019
Publisher: Asian Research Publishing Network
Abstract: 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.
URI: http://142.54.178.187:9060/xmlui/handle/123456789/905
ISSN: 1819-6608
Appears in Collections:Journals

Files in This Item:
File Description SizeFormat 
jeas_0919_7913.htm146 BHTMLView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.