Modelling and optimization of surface roughness during AISI P20 milling process using Taguchi method

被引:0
作者
I. Tlhabadira
I. A. Daniyan
R. Machaka
C. Machio
L. Masu
L. R. VanStaden
机构
[1] Tshwane University of Technology,Department of Mechanical and Mechatronics Engineering
[2] Tshwane University of Technology,Department of Industrial Engineering
[3] Titanium Center of Competence,Department of Mechanical Engineering
[4] CSIR,Office of the VC
[5] Vaal University of Technology,undefined
[6] Tshwane University of Technology,undefined
来源
The International Journal of Advanced Manufacturing Technology | 2019年 / 102卷
关键词
Feed; Model; Optimum solutions; Surface roughness; Taguchi method;
D O I
暂无
中图分类号
学科分类号
摘要
Surface roughness Ra is a parameter normally used to indicate the level of surface irregularities during machining operations. This work aims to model the cutting process, correlate and optimise the critical process parameters using the Taguchi method during the milling operation of AISI P20 in order to reduce surface roughness. The Autodesk Fusion 360 (2.0.5357) was employed for modelling the stress, displacement and thermal behaviour of the cutting tool and work piece under different cutting conditions. The experimental plan was based on Taguchi’s technique including L9 orthogonal array with three factors and three levels for each variable and studying the contribution of each factor on surface roughness. The Taguchi method was used to study the effect of process parameters and establish correlation among the cutting speed, feed and depth of cut with respect to the major machinability factor, surface finish. The machining parameters evaluated in this study are the depth of cut (d), spindle speed (N) and cutting feed (fm) while the response factor measured is surface roughness. The physical experiments were conducted on M200 TS material on a DMC 635 V DMG ECOLINE, Deckel Maho Germany, Siemens 810D, 3-Axis, CNC vertical milling machine using carbide inserts and the surface roughness was measured using the Mitutoyo SJ–201, surface roughness Machine. The statistical analysis of both the numerical and physical experiments brought about the development of a mathematical model and optimum solutions for the evaluation of surface roughness during the milling process with high degree of correlation with experimental values thus validating the developed model.
引用
收藏
页码:3707 / 3718
页数:11
相关论文
共 123 条
[1]  
Miko E(2012)Analysis and verification of surface roughness constitution model after machining process Procedia Eng 39 395-404
[2]  
Nowakowski Ł(2013)A new parameter of statistic equality of sampling lengths in surface roughness measurement Stroj Vestn-J Mech E 59 339-348
[3]  
Tomov M(2013)Optimisation of machining parameters for turning operations based on response surface methodology Measurement 46 1521-1529
[4]  
Kuzinovski M(2011)Development of surface roughness prediction model for high speed end milling of hardened tool steel Asian J of Sci Res 4 255-263
[5]  
Cichosz P(2013)Calculation of the machining time of cutting tools from captured images of machined parts using image texture features J Eng Manuf 228 203-214
[6]  
Makadia AJ(2010)Tool life estimation model based on simulated flank wear during high speed hard turning Eur J Sci Res 39 265-278
[7]  
Nanavati JI(2018)Development of surface roughness prediction model for hard turning on AIAI D2 steel using cubic boron nitride insert Jurnal Teknologi (Sciences & Engineering) 80 173-178
[8]  
Ali AM(2011)Experimental estimation of tool wear and cutting temperatures in MQL using cutting fluids with CNT inclusion Int J Eng Sci Technol 3 2928-2931
[9]  
Adesta EYT(2016)Study on the correction of cutting force measurement with table dynamometer. 9th international conference on digital Enterprise technology-DET2016 “intelligent manufacturing in the knowledge economy era” Procedia CIRP 56 119-123
[10]  
Agusman D(2000)Cutting forces and surface finish when machining medium hardness steel using CBN tools Int J Mach Tool Manu 40 455-466