Title of article :
Modeling the effect of variable work piece hardness on surface roughness in an end milling using multiple regression and adaptive Neuro fuzzy inference system
Author/Authors :
Desale، Purushottam S. نويسنده SJJT University, Jhunjhunu -333001, Rajasthan, India , , Jahagirdar، Ramchandra S. نويسنده institute Of Knowledge, College Of Engineering, Pune -412208, Maharashtra, India ,
Issue Information :
دوفصلنامه با شماره پیاپی 17 سال 2014
Pages :
8
From page :
265
To page :
272
Abstract :
The aim of this study is to correlate work piece material hardness with surface roughness in prediction studies. The proposed model is for prediction of surface roughness of tool steel materials of hardness 55 HRC to 62 HRC (±2 HRC). The machining experiments are performed under various cutting conditions using work piece of different hardness. The surface roughness of these specimens is measured. The result showed that the influence of work piece material hardness on surface finish is significant for cutting speed and feed in CNC end milling operation. It is also observed that the surface roughness prediction accuracy of Adaptive neuro fuzzy inference system using triangular membership function is better than Gaussian, bell shape membership function and regression analysis. Surface roughness prediction accuracy with material hardness as input parameter is 97.61%.
Journal title :
International Journal of Industrial Engineering Computations
Serial Year :
2014
Journal title :
International Journal of Industrial Engineering Computations
Record number :
1022996
Link To Document :
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