Surface roughness modelling in hard turning operation of AISI 4140 using CBN cutting tool

被引:0
作者
Saeed Zare Chavoshi
Mehdi Tajdari
机构
[1] Iran University of Industries and Mines,Division of Manufacturing, Department of Engineering and Hi Tech
[2] Islamic Azad University,Department of Engineering
[3] Shahre-Ghods Branch,undefined
来源
International Journal of Material Forming | 2010年 / 3卷
关键词
Hard turning; Surface roughness; Regression analysis; Artificial neural network;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, the influence of hardness (H) and spindle speed (N) on surface roughness (Ra) in hard turning operation of AISI 4140 using CBN cutting tool has been studied. A multiple regression analysis using analysis of variance is conducted to determine the performance of experimental values and to show the effect of hardness and spindle speed on the surface roughness. Artificial neural network (ANN) and regression methods have been used for modelling of surface roughness in hard turning operation of AISI 4140 using CBN cutting tool. The input parameters are selected to be as hardness and spindle speed and the output is the surface roughness. Regression and artificial neural network optimum models have been presented for predicting surface roughness. The predicted surface roughness by the employed models has been compared with the experimental data which shows the preference of ANN in prediction of surface roughness during hard turning operation. Finally, a reverse ANN model is constructed to estimate the hardness and spindle speed from surface roughness values. The results indicate that the reverse ANN model can predict hardness for the train data and spindle speed for the test data with a good accuracy but the predicted spindle speed for the train data and the predicted hardness for the test data don’t have acceptable accuracy.
引用
收藏
页码:233 / 239
页数:6
相关论文
共 19 条
[1]  
Dejparvar Derakhshani E(2008)Experimental investigation of hardness and spindle speed effect on surface roughness in hard turning operation using CBN cutting tool Iranian Journal of Mechanical Engineering 60 40-49
[2]  
Akbari AA(2008)Regression analysis, support vector machines, and Bayesian neural network approaches to modeling surface roughness in face milling Int J Adv Manuf Technol 129 217-221
[3]  
Lela B(2002)Experimental study on hard turning hardened GCr15 steel with PCBN tool Journal of Material Processing Technology 10 817-823
[4]  
Bajić D(1999)Achieving precision grinding quality by hard turning Proceedings of the ASME IMECE, MED-Volume 32 1115-1124
[5]  
Jozić S(2007)A surface roughness prediction model for hard turning process Int J Adv Manuf Technol 19 473-483
[6]  
Liu XL(2008)Estimation of cutting forces and surface roughness for hard turning using neural networks J Intell Manuf 24 632-639
[7]  
Wen DH(2004)Modelling of CBN tool crater wear in finish hard turning J Intell Manuf 19 383-396
[8]  
Li ZG(2008)Design of neural network-based estimator for tool wear modeling in hard turning J Intell Manuf 4 4-22
[9]  
Xiao L(1987)An introduction to computing with neural nets IEEE ASSP undefined undefined-undefined
[10]  
Yan FG(undefined)undefined undefined undefined undefined-undefined