G. M. Acayaba and P. M. De-escalona, Prediction of surface roughness in low speed turning of AISI 316 austenitic stainless steel, CIRP Journal of Manufacturing Science and Technology, vol.11, pp.62-67, 2015.

C. Ahilan, S. Kumanan, N. Sivakumaran, and J. E. Dhas, Modeling and prediction of machining quality in CNC turning process using intelligent hybrid decision making tools, Applied Soft Computing, vol.13, issue.3, pp.1543-1551, 2013.

A. Hazza, M. H. Adesta, and E. Y. , Investigation of the effect of cutting speed on the surface roughness parameters in CNC end milling using artificial neural network, IOP Conference Series: Materials Science and Engineering, vol.53, p.12089, 2013.

S. Al-zubaidi, J. A. Ghani, and C. H. Haron, Application of ANN in milling process: a review, Modelling and Simulation in Engineering, vol.2011, p.696275, 2011.

I. Asiltürk and M. Çunka?, Modeling and prediction of surface roughness in turning operations using artificial neural network and multiple regression method, Expert Systems with Applications, vol.38, issue.5, pp.5826-5832, 2011.

A. C. Basheer, U. A. Dabade, S. S. Joshi, V. Bhanuprasad, and V. Gadre, Modeling of surface roughness in precision machining of metal matrix composites using ANN, Journal of Materials Processing Technology, vol.197, issue.1, pp.439-444, 2008.

M. H. Beale, M. T. Hagan, and H. B. Demuth, Neural Network Toolbox 7: User's Guide, 2010.

D. Cica, B. Sredanovic, G. Lakic-globocki, and D. Kramar, Modeling of the cutting forces in turning process using various methods of cooling and lubricating: an artificial intelligence approach, Advances in Mechanical Engineering, vol.5, p.798597, 2013.

J. P. Davim, V. Gaitonde, and S. Karnik, Investigations into the effect of cutting conditions on surface roughness in turning of free machining steel by ANN models, Journal of Materials Processing Technology, vol.205, issue.1, pp.16-23, 2008.

E. N. Eki?-ci?, U. Gu?-ltekin, and T. Kivak, Evaluation of the effects of cutting parameters on the surface roughness during the turning of Hadfield steel with response surface methodology, Uluda? University Journal of the Faculty of Engineering, vol.19, issue.2, pp.19-28, 2014.

L. Fausett, Backpropagation neural net, Fundamentals of Neural Networks: Architectures, Algorithms, and Applications, pp.292-296, 1994.

J. A. Freeman and D. M. Skapura, Backpropagation', Algorithms, Applications, and Programming Techniques, pp.101-102, 1991.

M. S. Hossain and N. Ahmad, Surface roughness prediction modelling for commercial dies using ANFIS, ANN and RSM, International Journal of Industrial and Systems Engineering, vol.16, issue.2, pp.156-183, 2014.

A. Kialashaki and J. R. Reisel, Development and validation of artificial neural network models of the energy demand in the industrial sector of the United States, vol.76, pp.749-760, 2014.

M. Madi? and M. Radovanovi?, Application of RCGA-ANN approach for modeling kerf width and surface roughness in CO 2 laser cutting of mild steel, Journal of the Brazilian Society of Mechanical Sciences and Engineering, vol.35, issue.2, pp.103-110, 2013.

M. Moghri, M. Madic, M. Omidi, and M. Farahnakian, Surface roughness optimization of polyamide-6/nanoclay nanocomposites using artificial neural network: genetic algorithm approach, The Scientific World Journal, vol.2014, p.485205, 2014.

K. S. Murthy and I. G. Rajendran, Prediction and analysis of multiple quality characteristics in drilling under minimum quantity lubrication, Proceedings of the institution of Mechanical Engineers, vol.226, pp.1061-1070, 2012.

M. Nalbant, H. Gökkaya, ?. Tokta?, and G. Sur, The experimental investigation of the effects of uncoated, PVD-and CVD-coated cemented carbide inserts and cutting parameters on surface roughness in CNC turning and its prediction using artificial neural networks', Robotics and Computer-Integrated Manufacturing, vol.25, issue.1, pp.211-223, 2009.

S. Ozen and G. M. Bayhan, Optimisation of machining parameters using Hopfield-type neural networks', International Journal of Industrial and Systems Engineering, vol.13, issue.4, pp.462-479, 2013.

M. R. Phate and V. Tatwawadi, Mathematical models of material removal rate & power consumption for dry turning of ferrous material using dimensional analysis in Indian prospective, Jordan Journal of Mechanical and Industrial Engineering, vol.9, issue.1, pp.27-38, 2015.

F. J. Pontes, A. P. De-paiva, P. P. Balestrassi, J. R. Ferreira, and M. B. Da-silva, Optimization of radial basis function neural network employed for prediction of surface roughness in hard turning process using Taguchi's orthogonal arrays, Expert Systems with Applications, vol.39, issue.9, pp.7776-7787, 2012.

P. Shandilya, P. Jain, and N. Jain, Prediction of surface roughness during wire electrical discharge machining of SiCp/6061 Al metal matrix composite, International Journal of Industrial and Systems Engineering, vol.12, issue.3, pp.301-315, 2012.

J. Ståhl, F. Schultheiss, and S. Hägglund, Analytical and experimental determination of the Ra surface roughness during turning, Procedia Engineering, vol.19, pp.349-356, 2011.

S. Sunder and V. Yadava, Modelling and optimisation of material removal rate and surface roughness in surface-electrical discharge diamond grinding process, International Journal of Industrial and Systems Engineering, vol.17, issue.2, pp.133-151, 2014.

E. S. Topal, The role of stepover ratio in prediction of surface roughness in flat end milling, International Journal of Mechanical Sciences, vol.51, issue.11, pp.782-789, 2009.

V. Upadhyay, P. Jain, and N. Mehta, In-process prediction of surface roughness in turning of Ti-6Al-4V alloy using cutting parameters and vibration signals, vol.46, pp.154-160, 2013.

N. M. Vaxevanidis, J. D. Kechagias, N. A. Fountas, and D. E. Manolakos, Evaluation of machinability in turning of engineering alloys by applying artificial neural networks', Open Construction and Building Technology Journal, vol.8, pp.389-399, 2014.

M. Velibor and M. Milos, Optimization of surface roughness in turning alloy steel by using Taguchi method, Scientific Research and Essays, vol.6, issue.16, pp.3474-3484, 2011.

M. A. Xavior and M. Adithan, Evaluation of parametric models in predicting the machining performance, International Journal of Industrial and Systems Engineering, vol.11, issue.4, pp.406-427, 2012.

A. M. Zain, H. Haron, S. N. Qasem, and S. Sharif, Regression and ANN models for estimating minimum value of machining performance, Applied Mathematical Modelling, vol.36, issue.4, pp.1477-1492, 2012.