Title of article :
An Artificial Neural Network Approach to Prediction of Surface Roughness and Material Removal Rate in CNC Turning of C40 Steel
Author/Authors :
Rizvi, Saadat Ali Faculty member - University Polytechnic - Jamia Millia Islamia - New Delhi, India , Ali, Wajahat Department of Mechanical Engineering - SCRIET (CCS University) - Meerut, India
Abstract :
The present study is focused to investigate the effect of the various machining input parameters
such as cutting speed (vc), feed rate (f), depth of cut, and nose radius (r) on output i.e. surface
roughness (Ra and Rq) and metal removal rate (MRR) of the C40 steel by application of an
artificial neural network (ANN) method. ANN is a soft computing tool, widely used to predict,
optimize the process parameters. In the ANN tool, with the help of MATLAB, the training of the
neural networks has been done to gain the optimum solution. A model was established between the
computer numerical control (CNC) turning parameters and experimentally obtained data using
ANN and it was observed from the result that the predicted data and measured data are
moderately closer, which reveals that the developed model can be successfully applied to predict
the surface roughness and material removal rate (MRR) in the turning operation of a C40 steel
bar and it was also observed that lower the value of surface roughness (Ra and Rq) is achieved at
the cutting speed of 800 rpm with a feed rate of 0.1 mm/rev, a depth of cut of 2 mm and a nose
radius of 0.4 mm.
Keywords :
MRR , Modelling , Artificial neural network (ANN) , surface roughness , Turning
Journal title :
International Journal of Industrial Engineering and Production Research