International Journal of Advance Research and Innovation



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IJARI-ME-14-09-106 (1)

4. Conclusions
 
The conclusions made on the basis of results obtained 
from parametric analysis of surface roughness studies in 
turning using Artificial Neural Network have proved that 
ANN is a powerful tool and used for accurate prediction 
better than other techniques. Many of the researches have 
used MATLAB software for prediction of ANN. 
 
References 
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Gopichand, K. V. Subbaiah, Optimization of cutting 
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tipped tools using ANN, IJRET, 1(3), 2012
[2] Adnan jameel, Mohamah Minhat, Md. Nizam, Using 
genetic algorithm to optimize machining parameters in 
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Volume 2, Issue 3 (2014) 676-683 
ISSN 2347 - 3258
International Journal of Advance Research and Innovation 
683 
IJARI 
[18] Ruturaj Kulkarni, Hazim A. El Mounayri, Simulate 
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Predication of surface roughness in turning process 
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sciences and engineering research, 1(2), 2012
[21] Tugrul ozel, A. Esteves Correia, J. Paulo Davim, 
Neural network process modeling for turning of steel 
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