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Multi-Objective Optimization of Milling Parameters for Machining Cast Iron on Machining Centre

Author Affiliations

  • 1 R.V.R and J.C College Of Engineering

Res. J. Engineering Sci., Volume 2, Issue (5), Pages 35-39, May,26 (2013)


This paper presents an approach for determination of the best cutting parameters leading to minimum surface roughness and maximum Material Removal Rate in machining Cast Iron on Machining Centre. A feed forward neural network model is developed exploiting experimental values. The neural network model is trained and tested in MATLAB. Multi objective Genetic algorithm coupled with neural network is employed to find optimum cutting parameters leading to minimum surface roughness and maximum Material Removal Rate.


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