FBF-NN-based modelling of cylindrical plunge grinding process using a GA
@article{Nandi2005FBFNNbasedMO, title={FBF-NN-based modelling of cylindrical plunge grinding process using a GA}, author={A. Nandi and M. K. Banerjee}, journal={Journal of Materials Processing Technology}, year={2005}, volume={162}, pages={655-664} }
Abstract In order to make a machining process cost effective as well as to assure the desired objective(s), it is important to find the optimal machining parameter(s) in considering all related output variable(s). However developing many models (each one corresponding to a single output variable) leads to more time consuming as well as difficult to interact them. Moreover it has been observed that some of the output variables are inter-related with each other. In this paper, an intelligent… CONTINUE READING
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