Application of back propagation algorithms in neural network based identification responses of AISI 316 face milling cryogenic machining technique

The paper explores the potential study of artificial neural network (ANN) for prediction of response surface roughness (Ra) in face milling operation with respect to cryogenic approach. The model o...

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