Application of back propagation algorithms in neural network based identification responses of AISI 316 face milling cryogenic machining technique
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Shrikantha S. Rao | Karthik Rao M C | Arun Kumar Shettigar | C KarthikRaoM | Rashmi L Malghan | Mervin A. Herbert | R. Malghan | A. Shettigar | M. Herbert | S. Rao
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