Evaluation of wear of turning carbide inserts using neural networks |
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Authors: | S. Das R. Roy A.B. Chattopadhyay |
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Affiliation: | ‡Department Of Mechanical Engineering, Indian Institute Of Technology, Kharagpur, India;†School Of Computing, University Of Plymouth, Drake Circus, Plymouth, U.K. |
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Abstract: | Recent trends, being towards mostly unmanned automated machining systems and consistent system operations, need reliable on-line monitoring processes. A proper on-line cutting tool condition monitoring system is essential for deciding when to change the tool. Many methods have been attempted in this connection.Recently, artificial neural networks have been tried for this purpose because of its inherent simplicity and reasonably quick data-processing capability. The present work uses the back propagation algorithm for training the neural network of 5-3-1 structure. The technique shows close matching of estimation of average flank wear and directly measured wear value. Thus the system developed demonstrates the possibility of successful tool wear monitoring on-line. |
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