A Review on Signal Acquisition Methods for Tool Wear Monitoring in Turning Process

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Abstract:

On-line monitoring of tool wear in turning is vital to increase machine utilization as scrapped components, machine tool breakage and unscheduled downtime result from worn tool usage cause huge economic loss. Several techniques have been developed for monitoring wear levels on the cutting tool on-line. Keeping in to account the difficulties encountered during the implementation of tool condition monitoring (TCM). The signal acquisition is one of the key elements used during the implementation of TCM. This paper provides an in depth coverage of various signal acquisition methods used in TCM.

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Advanced Materials Research (Volumes 984-985)

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83-93

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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