Abstract
Productivity and quality in the finish turning of hardened steels can be improved by utilizing predicted performance of the cutting tools. This paper combines predictive machining approach with neural network modeling of tool flank wear in order to estimate performance of chamfered and honed Cubic Boron Nitride (CBN) tools for a variety of cutting conditions. Experimental work has been performed in orthogonal cutting of hardened H-13 type tool steel using CBN tools. At the selected cutting conditions the forces have been measured using a piezoelectric dynamometer and data acquisition system. Simultaneously flank wear at the cutting edge has been monitored by using a tool makers microscope. The experimental force and wear data were utilized to train the developed simulation environment based on back propagation neural network modeling. A trained neural network system was used in predicting flank wear for various different cutting conditions. The developed prediction system was found to be capable of accurate tool wear classification for the range it had been trained. © 2001 Elsevier Science Ltd. All rights reserved.
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CITATION STYLE
Schuhmacher, P., Radjai, F., & Roux, S. (2017). Wall roughness and nonlinear velocity profiles in granular shear flows. EPJ Web of Conferences, 140, 03090. https://doi.org/10.1051/epjconf/201714003090
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