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Please use this identifier to cite or link to this item: http://eprint.iitd.ac.in/handle/2074/1503

Title: A probabilistic approach to predict surface roughness in ceramic grinding
Authors: Agarwal, Sanjay
Rao, P Venkateswara
Keywords: Analytical model
Ceramic grinding
Surface roughness
Chip thickness
Issue Date: 2005
Citation: International Journal of Machine Tools and Manufacture, 45(6), 609-616
Abstract: The quality of the surface produced during ceramic grinding is important as it influences the performance of the finished part to great extent. Hence, the estimation of surface roughness can cater to the requirements of performance evaluation. But, the surface finish is governed by many factors and its experimental determination is laborious and time consuming. So the establishment of a model for the reliable prediction of surface roughness is still a key issue for ceramic grinding. In this study, a new analytical surface roughness model is developed on the basis of stochastic nature of the grinding process, governed mainly by the random geometry and the random distribution of cutting edges. This model has been validated by the experimental results of silicon carbide grinding. The theoretical analysis yielded values which agree reasonably well with the experimental results.
URI: http://eprint.iitd.ac.in/dspace/handle/2074/1503
Appears in Collections:Mechanical Engineering

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