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Influence of Cutting Parameters on Turning Process Using Anova Analysis

Author Affiliations

  • 1R.V.R. and J.C. College of Engineering Guntur, INDIA

Res. J. Engineering Sci., Volume 2, Issue (9), Pages 1-6, September,26 (2013)


In a turning process surface roughness depend on machining parameters and tool geometry. In this work considering three machining parameters and two tool geometrical parameters 243 experiments were conducted for full factorial design. Using ANOVA analysis the influence of these parameters on surface roughness was studied.


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