Licence Simul Cnc 2014

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  1. Licence Simul Cnc 2014 Maroc
Licence Simul Cnc 2014

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1757-899X/149/1/012039

Abstract

The main aim of the present work is to analyse the significance of turning parameters on surface roughness in computer numerically controlled (CNC) turning operation while machining of aluminium alloy material. Spindle speed, feed rate and depth of cut have been considered as machining parameters. Experimental runs have been conducted as per Box-Behnken design method. After experimentation, surface roughness is measured by using stylus profile meter. Factor effects have been studied through analysis of variance. Mathematical modelling has been done by response surface methodology, to made relationships between the input parameters and output response. Finally, process optimization has been made by teaching learning based optimization (TLBO) algorithm. Predicted turning condition has been validated through confirmatory experiment.

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Licence simul cnc 2014 maroc
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Licence Simul Cnc 2014 Maroc

Licence simul cnc 2014 maroc

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This entry was posted on 14.08.2019.