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Growing Science » International Journal of Data and Network Science » Optimization of turning parameters of Aluminum 6351 T6 using Taguchi decision making technique

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International Journal of Data and Network Science

ISSN 2561-8156 (Online) - ISSN 2561-8148 (Print)
Quarterly Publication
Volume 1 Issue 2 pp. 27-38 , 2017

Optimization of turning parameters of Aluminum 6351 T6 using Taguchi decision making technique Pages 27-38 Right click to download the paper Download PDF

Authors: Shofique Ahmed, Rajesh Arora

DOI: 10.5267/j.ijdns.2017.1.008

Keywords: Turning process, Surface Roughness, Material Removal Rate, Taguchi’s Method, Signal to Noise ratio, ANOVA

Abstract: Turning is the utmost elementary process among several CNC machine tool operations which is a versatile, efficient and widely used in industries including mechanical, aerospace and automotive sectors. Most frequently the manufacturing industries face the problem of cutting down the production cost without any oblation in the quality of products. Selection of process parameter is essential for assuring a quality product. Convenient choice of the cutting conditions, parameters and tools for the maximum Material removal rate (MRR) and surface finish needs a sophisticated approach adopting mathematical and statistical models as well as experimental method. Taguchi’s method is a very compelling tool to optimize the process variables. The intention of the present study is to determine surface roughness (Ra) and MRR which are key responses to justify the quality of turning operation. Four process parameters have been selected viz. Nose radius (NR), depth of cut (DOC), feed rate (FR) and spindle speed or cutting speed (CS) that influences these responses. During machining operations, the influence of the process parameters and their interac-tion have been analyzed using a statistical tool ANOVA. Aluminum alloy is widely acceptable by industries owing to its good strength to weight ratio, high resistance to corrosion, malleability and excellent resistance during elevated temperatures.

How to cite this paper
Ahmed, S & Arora, R. (2017). Optimization of turning parameters of Aluminum 6351 T6 using Taguchi decision making technique.International Journal of Data and Network Science, 1(2), 27-38.

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Journal: International Journal of Data and Network Science | Year: 2017 | Volume: 1 | Issue: 2 | Views: 2151 | Reviews: 0

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