Multi performance optimizationof shoulder milling process parameters of AA6063 T6 aluminium alloy by taguchi based GRA

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Abstract

In this paper, a grey relational analysis method based on Taguchi is proposed to improve the multi-performance characteristics of VMC shoulder milling process parameters in the processing of AA6063 T6. Taking into account four process parameters such as coolant, depth of cut, speed and feed, there are three level of each process parameter in addition to two levels of coolant. 18 experiments were used by L18 orthogonal array using the taguchi method. Multi-performance features like surface roughness and material removal rate are used. Grey Relational Analysis method is used to obtain the Grey Relational Grade, and the multiperformance characteristics of the process are pointed out. Then, the Taguchi response table method and ANOVA are used to analysis data. In order to ensure the validity of the test results, a confirmation test was conducted. The study also shows that this method can effectively improve the multi-function characteristics of shoulder milling process. In his work microstructure and mechanical properties of AA6063 T6before and after shoulder milling have been investigated.

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Singh, O. P., Kumar, G., & Kumar, M. (2019). Multi performance optimizationof shoulder milling process parameters of AA6063 T6 aluminium alloy by taguchi based GRA. International Journal of Innovative Technology and Exploring Engineering, 8(10 Special Issue), 420–425. https://doi.org/10.35940/ijitee.J1078.08810S19

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