Modern Mechanical Engineering

Volume 8, Issue 3 (August 2018)

ISSN Print: 2164-0165   ISSN Online: 2164-0181

Google-based Impact Factor: 1.21  Citations  

Experimentation on Tool Wear and Surface Roughness in AISI D2 Steel Turning with WC Insert

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DOI: 10.4236/mme.2018.83014    1,141 Downloads   3,144 Views  Citations

ABSTRACT

The Taguchi method, based on an orthogonal arrangement (L9, 33), the vari-ance analysis, the signal-to-noise ratios and the response surface methodol-ogy have been used to optimize maximum flank wear (VBmax) and surface roughness (Ra) of the cutting tool when turning a hardened steel AISI D2 (65 HRC) with PVD—TiAlN coated WC insert upon dry environment. By em-ploying regression models; cutting speed, cutting depth and feed rate, which optimize maximum flank wear and surface roughness were validated. Results of relation signal-to-noise ratios, showed that with cutting speed of 200 m/min, cutting depth of 0.2 mm and feed rate of 0.20 mm/rev, Ra is opti-mized. With cutting speed of 150 m/min, cutting depth of 0.4 mm and feed rate of 0.3 mm/rev, VBmax is optimized. Through the variance analysis it was concluded that the depth of cut was the main parameter that affected on the surface roughness; whereas, the feed rate was the most influential parameter on the flank wear. Confirmation test results showed that the Taguchi method was very successful in the optimization of machining parameters for mini-mum surface roughness and flank wear in the turning of the D2 steel.

Share and Cite:

López-Luiz, N. , Alemán, O. , Hernández, F. , Dávila, M. and Baltazar-Hernández, V. (2018) Experimentation on Tool Wear and Surface Roughness in AISI D2 Steel Turning with WC Insert. Modern Mechanical Engineering, 8, 204-220. doi: 10.4236/mme.2018.83014.

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