PREDICTION OF REGRESSION BASED WEAR BEHAVIOUR MODELS OF ALUMINIUM ALLOY 356 – ZrSiO4 COMPOSITES

Authors

  • J.Althaf Hasan Khan Department of Mechanical Engineering, National Engineering College, Kovilpatti, Tamilnadu, India - 628503.
  • S.Akmal Jahan Department of Mechanical Engineering, National Engineering College, Kovilpatti, Tamilnadu, India - 628503.
  • A.Biju Kumar Department of Mechanical Engineering, National Engineering College, Kovilpatti, Tamilnadu, India - 628503.
  • V.Murali Department of Mechanical Engineering, National Engineering College, Kovilpatti, Tamilnadu, India - 628503.
  • A.Arul Marcel Moshi National Engineering College

DOI:

https://doi.org/10.37255/jme.v16i4pp124-126

Keywords:

Metal Matrix Composites, Stir casting process, Wear behavior analysis

Abstract

The term composite is a combination of two materials with different physical and chemical properties. When combined, they create a specialised material to do a certain job, for instance, to become stronger, lighter or resistant to electricity. They can also improve strength and stiffness. Metal matrix composites have much improved properties, including high tensile strength, toughness, hardness, low density and good wear resistance compared to alloys or any other metal. Aluminium alloys are becoming important today, especially in the automobile, space and electrical industries. Unfortunately, due to poor wear resistance, aluminium alloy can deteriorate quickly. So the present investigation aims at developing Aluminium 356 alloy (AA356) composites reinforced with 5 wt.% Zirconium Silicate (ZrSiO4) with better wear resistance. The composites have been fabricated using the ‘stir-casting’ method in which the particles were added to molten metal during the stirring process at a rotating speed of 700 rpm. A wear test has been performed on a pin on the disc apparatus. Three process parameters have been considered: normal load, sliding velocity, and sliding distance at three different levels. An experimental plan has been made using Taguchi’s L9 orthogonal array table. The output responses such as wear rate and coefficient of friction have been considered for the investigation. Regression models have been generated for each output response. Using the generated regression models, one can predict the value of the output parameters even without actually performing the experimentation within the range of input factor combinations.

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References

S.Granesan, S.Deepak Ganesh and A.Arul Marcel Moshi, “Characterization of Metal Matrix Composites reinforced with suitable reinforcement agents – A Comprehensive Review”, IOP Conference Series: Materials Science and Engineering, 988, 2020, pp. 012029.

K.Logesh, P.Hariharasakthisudhan, A.Arul Marcel Moshi, B.Surya Rajan and K.Sathickbasha, “Mechanical properties and microstructure of A356 alloy reinforced AlN/MWCNT/graphite/Al composites fabricated by stir casting”, Materials Research Express, 7, 2020, pp. 015004.

Shashi Prakash Dwivedi, Satpal Sharma and Raghvendra Kumar Mishra, “Microstructure and Mechanical Properties of A356/SiC Composites Fabricated by Electromagnetic Stir Casting”, Procedia Materials Science, 6, 2014, pp. 1524-1532.

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S.R. Sundara Bharathi, D. Ravindran, A. Arul Marcel Moshi, R. Rajeshkumar, R. Palanikumar, “Multi objective optimization of CNC turning process parameters with Acrylonitrile Butadiene Styrene material”, Materials Today: Proceedings, 27 (1), 2019, pp. 2214-7853.

P Hariharasakthisudhan, A. Arul Marcel Moshi, S.R. Sundara Bharathi, K. Logesh, “Regression and Grey relational analysis on friction and wear behavior of AA6061/Al2O3/Si3N4/graphite hybrid nano composites”, Materials Research Express, 6 (8), 2019, pp. 085017.

S.Venkatesan, M.Anthony Xavior, “Tensile behavior of aluminum alloy (AA7050) metal matrix composite reinforced with graphene fabricated by stir and squeeze cast processes”, Science and Technology of Materials, 30 (2), 2018, pp. 74-85.

S.R. Sundara Bharathi, D. Ravindran, A. Arul Marcel Moshi, “Multi-response optimization of CNC turning parameters of austenitic stainless steel 303 using Taguchi-based grey relational analysis”, Transactions of the Canadian Society for Mechanical Engineering, 44 (4), pp. 592-601.

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Published

2022-02-11

How to Cite

[1]
“PREDICTION OF REGRESSION BASED WEAR BEHAVIOUR MODELS OF ALUMINIUM ALLOY 356 – ZrSiO4 COMPOSITES”, JME, vol. 16, no. 4, pp. 124–126, Feb. 2022, doi: 10.37255/jme.v16i4pp124-126.

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