Experimental optimisation of the tribological behaviour of Al/SiC/Gr hybrid composites based on Taguchi’s method and artificial neural network

被引:0
作者
Blaža Stojanović
Aleksandar Vencl
Ilija Bobić
Slavica Miladinović
Jasmina Skerlić
机构
[1] University of Kragujevac,Faculty of Engineering
[2] University of Belgrade,Faculty of Mechanical Engineering
[3] University of Belgrade,Institute of Nuclear Sciences “Vinca”
来源
Journal of the Brazilian Society of Mechanical Sciences and Engineering | 2018年 / 40卷
关键词
A356; Hybrid composites; Compocasting; Lubricated sliding; Friction; Wear; Taguchi method; Artificial neural network; Analysis of variance;
D O I
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中图分类号
学科分类号
摘要
This paper presents the investigation of tribological behaviour of aluminium hybrid composites with Al–Si alloy A356 matrix, reinforced with 10 wt% silicon carbide and 0, 1 and 3 wt% graphite (Gr) with the application of Taguchi’s method. Tribological investigations were realized on block-on-disc tribometer under lubricated sliding conditions, at three sliding speeds (0.25, 0.5 and 1 m/s), three normal loads (40, 80 and 120 N) and at sliding distance of 2400 m. Wear rate and coefficient of friction were measured within the research. Analysis of the results was conducted using ANOVA technique, and it showed that the smallest values of wear and friction are observed for hybrid composite containing 3 wt% Gr. The prediction of wear rate and coefficient of friction was performed with the use of artificial neural network (ANN). After training of the ANN, the regression coefficient was obtained and it was equal to 0.98905 for the network with architecture 3-20-30-2.
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[1]  
Bodunrin MO(2015)Aluminium matrix hybrid composites: a review of reinforcement philosophies; mechanical, corrosion and tribological characteristics J Mater Res Technol 4 434-445
[2]  
Alaneme KK(2013)Tribological characteristics of aluminium hybrid composites reinforced with silicon carbide and graphite. A review J Balkan Tribol Assoc 19 83-96
[3]  
Chown LH(2017)Optimization of hybrid aluminum composites wear using Taguchi method and artificial neural network Ind Lubr Tribol 69 1005-1015
[4]  
Stojanovic B(2016)Optimization and prediction of aluminium composite wear using Taguchi design and artificial neural network Tribol J BULTRIB 6 38-45
[5]  
Babic M(2010)Effect of addition of graphite particulates on the wear behaviour in aluminium-silicon carbide-graphite composites Mater Des 31 1804-1812
[6]  
Mitrovic S(2010)Effect of silicon carbide particulates on wear resistance of graphitic aluminium matrix composites Mater Des 31 4470-4477
[7]  
Vencl A(2012)Friction characteristics of aluminium silicon carbide graphite hybrid composites Mater Des 34 576-583
[8]  
Miloradovic N(2013)Wear behaviour of aluminium/alumina/graphite hybrid metal matrix composites using Taguchi’s techniques Ind Lubr Tribol 65 166-174
[9]  
Pantic M(2016)Prediction of tribological behavior of TiN coated hot work steel at high temperatures using artificial neural network J Balkan Tribol Assoc 22 1808-1820
[10]  
Stojanovic B(2016)Artificial neural network model for estimation of wear and temperature in pin-disc contact Univers J Mech Eng 4 39-49