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Study on the sliding wear behaviour of hybrid aluminium matrix composites using Taguchi design and neural network

机译:基于Taguchi设计和神经网络的铝基复合材料的滑动磨损性能研究。

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This paper investigates the sliding wear behaviour of three different hybrid composites. Each hybrid composite consisted of two fillers. In the present study, combination of Cenosphere along with SiC and Al2O3 has been undertaken. Other factors such as applied normal load and sliding speed are also considered. Taguchi design of experimental technique is employed for the investigation of the effects of factors and their interactions on wear rate and coefficient of friction. It is observed that combination of SiC and Cenosphere hybrid composite showed better wear resistance than other hybrid composites. Regression and artificial neural network are used to develop a model to predict the wear rate and coefficient of friction. It is also observed that artificial neural network is more efficient in predicting the wear rate than regression.
机译:本文研究了三种不同杂化复合材料的滑动磨损行为。每个混合复合材料由两种填料组成。在本研究中,已经进行了Cenosphere与SiC和Al2O3的结合。还应考虑其他因素,例如施加的法向载荷和滑动速度。田口设计的实验技术被用来研究各种因素及其相互作用对磨损率和摩擦系数的影响。观察到,SiC和Cenosphere杂化复合材料的组合显示出比其他杂化复合材料更好的耐磨性。使用回归和人工神经网络来开发模型,以预测磨损率和摩擦系数。还观察到,人工神经网络在预测磨损率方面比回归更为有效。

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