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Artificial Neural Networks for the Prediction of Wear Properties of A16061-TiO2 Composites

机译:用于预测A16061-TiO2复合材料的人工神经网络

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The exceptional performance of composite materials in comparison with the monolithic materials have been extensively studied by researchers. Among the metal matrix composites Aluminium matrix based composites have displayed superior mechanical properties. The aluminium 6061 alloy has been used in aeronautical and automotive components, but their resistance against the wear is poor. To enhance the wear properties, Titanium dioxide (TiO2) particulates have been used as reinforcements. In the present investigation Back propagation (BP) technique has been adopted for Artificial Neural Network [ANN] modelling. The wear experimentations were carried out on a pin-on-disc wear monitoring apparatus. For conduction of wear tests ASTM G99 was adopted. Experimental design was carried out using Taguchi L27 orthogonal array. The sliding distance, weight percentage of the reinforcement material and applied load have a substantial influence on the height damage due to wear of the A16061 and A16061-TiO2 filled composites. The A16061 with 3 wt% TiO2 composite displayed an excellent wear resistance in comparison with other composites investigated. A non-linear relationship between density, applied load, weight percentage of reinforcement, sliding distance and height decrease due to wear has been established using an artificial neural network. A good agreement has been observed between experimental and ANN model predicted results.
机译:研究人员已经广泛研究了与整体材料相比的复合材料的特殊性能。金属基质复合材料中,铝基基复合材料具有优异的机械性能。铝制6061合金已用于航空和汽车部件,但它们对耐磨的抵抗差。为了增强磨损性能,二氧化钛(TiO 2)颗粒被用作增强剂。在本发明的研究中,对人工神经网络采用了对繁殖(BP)技术进行了建模。磨损实验是在磁盘上磨损监测装置上进行的。为了传导磨损测试,采用ASTM G99。使用Taguchi L27正交阵列进行实验设计。增强材料和施加负荷的滑动距离,重量百分比对由于A16061和A16061-TiO2填充复合材料的磨损引起的高度损坏具有显着影响。与所研究的其他复合材料相比,具有3wt%TiO 2复合材料的A16061显示出优异的耐磨性。使用人工神经网络建立了密度,施加的负荷,加固,增强率,加强,滑动距离和高度降低的非线性关系,已经使用人工神经网络建立。在实验和ANN模型的预测结果之间观察到良好的一致性。

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