采用灰色关联分析和主成分分析相结合的方法研究了铝基金属基复合材料的干滑动磨损行为

M. P
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引用次数: 0

摘要

采用基于灰色关联分析的主成分分析方法对碳化钛和石墨复合金属基复合材料6061-T6铝的磨损性能进行了研究。实验采用田口L9正交阵列。采用针盘式装置对复合材料的干滑动磨损性能进行了评价。研究了载荷、滑动速度和滑动距离等磨损参数输入变量对不同输出响应(即磨损率、摩擦力和摩擦系数)的影响。使用灰色关联分析与主成分分析相结合,每个实验的三个输出响应归一化为加权灰色关联等级。方差分析表明,对质量特性影响最大的参数是滑动速度(45.51%),其次是载荷(26.75%)和滑动距离(2.94%),这些参数都对质量特性有影响。进一步的实验证实了最佳结果。最后,对磨损机理进行了扫描电镜分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An investigation on dry sliding wear behavior of aluminum based metal matrix composites using grey relational analysis coupled with principle component analysis
 The current study reports on wear properties of aluminum 6061-T6 reinforced with titanium carbide and graphite hybrid metal matrix composite using principal component analysis based grey relational analysis. Experiments were carried out using Taguchi's L9 orthogonal array. The dry sliding wear properties of composite samples are evaluated using a Pin-on-Disc apparatus. The effects of wear parameter input variables such as load, sliding speed, and sliding distance on different output responses, namely wear rate, friction force, and coefficient of friction, were investigated in this work. Using grey relational analysis in conjunction with principal component analysis, three output responses from each experiment were normalized into a weighted grey relational grade. According to the analysis of variance, the most influential parameter is sliding velocity (45.51%), followed by load (26.75%) and sliding distance (2.94%), all of which contribute to the quality characteristics. Additional experiments have confirmed optimal results. Finally, a scanning electron microscopic analysis was performed to investigate the wear mechanism.
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