Tribological Performance of Random Sinter Pores vs. Deterministic Laser Surface Textures: An Experimental and Machine Learning Approach

G. Boidi, Philipp G. Grützmacher, M. Varga, Márcio Rodrigues da Silva, C. Gachot, D. Dini, Francisco J. Profito, Izabel F. Machado
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引用次数: 3

Abstract

This work critically scrutinizes and compares the tribological performance of randomly distributed surface pores in sintered materials and precisely tailored laser textures produced by different laser surface texturing techniques. The pore distributions and dimensions were modified by changing the sintering parameters, while the topological features of the laser textures were varied by changing the laser sources and structuring parameters. Ball-on-disc tribological experiments were carried out under lubricated combined sliding-rolling conditions. Film thickness was measured in-situ through a specific interferometry technique developed for the study of rough surfaces. Furthermore, a machine learning approach based on the radial basis function method was proposed to predict the frictional behavior of contact interfaces with surface irregularities. The main results show that both sintered and laser textured materials can reduce friction compared to the untextured material under certain operating conditions. Moreover, the machine learning model was shown to predict results with satisfactory accuracy. It was also found that the performance of sintered materials could lead to similar improvements as achieved by textured surfaces, even if surface pores are randomly distributed and not precisely controlled.
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随机烧结孔与确定性激光表面纹理的摩擦学性能:一种实验和机器学习方法
这项工作严格审查和比较了烧结材料中随机分布的表面孔隙和由不同激光表面纹理技术产生的精确定制的激光纹理的摩擦学性能。改变烧结参数可以改变孔隙分布和尺寸,而改变激光源和结构参数可以改变激光织构的拓扑特征。在滑动-滚动组合润滑条件下进行了球盘摩擦磨损试验。薄膜厚度是通过一种专门用于研究粗糙表面的干涉测量技术在现场测量的。在此基础上,提出了一种基于径向基函数的机器学习方法来预测具有不规则表面的接触界面的摩擦行为。研究结果表明,在一定的操作条件下,烧结材料和激光织构材料均能比未织构材料减少摩擦。此外,机器学习模型以令人满意的精度预测结果。研究还发现,即使表面孔隙随机分布且无法精确控制,烧结材料的性能也可以得到与纹理表面类似的改善。
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