多尺度表面形貌的统计代表性估计:以铝喷砂毛坯为例

IF 2 3区 材料科学 Q2 ENGINEERING, MECHANICAL Surface Topography: Metrology and Properties Pub Date : 2023-05-11 DOI:10.1088/2051-672X/acd469
C. Turbil, J. Cabrero, I. Simonsen, D. Vandembroucq, I. Gozhyk
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引用次数: 1

摘要

粗糙表面的形貌决定了它的许多物理性质,例如摩擦学、接触力学、光学性质等。如今,要想深入理解这种物理现象,就需要对适当长度尺度的地形有一定的了解。除了对地表地形进行多尺度测量外,它还需要使用适当的统计估计器来分析这些地形图。此外,当处理可见光光谱范围内的光散射时,定义局部地形性质估计量的尺度是非常重要的。本文对具有不同视觉外观的喷砂铝试样的表面形貌进行了多尺度和统计研究。研究了各种表面形貌的统计估计,包括与高度分布、横向相关和局部拓扑有关的估计。这些估计值的组合揭示了从初始冷轧铝表面继承的微尺度粗糙度和由爆破过程完全控制的大尺度粗糙度之间的尺度分离。特别强调了长度尺度在估算局部坡度中的关键重要性。目前的分析建立了表面形貌的统计特性和用于制造样品的爆破过程之间的定量联系。
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Statistically representative estimators of multi-scale surface topography: example of aluminum blasted rough samples
The topography of a rough surface determines many of its physical properties, for instance, tribology, contact mechanics, optical properties etc. Nowadays, a deep understanding of such physical phenomena requires the knowledge of the topography at appropriate length scales. Apart from performing multi-scale measurements of the surface topography, it also requires the use of proper statistical estimators for the analysis of such topography maps. Moreover, when dealing with light scattering in the visible spectral range, the scale at which the estimators of local topography properties are defined is extremely important. Here we present a multi-scale and statistical study of the surface topography of blasted aluminum samples which all have rather different visual appearance. Various statistical estimators of surface topography are examined, including estimators related to the height distribution, the lateral correlation and local topology. The combination of these various estimators unveils a scale separation between a micro-scale roughness inherited from the initial cold-rolled aluminum surface and a large scale roughness fully controlled by the blasting process. A special emphasis is given to the crucial importance of length scales in the estimation of local slopes. The present analysis establishes a quantitative link between the statistical properties of the surface topography and the blasting process used to fabricate the samples.
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来源期刊
Surface Topography: Metrology and Properties
Surface Topography: Metrology and Properties Materials Science-Materials Chemistry
CiteScore
4.10
自引率
22.20%
发文量
183
期刊介绍: An international forum for academics, industrialists and engineers to publish the latest research in surface topography measurement and characterisation, instrumentation development and the properties of surfaces.
期刊最新文献
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