单工序表面纹理的参数描述

P. Pawlus, R. Reizer, M. Wieczorowski, G. Królczyk
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引用次数: 9

摘要

仅使用一个参数描述面(3D)表面形貌并不能完全表征表面。参数间的线性相关分析有助于参数的选择。利用白光干涉仪对100个经过磨削、抛光、汽喷、铣削和一次珩磨5种加工处理后的表面织构进行了分析。此外,还选择了20个经过不同处理的单工序表面进行了研究。在相关和回归分析的基础上,确定了描述单个表面群和一般单工序表面的参数集。发现单工序表面可以用Sq、Sal、Str、Sdq、Sq/Sa和Sp/Sz等参数来表征。扩展表征还包含参数:Ssk、Sku和Spd。根据Sq/Sa和Sp/Sz、Sdq和Sal以及Str和Spd这对参数可以识别加工过程。Sq/Sa和Sp/Sz比Ssk和Sku更能表征单工序表面纹理的纵坐标分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric description of one-process surface texture
Description of areal (3D) surface topography using only one parameters does not completely characterize surface. The analysis of linear correlation between parameters is helpful in selection of parameters. In this work one hundred surface textures after five machining treatments (grinding, polishing, vapor blasting, milling and one-process honing) measured by white light interferometer were analyzed. Additionally, selected twenty one-process surfaces after various treatments were studied. On the basis of correlation and regression analyses, sets of parameters describing individual surface groups and generally one-process surfaces were determined. It was found that one-process surfaces can be characterized by parameters: Sq, Sal, Str, Sdq, Sq/Sa and Sp/Sz. The extended characterization contains also parameters: Ssk, Sku, and Spd. Machining process can be identified based on the following pairs of parameters: Sq/Sa and Sp/Sz, Sdq and Sal as well as Str and Spd. Sq/Sa and Sp/Sz ratios were found to better characterize ordinate distribution of one-process surface texture than Ssk and Sku.
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