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Stochastic Characteristics in Microgrinding Wheel Static Topography

机译:微碾轮静态地形的随机特征

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Superabrasive grind wheels are used for the machining of brittle materials such as tungsten carbide. Stochastic modeling of the wheel topography can allow for statistical bounding of the grind force characteristics allowing improved surface quality without sacrificing productivity. This study utilizes a machine vision method to measure the wheel topography of diamond microgrinding wheels. The results showed that there are large variances in wheel specifications from the manufacturer and that microgrinding wheels suffer from statistical scaling effects that increase wheel-to-wheel variability in the topography. Analysis of the static grit density values measured on the microgrinding wheels showed that the distributions provided by both analytic stochastic and numerical simulation models accurately predicted the static grit density within a significance level of 5%. Utilizing only manufacturer-supplied specifications caused the models to predict the static grit density with errors as large as 25.3% of the predicted value leading to a need for improved wheel tolerancing and in situ wheel measurement. The spacings between the grits on the wheel surface were shown to be independent of direction and can best be described by a loglogistic distribution.
机译:超级研磨轮用于加工脆性材料,例如碳化钨。车轮形貌的随机造型可以允许研磨力特性的统计限制,允许改善表面质量而不牺牲生产率。本研究利用机器视觉方法测量金刚石微碾压轮的轮形地形。结果表明,制造商的轮子规格中存在大的差异,并且微碾压轮患有统计缩放效果,从而增加了地形中的车轮到车轮变异性。对微晶轮上测量的静态砂砾密度值的分析表明,分析随机和数值模拟模型提供的分布精确地预测了5%的显着性水平的静态砂砾密度。仅利用制造商提供的规格导致模型预测静态砂砾密度,误差大小为25.3%的预测值,导致改进的车轮公差和原位轮测量。车轮表面上的粗砂之间的间距被显示为与方向无关,并且最好通过LogLoggictic分布描述。

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