基于鲁棒高斯回归滤波的随动地面曲轴轮廓误差分析

Fang Xiaoyan, Shen Xiaowei, Sun Yize, Xu Yang
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引用次数: 1

摘要

为了控制齿形误差,许多精密磨床制造商采用齿形误差预补偿方法,但是当原始齿形误差测量数据中存在异常值时,齿形误差的补偿精度将受到很大影响,甚至会导致工件报废。为了克服这一问题,本文研究了一种鲁棒高斯回归滤波器,同时采用了高斯滤波器和Rk滤波器。针对同一组轮廓误差数据,采用了三种滤波方法。分析结果表明,鲁棒高斯回归滤波器具有较强的抗离群值能力。这种过滤器的应用对提高曲轴跟随磨床的可靠性和性能具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Profile Error Analysis of Following Ground Crankshaft Using Robust Gaussian Regression Filter
In order to control profile error, many precision grinder manufacturers use profile error pre-compensation method, however, when there are outliers in the original profile error measured data, the compensation accuracy of profile error will be greatly influenced and even the work piece will be scrapped. In this paper, in order to overcome this problem, a robust Gaussian regression filter is researched, at the same time Gaussian filter and Rk filter are used. Three filtration methods are applied based on the same set of profile error data with the same outlier. Comparing the analyzed results, it is obvious that the robust Gaussian regression filter has the strongest anti-outlier capability. The application of this kind of filter is of great significance to improve the crankshaft following grinding machine reliability and performance.
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