Wheel Tread Reconstruction Based on Improved Stoilov Algorithm

3区 物理与天体物理 Q1 Materials Science
T. Tang, Jianping Peng, Jinlong Li, Y. Wan, Xingzi Liu, Ruyu Ma
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引用次数: 0

Abstract

With the development of rail transit in terms of speed and carrying capacity, train safety problems caused by wheel tread defects and wear have become more prominent. The wheel is an important part of the train, and the wear and defects of the wheel tread are directly related to the safety of the train; therefore, wheel tread testing is a key element of train testing. In phase measuring profilometry (PMP), the virtual sine grating generated by the computer is projected onto the measured wheel tread by a digital projector, and then a camera is used to obtain the modulated deformed grating on the surface of the wheel tread. Next, the wrapped phase is obtained by the improved Stoilov algorithm, and the unwrapped phase is obtained by the phase unwrapped algorithm. Finally, the three-dimensional (3D) profile of the wheel tread is reconstructed. This paper presents an improved Stoilov algorithm based on probability and statistics. Supposing that the probability of real data was the highest, we chose the cosine square matrix value of the phase shift for processing. After ruling out the singular points of large error, we obtained the closest value to the true phase shift using the method of probability and statistics. The experimental results show that this method can effectively restrain the singular phenomenon, and the 3D profile of wheel tread can be reconstructed successfully.
基于改进Stoilov算法的车轮踏面重建
随着轨道交通在速度和承载能力方面的发展,车轮踏面缺陷和磨损引起的列车安全问题日益突出。车轮是列车的重要组成部分,车轮踏面磨损和缺陷直接关系到列车的安全;因此,车轮踏面试验是列车试验的关键环节。在相位测量轮廓术(PMP)中,通过数字投影仪将计算机生成的虚拟正弦光栅投影到被测车轮踏面上,然后利用相机在车轮踏面表面获得调制变形光栅。然后,通过改进Stoilov算法获得包裹相位,通过相位解包裹算法获得解包裹相位。最后,对车轮踏面进行三维轮廓重建。本文提出了一种改进的基于概率和统计的Stoilov算法。假设真实数据的概率最大,我们选择相移的余弦方阵值进行处理。在排除误差较大的奇异点后,利用概率统计方法得到最接近真实相移的值。实验结果表明,该方法能有效地抑制奇异现象,并能成功地重建车轮踏面三维轮廓。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Progress in Optics
Progress in Optics 物理-光学
CiteScore
4.50
自引率
0.00%
发文量
8
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