基于阈值滤波算法的中低速磁浮轨道不平顺度检测

Junyuan Tang, Jun Wu, Shengjun Huang
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引用次数: 1

摘要

磁悬浮列车是一种新型的城市交通工具。轨道作为磁浮运输系统的组成部分,直接影响列车运行的安全。提出了一种基于三阈值滤波的磁浮轨道检测算法,利用该算法对异常点进行滤波,从而判断轨道垂直方向的疑似不正常。该方案根据汽车数据记录仪采样率低、数据可重复性高、数据量大的特点,在悬架控制器上设置间隙差、电流变化率和加速度差的阈值设置,提取轨道不规则信息。为了提高算法的可靠性,对来自两列列车5个独立转向架的20组数据进行聚类分析,得到垂直不规则可疑区域。最后对长沙运营铁路磁悬浮列车的数据进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On middle and low speed maglev track irregularity detection based on threshold filtering algorithm
Maglev train is a new urban transportation tool. Track is considered as a component of maglev transportation system and it would directly affect the safety of train operation. An algorithm based on triple threshold filtering is put forward to conduct detection of maglev track, which can be used to filter abnormal points to judge the vertical suspected irregularity of track. In the scheme, the threshold settings for gap difference, current change rate and acceleration differences on suspended controller are set according to characteristics of low sampling rate, high data repeatability and large data volume of automobile data recorder, it can extract information of track irregularity. In order to improve the reliability of the algorithm, 20 sets of data from 5 independent bogies of two trains are clustered for analysis, and get the suspected area of vertical irregularity. The data of maglev train of Changsha operating railway was tested finally.
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