期刊文献+

Condition Recognition of High-Speed Train Bogie Based on Multi-View Kernel FCM 被引量:1

Condition Recognition of High-Speed Train Bogie Based on Multi-View Kernel FCM
原文传递
导出
摘要 Monitoring the operating status of a High-Speed Train(HST) at any moment is necessary to ensure its security. Multi-channel vibration signals are collected by sensors installed on bogies and beneficial information are extracted to determine the running condition. Based on multi-view clustering and considering different views of complementary information, this study proposes a Multi-view Kernel Fuzzy C-Means(MvKFCM) model for condition recognition of the HST bogie. First, fast Fourier transform coefficients of HST vibration signals of all channels are extracted. Then, the fuzzy classification coefficient of every channel is calculated after clustering to select the appropriate channels. Finally, the selected channels are used to cluster by MvKFCM and the conditions of HST are determined. Experimental results show that the selection is effective to maintain rich feature information and remove redundancy. Furthermore, the condition recognition rate of MvKFCM is higher than that of single-view and four other multiple-view clustering algorithms. Monitoring the operating status of a High-Speed Train(HST) at any moment is necessary to ensure its security. Multi-channel vibration signals are collected by sensors installed on bogies and beneficial information are extracted to determine the running condition. Based on multi-view clustering and considering different views of complementary information, this study proposes a Multi-view Kernel Fuzzy C-Means(MvKFCM) model for condition recognition of the HST bogie. First, fast Fourier transform coefficients of HST vibration signals of all channels are extracted. Then, the fuzzy classification coefficient of every channel is calculated after clustering to select the appropriate channels. Finally, the selected channels are used to cluster by MvKFCM and the conditions of HST are determined. Experimental results show that the selection is effective to maintain rich feature information and remove redundancy. Furthermore, the condition recognition rate of MvKFCM is higher than that of single-view and four other multiple-view clustering algorithms.
出处 《Big Data Mining and Analytics》 2019年第1期1-11,共11页 大数据挖掘与分析(英文)
基金 supported in part by the National Natural Science Foundation of China (Nos. 61572407 and 61134002)
关键词 HIGH-SPEED Train(HST) CONDITION RECOGNITION MULTI-VIEW CLUSTERING fuzzy CLUSTERING High-Speed Train(HST) condition recognition multi-view clustering fuzzy clustering
  • 相关文献

参考文献2

二级参考文献28

  • 1陈特放,黄采伦,樊晓平.基于小波分析的机车走行部故障诊断方法[J].中国铁道科学,2005,26(4):89-92. 被引量:19
  • 2丁夏完,刘葆,刘金朝,王成国,Riemenscheider S D,胡晓依.基于自适应STFT的货车滚动轴承故障诊断[J].中国铁道科学,2005,26(6):24-27. 被引量:13
  • 3Huang N E, Shen Z, Long S R, et al. The empirical mode decomposition and the Hilbert spectrum for non- linear and non-stationary time series analysis[J]. Pro-ceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences, 1998, 454(1971) : 903--995.
  • 4Wu Z, Huang N E. A study of the characteristics of white noise using the empirical mode decomposition method[J]. Proceedings of the Royal Society of Lon- don. Series A= Mathematical, Physical and Engineer- ing Sciences, 2004, 460(2046) : 1 597--1 611.
  • 5Serra J. Image Analysis and Mathematical Morphology Vol. 1 [M]. New York: Academic Press, 1982.
  • 6Serra J. Image Analysis and Mathematical Morphology Vol. 2: Theoretical Advances[M]. New York= Aca- demic Press, 1988.
  • 7Maragos P. Pattern spectrum of images and morpho- logical shape-size complexity [A]. Acoustics, Speech, and Signal Processing, IEEE International Conference on ICASSP'87. IEEE[C]. Dallas, USA, 1987, 12: 241--244.
  • 8Maragos P. Pattern spectrum and multiscale shape representation [J]. Pattern Analysis and Machine In- telligence, IEEE Transactions on, 1989, 11 (7): 701--716.
  • 9Torre E, Picado-Muino D, Denker M, et al. Statisti- cal evaluation of synchronous spike patterns extracted by {requent item set mining [J]. Frontiers in Compu-tational Neuroscience, 2013, 7(4):4 306--4 318.
  • 10Bartovsky J, Doklddal P, Dokladalova E, et al. One- scan algorithm for arbitrarily oriented 1-D morphologi cal opening and slope pattern spectrum [A]. Image Processing (ICIP), 2012 19th IEEE International Con- terence on. IEEE[C]. Orlando, USA, 2012: 133-- 136.

共引文献27

同被引文献9

引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部