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基于单分类的机械故障诊断研究及其应用 被引量:12

MECHANICAL FAULT DIAGNOSIS BASED ON ONE-CLASS CLASSIFICATION AND ITS APPLICATION
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摘要 为解决机械智能监测与诊断中缺少故障样本的问题,提出一种机械故障单值分类的新方法——支持向量数据描述法。该方法只需要一类目标样本作为学习样本,而不需要除学习样本以外的其他非目标样本,即可以建立单值分类器,从而将非目标样本从目标样本中区分开。提取机械设备正常运行时振动信号的特征值组成学习样本集,建立单分类模型,应用该模型可以对未来的设备运行状态和故障进行识别诊断。该方法应用于某水泥厂煤灰鼓风机故障诊断的工程实践中,取得满意的结果。 In order to solve the problem of insufficient fault samples in intelligent monitoring and diagnosis for machinery, a new method of one-class classification of mechanical fault-support vector data description was proposed in which the one-class class/tier can be set up by using only one kind of target sample without knowing other outlier samples. In this way, the outlier samples can be distinguished from the target samples. The learning sample set can be bulh up by extracting the vibration signal features of the machinery with the nounal state so that the classifier model can also be established. This model can be used to identify the running states of the equipment and diagnose the faults of it in the future. The method has been applied to the fault diagnosis of the fan in the cement plant, and the satisfactory results are obtained.
出处 《机械强度》 EI CAS CSCD 北大核心 2008年第5期697-701,共5页 Journal of Mechanical Strength
基金 国家自然科学基金项目(50675209) 河南省自然科学基金项目(0611022400) 河南省杰出人才创新基金项目(0621000500)~~
关键词 支持向量数据描述 单值分类 故障诊断 Support vector data description One-class classification Fault diagnosis
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参考文献6

  • 1李凌均,张周锁,何正嘉.基于支持向量数据描述的机械故障诊断研究[J].西安交通大学学报,2003,37(9):910-913. 被引量:56
  • 2Tax D M J, Duin R P W . Support vector domain description[J]. Pattern Recognition Letters, 1999, 20(11-13) : 1191-1199.
  • 3Xin Dong, Wu Zhaohui, Zhang Wanfeng. Support Vector Domain Description for Speaker Recognition [ C ]//Proceedings of the Neural Networks for Signal Processing XI, 2001. Falmouth: Signal Processing Society, 2001 : 481-488.
  • 4Tax D M J, Duin R P W. Outliers and data descriptions[ C]//Proceedings of the ASCI2001. Delft: The Advanced School for Computing and Imaging (ASCI), 2001:234-241
  • 5Vapnik V N. The nature of statistical learning theory[M]. New York: Springer-Verlag, 1995: 25-125.
  • 6李凌均,韩捷,郝伟,董辛,何正嘉.支持向量数据描述用于机械设备状态评估研究[J].机械科学与技术,2005,24(12):1426-1429. 被引量:22

二级参考文献13

  • 1袁曾任.人工神经元网络及其应用[M].北京:清华大学出版社,2000..
  • 2Tax D M J, Duin R P W. Support vector domain description [J]. Pattern Recognition Letters, 1999, 20(11-13): 1 191~1 199.
  • 3Xin Dong, Wu Zhaohui, Zhang Wanfeng. Support vector domain description for speaker recognition [A].2001 IEEE Signal Processing Society Workshop.Falmouth, 2001.
  • 4Tax D M J, Duin R P W. Outliers and data descriptions [A]. Seventh Annual Conference of the Advanced School for Computing and Imaging. Delft,2001.
  • 5Vapnik V N. The nature of statistical learning theory[M]. New York: Springer-Verlag, 1995.
  • 6Tax D M J , Duin R P W. Support vector domain description[J]. Pattern Recognition Letters, 1999,20(11-13): 1191-1199.
  • 7Vapnik V N. The Nature of Statistical Learning Theory[M].New York:Springer-Verlag, 1995.
  • 8Xin D, Wu Z H, Zhang W F. Support vector domain description for speaker recognition [A]. Proceedings of the 2001 IEEE Signal Processing Society Workshop [C], Massachusetts,2001:481-488.
  • 9Chen Y Q, Zhou X, Huang T S. One-class SVM for learning in image retrieval[A]. In: Proceedings of International Conference on Image Processing 2001 [C], Thessaaloniki, Greece,2001:440-447.
  • 10Tax D M J , Duin R P W. Outliers and data descriptions[A].In: Proceedings of the Seventh Annual Conference of the Advarced School for Computing and Imaging [C], Delft,2001:234-241.

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