基于特征波形稀疏匹配的滚动轴承故障模式识别

Fault pattern recognition of rolling bearings based on characteristic waveform sparse matching

  • 摘要: 提出了一种基于特征波形稀疏匹配的滚动轴承故障模式识别方法.该方法通过自行设计的搜索算法从信号中提取多段特征波形,并对其进行学习优化,以优化后的特征波形作为基原子模型生成原子库及模式匹配库.将待识别信号在模式匹配库上进行一阶匹配分析,实现轴承故障的模式识别.对正常轴承、滚动体故障、内圈故障和外圈故障信号进行实验,验证了方法的有效性和鲁棒性.

     

    Abstract: A method of fault pattern recognition for rolling bearings was proposed on the basis of sparse matching of a characteristic waveform (CW).With a well-designed search algorithm,multi-section CWs were extracted from a vibration signal.A representative CW was obtained by learning from the extracted CWs.Then,the representative CW was acted as an atom model to construct a dictionary and a pattern matching dictionary.Pattern recognition was conducted through one-order matching analysis in the pattern matching dictionary.Employing the signals of a normal bearing,ball fault,inner race fault and outer race fault for pattern recognition,the result indicates that the method is valid and robust.

     

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