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Fault Diagnostics Based on Pattern Spectrum Entropy and Proximal Support Vector Machine

机译:基于模式谱熵和近距离支持向量机的故障诊断

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摘要

Based on pattern spectrum entropy and proximal support vector machine (PSVM),a motor rolling bearing fault diagnosis method is proposed in this paper.It is very difficult to filter the fault vibration signals from the strong noise background because the roller bearing fault diagnosis is a problem of multi-class classification of inner ring fault,outer ring fault and ball fault.Firstly,vibration signals are processed by the pattern spectrum.Secondly,the morphological pattern spectrum entropy,and pattern spectrum values are utilized to identify the fault features of input parameters of PSVM classifiers.The experiment results demonstrate that the pattern spectrum quantifies various aspects of the shape-size content of a signal,and PSVM costs a little time and has better efficiency than the standard SVM.
机译:本文基于模式谱熵和近邻支持向量机(PSVM),提出了一种电机滚动轴承的故障诊断方法。由于轴承故障诊断是一种基于噪声的背景,因此很难从强噪声背景中滤除故障振动信号。内圈故障,外圈故障和球故障的多类分类问题。首先,通过模式谱处理振动信号。其次,利用形态模式谱熵和模式谱值识别输入故障特征。实验结果表明,模式谱可以量化信号形状大小内容的各个方面,并且PSVM花费的时间少,并且效率比标准SVM好。

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