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A Novel Bearing Multi-Fault Diagnosis Approach Based on Weighted Permutation Entropy and an Improved SVM Ensemble Classifier

机译:基于加权置换熵和改进的支持向量机集成分类器的轴承多故障诊断新方法

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摘要

Timely and accurate state detection and fault diagnosis of rolling element bearings are very critical to ensuring the reliability of rotating machinery. This paper proposes a novel method of rolling bearing fault diagnosis based on a combination of ensemble empirical mode decomposition (EEMD), weighted permutation entropy (WPE) and an improved support vector machine (SVM) ensemble classifier. A hybrid voting (HV) strategy that combines SVM-based classifiers and cloud similarity measurement (CSM) was employed to improve the classification accuracy. First, the WPE value of the bearing vibration signal was calculated to detect the fault. Secondly, if a bearing fault occurred, the vibration signal was decomposed into a set of intrinsic mode functions (IMFs) by EEMD. The WPE values of the first several IMFs were calculated to form the fault feature vectors. Then, the SVM ensemble classifier was composed of binary SVM and the HV strategy to identify the bearing multi-fault types. Finally, the proposed model was fully evaluated by experiments and comparative studies. The results demonstrate that the proposed method can effectively detect bearing faults and maintain a high accuracy rate of fault recognition when a small number of training samples are available.
机译:滚动轴承的及时,准确的状态检测和故障诊断对于确保旋转机械的可靠性至关重要。本文提出了一种基于集成经验模态分解(EEMD),加权置换熵(WPE)和改进的支持向量机(SVM)集成分类器的滚动轴承故障诊断新方法。结合了基于SVM的分类器和云相似度测量(CSM)的混合投票(HV)策略,以提高分类准确性。首先,计算轴承振动信号的WPE值以检测故障。其次,如果发生轴承故障,则EEMD将振动信号分解为一组固有模式函数(IMF)。计算前几个IMF的WPE值以形成故障特征向量。然后,SVM集成分类器由二进制SVM和HV策略组成,以识别轴承的多故障类型。最后,通过实验和比较研究对提出的模型进行了全面评估。结果表明,该方法能够在少量训练样本的情况下,有效地检测轴承故障,并保持较高的故障识别准确率。

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