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Rolling bearing fault diagnosis method based on dispersion entropy and SVM

机译:基于弥散熵和支持向量机的滚动轴承故障诊断方法

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According to the different characteristics of different fault vibration signals of rolling bearing, a method of bearing fault diagnosis based on dispersion entropy (DE) and support vector machine (SVM) is proposed. The intrinsic mode function (IMF) component of the bearing vibration signal is obtained by improved complete ensemble empirical mode decomposition with adaptive noise (ICEEMDAN) decomposition, and the dispersion entropy of the first few IMF components containing the main fault information is calculated. The eigenvectors are constructed by calculating the DE values of the first few IMF components which contain the main fault information and trained as the input of the SVM, the classification of bearing faults is realized. Compared with permutation entropy (PE), approximate entropy (AE) and sample entropy (SE), DE has a higher accuracy.
机译:针对滚动轴承不同故障振动信号的特点,提出了一种基于离散熵(DE)和支持向量机(SVM)的轴承故障诊断方法。轴承振动信号的本征模函数(IMF)分量是通过采用自适应噪声(ICEEMDAN)分解的改进的完整整体经验模态分解获得的,并计算了包含主要故障信息的前几个IMF分量的色散熵。通过计算包含主要故障信息并经过训练作为SVM输入的前几个IMF分量的DE值来构造特征向量,从而实现轴承故障的分类。与置换熵(PE),近似熵(AE)和样本熵(SE)相比,DE的准确性更高。

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