首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Multi-fault diagnosis of rolling bearing using fuzzy entropy of empirical mode decomposition, principal component analysis, and SOM neural network
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Multi-fault diagnosis of rolling bearing using fuzzy entropy of empirical mode decomposition, principal component analysis, and SOM neural network

机译:经验模糊熵,主要成分分析和SOM神经网络模糊熵的多故障诊断滚动轴承

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摘要

The condition monitoring and multi-fault diagnosis of rolling bearing is a very important research content in the field of the rotating machinery health management. Most researches widely used empirical mode decomposition in tandem with principal component analysis which is applied for feature extraction. But this method may lead to imprecise classification. In this paper, we propose a new method of rolling bearing multi-fault diagnosis, by combining the fuzzy entropy of empirical mode decomposition, principal component analysis, and self-organizing map neural network. The empirical mode decomposition process allows the vibration signal to be decomposed into a series of intrinsic mode functions. For each intrinsic mode function, we obtained the fault feature information. The proposed approach combines the fuzzy function and sample entropy to obtain fuzzy entropy. By this combination, we can reflect the complexity and the irregularity in each intrinsic mode function component. The fuzzy entropy of empirical mode decomposition used to construct the vectors is defined as the input of the principal component analysis. This principal component analysis is used to reduce the dimension of the feature vectors. Finally, the reduced feature vectors are chosen as input of self-organizing map network for automatic fault diagnosis and fault classification. The obtained results show that the proposed approach makes it possible to correctly assess the degradation of rolling bearing and to obtain recognition of high-sensitivity defects for different types of bearing faults.
机译:滚动轴承的状态监测和多故障诊断是旋转机械健康管理领域的一个非常重要的研究含量。大多数研究广泛使用的经验模式分解与主要成分分析施用于特征提取。但这种方法可能导致不精确的分类。在本文中,我们提出了一种新的滚动轴承多故障诊断方法,通过组合经验模式分解,主成分分析和自组织地图神经网络的模糊熵。经验模式分解过程允许振动信号分解成一系列内部模式功能。对于每个内在模式功能,我们获得了故障特征信息。所提出的方法结合了模糊功能和样本熵来获得模糊熵。通过这种组合,我们可以反映每个内在模式功能组件中的复杂性和不规则性。用于构造矢量的经验模式分解的模糊熵被定义为主成分分析的输入。该主成分分析用于减少特征向量的尺寸。最后,选择了减少的特征向量作为自组织地图网络的输入,用于自动故障诊断和故障分类。所得结果表明,该方法可以正确地评估滚动轴承的劣化,并获得不同类型的轴承故障的高灵敏度缺陷的识别。

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