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Combining DBN and FCM for Fault Diagnosis of Roller Element Bearings without Using Data Labels

机译:结合使用DBN和FCM进行滚动轴承故障诊断,无需使用数据标签

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Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful information from the raw data without prior knowledge, DBNs are used to extract the useful feature from the roller bearings vibration signals. Unlike classification methods, the clustering method can classify the different fault types without data label. Therefore, a method based on deep belief networks (DBNs) in deep learning (DL) and fuzzy C-means (FCM) clustering algorithm for roller bearings fault diagnosis without a data label is presented in this paper. Firstly, the roller bearings vibration signals are extracted by using DBN, and then principal component analysis (PCA) is used to reduce the dimension of the vibration signal features. Secondly, the first two principal components (PCs) are selected as the input of fuzzy C-means (FCM) for roller bearings fault identification. Finally, the experimental results show that the fault diagnosis of the method presented is better than that of other combination models, such as variation mode decomposition- (VMD-) singular value decomposition- (SVD-) FCM, and ensemble empirical mode decomposition- (EEMD-) fuzzy entropy- (FE-) PCA-FCM.
机译:由于深度学习中的深度信念网络(DBN)具有强大的能力,可以在没有先验知识的情况下从原始数据中提取有用的信息,因此可以使用DBN从滚子轴承振动信号中提取有用的功能。与分类方法不同,聚类方法无需数据标签即可对不同的故障类型进行分类。因此,本文提出了一种基于深度学习中的深度信念网络(DBN)和模糊C均值(FCM)聚类算法的无数据标签滚动轴承故障诊断方法。首先,使用DBN提取滚动轴承的振动信号,然后使用主成分分析(PCA)来减小振动信号特征的维数。其次,选择前两个主要成分(PC)作为模糊C均值(FCM)的输入,用于滚动轴承故障识别。最后,实验结果表明,所提出方法的故障诊断要优于其他组合模型,如变化模式分解-(VMD-)奇异值分解-(SVD-)FCM和整体经验模型分解-( EEMD-)模糊熵(FE-)PCA-FCM。

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