Electro-erosion fault identification of motor bearing based on ASMOTE-CFR

Huan Ke Cheng
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Abstract

In view of the problem that the electro-erosion fault signal is rare and weak during motor operation, and the database is seriously imbalanced, this paper proposes an ASMOTE-CFR training model based on adaptive minority oversampling technology. Four bearing vibration acceleration signals in different states were collected through experiments, and each signal obtained 32 sets of energy features using wavelet packet decomposition. Then ASMOTE technology is used to balance the energy features of electro-erosion fault signal. And construct a vector matrix combined by energy features and bearing fault state features. Finally, the collaborative filter model of matrix decomposition is used to train and identify. The results show that the recognition rate of the ASMOTE-CFR model proposed in this paper is 98.46 %, which improves by 7 % compared with the traditional CFR, which verifies the effectiveness of this method.
基于ASMOTE-CFR的电机轴承电蚀故障识别
针对电机运行过程中电蚀故障信号少而弱,数据库严重不平衡的问题,提出了一种基于自适应少数派过采样技术的ASMOTE-CFR训练模型。通过实验采集了4个不同状态下的轴承振动加速度信号,每个信号采用小波包分解得到32组能量特征。然后利用ASMOTE技术对电蚀故障信号的能量特征进行平衡。并构造能量特征与轴承故障状态特征相结合的向量矩阵。最后,利用矩阵分解的协同过滤模型进行训练和识别。结果表明,本文提出的ASMOTE-CFR模型的识别率为98.46%,比传统的CFR模型提高了7%,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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