Ball screw fault diagnosis based on continuous wavelet transform and two-dimensional convolution neural network

Zhijie Xie, Di Yu, C. Zhan, Qiancheng Zhao, Junxiang Wang, Jiuqing Liu, Jiaxiu Liu
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引用次数: 4

Abstract

Due to extreme operating conditions such as high-speed and heavy loads, ball screws are prone to damages, that affect the accuracy and operational safety of the mechanical equipment. As strong background noise and weak fault characteristics, it is difficult to capture the inherent fault state only depending on the time-domain or frequency-domain information from the vibration signal. In this paper, a fault diagnosis method for the ball screw based on continuous wavelet transform (CWT) and two-dimensional convolutional neural network (2DCNN) is proposed. The noise-reducing vibration signal is obtained via CWT. The time-frequency graph of the noise reduction signal can more comprehensively reflect the fault information of the ball screw. The time-frequency graph is used as the input to train and test the 2DCNN. Finally, diagnosis results of different types of faults reveal that the proposed CWT-2DCNN fault diagnosis method can achieve an average recognition rate of 99.67%. Compared with one-dimensional convolutional neural network (1DCNN) and traditional BP neural network, the proposed method has fast network convergence and high recognition accuracy. Time-frequency graphs of the noise-reduced signal used as fault features for classification can effectively avoid the problem of uncertainty due to the manual extraction of features. The proposed method has high application potential in the field of ball screw pair fault diagnosis.
基于连续小波变换和二维卷积神经网络的滚珠丝杠故障诊断
在高速、重载等极端工况下,滚珠丝杠容易发生损坏,影响机械设备的精度和运行安全。由于背景噪声强,故障特征弱,仅依靠振动信号的时域或频域信息很难捕捉到固有故障状态。提出了一种基于连续小波变换(CWT)和二维卷积神经网络(2DCNN)的滚珠丝杠故障诊断方法。通过CWT获取降噪振动信号。降噪信号的时频图能更全面地反映滚珠丝杠的故障信息。将时频图作为输入,对2DCNN进行训练和测试。最后,对不同类型故障的诊断结果表明,所提出的CWT-2DCNN故障诊断方法平均识别率可达99.67%。与一维卷积神经网络(1DCNN)和传统BP神经网络相比,该方法具有较快的网络收敛速度和较高的识别精度。将降噪信号的时频图作为故障特征进行分类,可以有效避免人工提取特征带来的不确定性问题。该方法在滚珠丝杠副故障诊断领域具有很大的应用潜力。
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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