Xiao Qiyang, Li Sen, Zhou Lin, Shi Wentao
School of Artificial Intelligence, Henan University, Zhengzhou 450046, China.
School of Marine Science and Technology, Northwestern Polytechnical University, Xi'an 710072, China.
Entropy (Basel). 2022 Jun 30;24(7):908. doi: 10.3390/e24070908.
This paper proposes an intelligent diagnosis method for rotating machinery faults based on improved variational mode decomposition (IVMD) and CNN to process the rotating machinery non-stationary signal. Firstly, to solve the problem of time-domain feature extraction for fault diagnosis, this paper proposes an improved variational mode decomposition method with automatic optimization of the number of modes. This method overcomes the problems of the traditional VMD method, in that each parameter is set by experience and is greatly influenced by subjective experience. Secondly, the decomposed signal components are analyzed by correlation, and then high correlated components with the original signal are selected to reconstruct the original signal. The continuous wavelet transform (CWT) is employed to extract the two-dimensional time-frequency domain feature map of the fault signal. Finally, the deep learning method is used to construct a convolutional neural network. After feature extraction, the two-dimensional time-frequency image is applied to the neural network to identify fault features. Experiments verify that the proposed method can adapt to rotating machinery faults in complex environments and has a high recognition rate.
本文提出了一种基于改进变分模态分解(IVMD)和卷积神经网络(CNN)的旋转机械故障智能诊断方法,用于处理旋转机械的非平稳信号。首先,为了解决故障诊断中的时域特征提取问题,本文提出了一种具有自动优化模态数的改进变分模态分解方法。该方法克服了传统VMD方法中每个参数都由经验设置且受主观经验影响较大的问题。其次,通过相关性分析分解后的信号分量,然后选择与原始信号高度相关的分量来重构原始信号。采用连续小波变换(CWT)提取故障信号的二维时频域特征图。最后,利用深度学习方法构建卷积神经网络。经过特征提取后,将二维时频图像应用于神经网络以识别故障特征。实验验证了该方法能够适应复杂环境下的旋转机械故障,具有较高的识别率。