Abstract

According to the one-dimensional characteristics of the vibration signal, this paper proposes an elevator operation fault monitoring method based on one-dimensional convolutional neural network (1-DCNN). It can solve the problems of traditional elevator fault monitoring methods that require complex feature extraction processes and a large amount of diagnostic experience. Because the elevator fault monitoring field has less fault information, it is different from the large sample situation in the field of face recognition. Aiming at the problem of small samples, this paper first preprocesses elevator vibration signals through singular value decomposition (SVD) and wavelet transform, then uses wavelet transform to extract wavelet energy features of the original vibration signals, and then use PCA to reduce the feature data to the dimension with a cumulative contribution rate of greater than 85%. When reducing the dimensionality, the original characteristics of the features are preserved as much as possible. When designing the 1-CNN, the K-fold cross-validation method is added to obtain as many abnormalities from the sample set as possible. The information is finally trained using the 1-CNN and classified by softmax regression. In order to verify the performance of the algorithm, the original vibration signal was used as the input of the 1-CNN, and the wavelet energy feature without PCA dimensionality reduction was used as the input of the 1-CNN. The experimental results showed that the 1-DCNN model with PCA dimension-reduced feature data as input can effectively extract and identify the features of normal and abnormal states and has high fault identification accuracy, and good results have been obtained.

Highlights

  • With the rise of machine learning [8] and deep learning [9], more and more fault monitoring researches are combined with them. e fault diagnosis technology based on deep learning can be divided into four categories: fault diagnosis method based on trestle self-coding (SAE), fault diagnosis method based on deep confidence network (DBN), fault diagnosis method based on convolutional neural network (CNN), and fault diagnosis method based on recurrent neural network (RNN) [10]

  • Chen et al [12] proposed a fault diagnosis method based on improved depth confidence network, which optimized the network feature extraction ability, to improve the ability of network learning and classification to reduce the dependence of network training on data. e performance of the improved deep confidence network model is tested by using the open network dataset, and the improved network model is applied to the fault data set of small samples

  • Collect the vibration signal data of the hydraulic pump. e time–frequency diagram has short-time Fourier transform, wavelet transform, and Wigner-Will distribution. en, the generated time–frequency graph is divided into training set and test set. e training set is used to train the convolutional neural network, and the test set is used to verify the recognition results, and the recognition rate reaches 99%

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Summary

Pretreatment of Elevator Vibration Signal

SVD is a signal processing method with good numerical robustness and adaptability, which can effectively identify noise component and fault feature component by singular value decomposition. En, the singular value matrix of sudden change signal is reconstructed by SVD inverse operation method, and the mutation signal x′(t) is obtained. E enhancement and inhibition of each frequency component of the output signal changed obviously At this time, compared with the output of normal elevator traction machine, the amplitude amplitude. Erefore, compared with the traditional spectrum analysis, wavelet packet is suitable for energy detection according to frequency band. E collected elevator car vibration signal W(t) is decomposed by wavelet packet in time domain and frequency domain, and the characteristic frequency bands in each range are extracted. When the elevator car system fails, the signal energy in each frequency band will change greatly:. E energy array will form the dataset of the later 1-CNN

PCA Dimensionality Reduction Processing
Design of Elevator Operation State Monitoring Model Based on 1-CNN
E10 Figure 4
Findings
Experiment
Full Text
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