Abstract:To solve the issue that most traditional models of rolling bearing fault diagnosis can not fully exploit the spatial and temporal characteristics of the signals and require lots of expert knowledge, a novel fault diagnosis method based on one-dimensional convolutional neural networks(1DCNN) and gated recurrent neural networks (GRU) was proposed. Firstly, the convolution layers with different convolution kernels were used to maximize the extraction of spatial features in the signal. Secondly, the IReLU was proposed to enhance the feature extraction ability of the network. Then, the stacked GRU was introduced to further extract the temporal features in the output data of the 1DCNN module and complete the fusion of the spatial and temporal features. Finally, the fused features were recognized. The experimental results showed that the fault recognition accuracy of the proposed method is up to 99.96%, and the proposed method has a high identification accuracy and strong generalization performance for datasets under different loads.
Tang L, Fan Y F, Xu S F, et al. Fault Diagnosis of Rolling Bearing Based on Bayesian Optimization and Improved LeNet-5[J]. Acta Metrologica Sinica, 2022, 43(7): 913-919.
Xue X M, Li C S, Cao S Q, et al. Fault Diagnosis of Rolling Element Bearings with a Two-Step Scheme Based on Permutation Entropy and Random Forests[J]. Entropy, 2019, 21(1): 96-114.
Pan Z Z, Meng Z, Chen Z J, et al. A two-stage metophod based on extreme learning machine for predicting the remaining useful life of rolling-element bearings[J]. Mechanical Systems and Signal Processing, 2020, 144: 106899.
Meng Z, Yue J H, Xing T T, et al. Rolling Bearing Fault Diagnosis Based on Maximum Amplitude Variational Mode Decomposition and Root Mean Square Entropy[J]. Acta Metrologica Sinica, 2020, 41 (4): 455-460.
Chen J, Sun T H, Huang K X, et al. Bearing Fault Diagnosis Method Based on Histogram Equalization and Convolutional Neural Network[J]. Acta Metrologica Sinica, 2022, 43(7): 907-912.
[11]
Zhang Y, Xing K S, Bai R X, et al. An enhanced convolutional neural network for bearing fault diagnosis based on time-frequency image[J]. Measurement, 2020 157: 107667.
[12]
Yin A J, Yan Y H, Zhang Z Y, et al. Fault Diagnosis of Wind Turbine Gearbox Based on the Optimized LSTM Neural Network with Cosine Loss[J]. Sensors, 2020, 20(8): 2339.
[14]
Litjens G, Kooi T, Bejnordi B E, et al. A Survey on Deep Learning in Medical Image Analysis[J]. Medical Image Analysis, 2017, 42(9): 60-88.
[16]
Smith W A, Randall R B. Rolling element bearing diagnostics using the Case Western Reserve University data: A benchmark study[J]. Mechanical Systems and Signal Processing, 2015, 64-65: 100-131.
Chen J, Liu Y Y, Huang K X, et al. Rolling Bearing Fault Diagnosis Method Based on Singular Value Decomposition and Independent Component Analysis[J]. Acta Metrologica Sinica, 2022, 43(6): 776-784.
[10]
Zhu X X, Hou D N, Zhou P, et al. Rotor fault diagnosis using a convolutional neural network with symmetrized dot pattern images[J]. Measurement, 2019, 138: 526-535.
Chen J, Huang K X, Lü W Y, et al. Bearing Fault Diagnosis Method Based on VMD and Convolutional Neural Network Undervarying Operation Conditions[J]. Acta Metrologica Sinica, 2021, 42(7): 892-897.
Tang B, Chen S S, Guo B B, et al. Fault Diagnosis of Rolling Bearings Based on Migration of Characteristic Parameters[J]. Acta Metrologica Sinica, 2022, 43(3): 386-391.
[15]
Hinton G, Deng L, Yu D, et al. Deep neural networks for acoustic modeling in speech recognition: The Shared Views of Four Research Groups[J]. Signal Processing Magazine, 2012, 29(6): 82-97.
[17]
Maaten L J P V D, Hinton G E. Visualizing High-Dimensional Data using t-SNE[J]. Journal of Machine Learning Research, 2008, 9: 2579-2605.
[13]
Xiang W, Li F, Wang J X, et al. Quantum weighted gated recurrent unit neural network and its application in performance degradation trend prediction of rotating machinery [J]. Neurocomputing, 2018, 313: 85-95.