2021
DOI: 10.1016/j.measurement.2020.108774
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Fault diagnosis of rotating machinery based on recurrent neural networks

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Cited by 147 publications
(59 citation statements)
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“…Therefore, many researchers have introduced neural networks into the field of fault diagnosis [ 2 , 3 ] and achieved automatic fault diagnosis based on deep learning. Deep learning methods, such as Convolutional Neural Networks [ 4 , 5 ], DBNs (Deep Belief Networks) [ 6 , 7 ], Generative Adversarial Networks [ 8 , 9 ], Recurrent Neural Networks [ 10 , 11 ], and Deep Autoencoder [ 12 , 13 ], by automatically and efficiently extracting feature information, overcome several limitations of traditional diagnostic methods and significantly improve the diagnostic accuracy. Among them, the typical BP (Back Propagation) neural network is widely used in the field of fault diagnosis, such as automobile transmission systems, engines, and hydraulic power steering systems [ 14 – 17 ].…”
Section: Introductionmentioning
confidence: 99%
“…Therefore, many researchers have introduced neural networks into the field of fault diagnosis [ 2 , 3 ] and achieved automatic fault diagnosis based on deep learning. Deep learning methods, such as Convolutional Neural Networks [ 4 , 5 ], DBNs (Deep Belief Networks) [ 6 , 7 ], Generative Adversarial Networks [ 8 , 9 ], Recurrent Neural Networks [ 10 , 11 ], and Deep Autoencoder [ 12 , 13 ], by automatically and efficiently extracting feature information, overcome several limitations of traditional diagnostic methods and significantly improve the diagnostic accuracy. Among them, the typical BP (Back Propagation) neural network is widely used in the field of fault diagnosis, such as automobile transmission systems, engines, and hydraulic power steering systems [ 14 – 17 ].…”
Section: Introductionmentioning
confidence: 99%
“…It also includes triaxial vibration data of three phase induction motor in healthy condition. The acquired data can be used for evaluation of new methods proposed for bearing fault detection and identification such as methods presented in the research [1] , [2] , [3] , [4] . The collected datasets are stored in comma separated values (CSV) files.…”
Section: Data Descriptionmentioning
confidence: 99%
“…As the depth of the network increases, neural networks easily suffer from vanishing or exploding gradient problems, which causes the training process difficult to converge. To alleviate this issue, Zhang et al [115] employed RNN with residual connection to learn representative features. They compared the performance of the RNN with and without residual connection.…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…However, when the number of training sample is small but the number of features is huge, Fig. 8 Effect of residual connection on classification accuracy [115] Fig. 9 Classification accuracy (a) and computation times (b) of LSPTSVM, PSVM, and SVM [120] then it is not necessary that all available features are of equal importance in the classification context.…”
Section: Support Vector Machinementioning
confidence: 99%