A Time Series Transformer based method for the rotating machinery fault diagnosis
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[1] S. Qian,et al. A small sample bearing fault diagnosis method based on variational mode decomposition, autocorrelation function, and convolutional neural network , 2021, The International Journal of Advanced Manufacturing Technology.
[2] Haibin Sun,et al. Fault Diagnosis for Bearing Based on 1DCNN and LSTM , 2021, Shock and Vibration.
[3] Bing Xue,et al. Multi-View Feature Construction Using Genetic Programming for Rolling Bearing Fault Diagnosis [Application Notes] , 2021, IEEE Computational Intelligence Magazine.
[4] Thompson Sarkodie-Gyan,et al. A hybrid deep-learning model for fault diagnosis of rolling bearings , 2021 .
[5] Mengjie Zhang,et al. Automatic Feature Extraction and Construction Using Genetic Programming for Rotating Machinery Fault Diagnosis , 2020, IEEE Transactions on Cybernetics.
[6] Zheng Liu,et al. Multiple-Order Graphical Deep Extreme Learning Machine for Unsupervised Fault Diagnosis of Rolling Bearing , 2021, IEEE Transactions on Instrumentation and Measurement.
[7] Ruqiang Yan,et al. Deep Learning Algorithms for Rotating Machinery Intelligent Diagnosis: An Open Source Benchmark Study , 2020, ISA transactions.
[8] Yaguo Lei,et al. A Hybrid Prognostics Approach for Estimating Remaining Useful Life of Rolling Element Bearings , 2020, IEEE Transactions on Reliability.
[9] Enhua Wu,et al. Squeeze-and-Excitation Networks , 2017, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[10] Haibo Zhang,et al. Fault Diagnosis Based on Space Mapping and Deformable Convolution Networks , 2020, IEEE Access.
[11] Zihan Zhang,et al. Compound Fault Diagnosis of Gearboxes via Multi-label Convolutional Neural Network and Wavelet Transform , 2019, Comput. Ind..
[12] Wenhua Du,et al. Research on Novel Bearing Fault Diagnosis Method Based on Improved Krill Herd Algorithm and Kernel Extreme Learning Machine , 2019, Complex..
[13] Junsheng Cheng,et al. An improved deep convolutional neural network with multi-scale information for bearing fault diagnosis , 2019, Neurocomputing.
[14] Rui Yao,et al. A novel intelligent diagnosis method using optimal LS-SVM with improved PSO algorithm , 2017, Soft Computing.
[15] Hee-Jun Kang,et al. A survey on Deep Learning based bearing fault diagnosis , 2019, Neurocomputing.
[16] Serkan Kiranyaz,et al. A Generic Intelligent Bearing Fault Diagnosis System Using Compact Adaptive 1D CNN Classifier , 2018, Journal of Signal Processing Systems.
[17] Robert X. Gao,et al. Deep learning and its applications to machine health monitoring , 2019, Mechanical Systems and Signal Processing.
[18] Dongming Xiao,et al. Gear Fault Diagnosis Based on Kurtosis Criterion VMD and SOM Neural Network , 2019 .
[19] Minping Jia,et al. A novel optimized SVM classification algorithm with multi-domain feature and its application to fault diagnosis of rolling bearing , 2018, Neurocomputing.
[20] Gaoliang Peng,et al. A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load , 2018, Mechanical Systems and Signal Processing.
[21] Fei Shen,et al. Machine Health Monitoring Using Local Feature-Based Gated Recurrent Unit Networks , 2018, IEEE Transactions on Industrial Electronics.
[22] Jiong Tang,et al. Preprocessing-Free Gear Fault Diagnosis Using Small Datasets With Deep Convolutional Neural Network-Based Transfer Learning , 2017, IEEE Access.
[23] Haidong Shao,et al. A novel deep autoencoder feature learning method for rotating machinery fault diagnosis , 2017 .
[24] Robert X. Gao,et al. Virtualization and deep recognition for system fault classification , 2017 .
[25] Chen Lu,et al. Intelligent fault diagnosis of rolling bearing using hierarchical convolutional network based health state classification , 2017, Adv. Eng. Informatics.
[26] Qingbo He,et al. Energy-Fluctuated Multiscale Feature Learning With Deep ConvNet for Intelligent Spindle Bearing Fault Diagnosis , 2017, IEEE Transactions on Instrumentation and Measurement.
[27] Ruqiang Yan,et al. Learning to Monitor Machine Health with Convolutional Bi-Directional LSTM Networks , 2017, Sensors.
[28] Shaojiang Dong,et al. Application of fuzzy C-means method and classification model of optimized K-nearest neighbor for fault diagnosis of bearing , 2016 .
[29] Liang Chen,et al. Hierarchical adaptive deep convolution neural network and its application to bearing fault diagnosis , 2016 .
[30] Li Lin,et al. Fault diagnosis and remaining useful life estimation of aero engine using LSTM neural network , 2016, 2016 IEEE International Conference on Aircraft Utility Systems (AUS).
[31] Steven Verstockt,et al. Convolutional Neural Network Based Fault Detection for Rotating Machinery , 2016 .
[32] Moncef Gabbouj,et al. Real-Time Motor Fault Detection by 1-D Convolutional Neural Networks , 2016, IEEE Transactions on Industrial Electronics.
[33] Cong Wang,et al. Construction of hierarchical diagnosis network based on deep learning and its application in the fault pattern recognition of rolling element bearings , 2016 .
[34] Xin Zhou,et al. Deep neural networks: A promising tool for fault characteristic mining and intelligent diagnosis of rotating machinery with massive data , 2016 .
[35] Jane You,et al. HSAE: A Hessian regularized sparse auto-encoders , 2016, Neurocomputing.
[36] Jian Sun,et al. Deep Residual Learning for Image Recognition , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[37] Haidong Shao,et al. Rolling bearing fault diagnosis using an optimization deep belief network , 2015 .
[38] Yitao Liang,et al. A novel bearing fault diagnosis model integrated permutation entropy, ensemble empirical mode decomposition and optimized SVM , 2015 .
[39] Geoffrey E. Hinton,et al. Deep Learning , 2015, Nature.
[40] Steven X. Ding,et al. A Survey of Fault Diagnosis and Fault-Tolerant Techniques—Part I: Fault Diagnosis With Model-Based and Signal-Based Approaches , 2015, IEEE Transactions on Industrial Electronics.
[41] H.A. Toliyat,et al. Condition Monitoring and Fault Diagnosis of Electrical Motors—A Review , 2005, IEEE Transactions on Energy Conversion.
[42] Yoshua Bengio,et al. Gradient-based learning applied to document recognition , 1998, Proc. IEEE.
[43] C. Lee Giles,et al. Learning and Extracting Finite State Automata with Second-Order Recurrent Neural Networks , 1992, Neural Computation.