A systematic review of deep transfer learning for machinery fault diagnosis C Li, S Zhang, Y Qin, E Estupinan Neurocomputing 407, 121-135, 2020 | 419 | 2020 |
State-of-charge estimation of lithium-ion batteries using LSTM and UKF F Yang, S Zhang, W Li, Q Miao Energy 201, 117664, 2020 | 366 | 2020 |
Bearing performance degradation assessment using long short-term memory recurrent network B Zhang, S Zhang, W Li Computers in Industry 106, 14-29, 2019 | 323 | 2019 |
Deep decoupling convolutional neural network for intelligent compound fault diagnosis R Huang, Y Liao, S Zhang, W Li Ieee Access 7, 1848-1858, 2018 | 195 | 2018 |
Evolving deep echo state networks for intelligent fault diagnosis J Long, S Zhang, C Li IEEE Transactions on Industrial Informatics 16 (7), 4928-4937, 2019 | 174 | 2019 |
Attitude data-based deep hybrid learning architecture for intelligent fault diagnosis of multi-joint industrial robots J Long, J Mou, L Zhang, S Zhang, C Li Journal of manufacturing systems 61, 736-745, 2021 | 132 | 2021 |
Bayesian approach and time series dimensionality reduction to LSTM-based model-building for fault diagnosis of a reciprocating compressor D Cabrera, A Guamán, S Zhang, M Cerrada, RV Sánchez, J Cevallos, ... Neurocomputing 380, 51-66, 2020 | 116 | 2020 |
Semisupervised distance-preserving self-organizing map for machine-defect detection and classification W Li, S Zhang, G He IEEE Transactions on Instrumentation and Measurement 62 (5), 869-879, 2013 | 113 | 2013 |
Deep fuzzy echo state networks for machinery fault diagnosis S Zhang, Z Sun, M Wang, J Long, Y Bai, C Li IEEE Transactions on Fuzzy Systems 28 (7), 1205-1218, 2019 | 105 | 2019 |
Feature denoising and nearest–farthest distance preserving projection for machine fault diagnosis W Li, S Zhang, S Rakheja IEEE Transactions on Industrial Informatics 12 (1), 393-404, 2015 | 103 | 2015 |
A hybrid multi-objective genetic local search algorithm for the prize-collecting vehicle routing problem J Long, Z Sun, PM Pardalos, Y Hong, S Zhang, C Li Information Sciences 478, 40-61, 2019 | 97 | 2019 |
Enhanced generative adversarial network for extremely imbalanced fault diagnosis of rotating machine R Wang, S Zhang, Z Chen, W Li Measurement 180, 109467, 2021 | 86 | 2021 |
A novel sparse echo autoencoder network for data-driven fault diagnosis of delta 3-D printers J Long, Z Sun, C Li, Y Hong, Y Bai, S Zhang IEEE Transactions on Instrumentation and Measurement 69 (3), 683-692, 2019 | 81 | 2019 |
Generative adversarial networks selection approach for extremely imbalanced fault diagnosis of reciprocating machinery D Cabrera, F Sancho, J Long, RV Sánchez, S Zhang, M Cerrada, C Li IEEE Access 7, 70643-70653, 2019 | 76 | 2019 |
Mechanical fault time series prediction by using EFMSAE-LSTM neural network J Guo, Z Lao, M Hou, C Li, S Zhang Measurement 173, 108566, 2021 | 64 | 2021 |
Dynamic condition monitoring for 3D printers by using error fusion of multiple sparse auto-encoders S Zhang, Z Sun, J Long, C Li, Y Bai Computers in Industry 105, 164-176, 2019 | 61 | 2019 |
Dual-attention generative adversarial networks for fault diagnosis under the class-imbalanced conditions R Wang, Z Chen, S Zhang, W Li IEEE Sensors Journal 22 (2), 1474-1485, 2021 | 53 | 2021 |
Deep hybrid state network with feature reinforcement for intelligent fault diagnosis of delta 3-D printers S Zhang, Z Sun, C Li, D Cabrera, J Long, Y Bai IEEE Transactions on Industrial Informatics 16 (2), 779-789, 2019 | 50 | 2019 |
Fault diagnosis of delta 3D printers using transfer support vector machine with attitude signals J Guo, J Wu, Z Sun, J Long, S Zhang IEEE Access 7, 40359-40368, 2019 | 47 | 2019 |
Fault diagnosis for wind turbine gearboxes by using deep enhanced fusion network Z Pu, C Li, S Zhang, Y Bai IEEE Transactions on Instrumentation and Measurement 70, 1-11, 2020 | 44 | 2020 |