1 |
Deep learning for fault-relevant feature extraction and fault classification with stacked supervised auto-encoder Wang YL, Yang HB, Yuan XF, Shardt YAW, Yang CH, Gui WH Journal of Process Control, 92, 79, 2020 |
2 |
Gaussian Discriminative Analysis aided GAN for imbalanced big data augmentation and fault classification Zhuo Y, Ge ZQ Journal of Process Control, 92, 271, 2020 |
3 |
Incorporate active learning to semi-supervised industrial fault classification Yin LL, Wang HG, Fan WH, Kou L, Lin TY, Xiao YY Journal of Process Control, 78, 88, 2019 |
4 |
K-means Bayes algorithm for imbalanced fault classification and big data application Chen GC, Liu Y, Ge ZQ Journal of Process Control, 81, 54, 2019 |
5 |
PV shading fault detection and classification based on I-V curve using principal component analysis: Application to isolated PV system Fadhel S, Delpha C, Diallo D, Bahri I, Migan A, Trabelsi M, Mimouni MF Solar Energy, 179, 1, 2019 |
6 |
Recursive Spectral Meta-Learner for Online Combining Different Fault Classifiers Chen MY, Shang J IEEE Transactions on Automatic Control, 63(2), 586, 2018 |
7 |
Weighted random forests for fault classification in industrial processes with hierarchical clustering model selection Liu Y, Ge ZQ Journal of Process Control, 64, 62, 2018 |
8 |
Improving classification-based diagnosis of batch processes through data selection and appropriate pretreatment Gins G, Van den Kerkhof P, Vanlaer J, Van Impe JFM Journal of Process Control, 26, 90, 2015 |
9 |
A Support Vector Clustering-Based Probabilistic Method for Unsupervised Fault Detection and Classification of Complex Chemical Processes Using Unlabeled Data Yu J AIChE Journal, 59(2), 407, 2013 |
10 |
Fault diagnosis by Locality Preserving Discriminant Analysis and its kernel variation Rong G, Liu SY, Shao JD Computers & Chemical Engineering, 49, 105, 2013 |