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Xiaogang Deng
Xiaogang Deng
College of Information and Control Engineering, China University of Petroleum
Verified email at upc.edu.cn
Title
Cited by
Cited by
Year
Nonlinear process fault diagnosis based on serial principal component analysis
X Deng, X Tian, S Chen, CJ Harris
IEEE transactions on neural networks and learning systems 29 (3), 560-572, 2018
1652018
Modified kernel principal component analysis based on local structure analysis and its application to nonlinear process fault diagnosis
X Deng, X Tian, S Chen
Chemometrics and Intelligent Laboratory Systems 127, 195-209, 2013
1372013
Multiway kernel independent component analysis based on feature samples for batch process monitoring
X Tian, X Zhang, X Deng, S Chen
Neurocomputing 72 (7-9), 1584-1596, 2009
1172009
Deep Principal Component Analysis Based on Layerwise Feature Extraction and Its Application to Nonlinear Process Monitoring
X Deng, X Tian, S Chen, CJ Harris
IEEE Transactions on Control Systems Technology 27 (6), 2526-2540, 2019
822019
Nonlinear process fault pattern recognition using statistics kernel PCA similarity factor
X Deng, X Tian
Neurocomputing 121, 298-308, 2013
812013
Online soft sensor design using local partial least squares models with adaptive process state partition
W Shao, X Tian, P Wang, X Deng, S Chen
Chemometrics and Intelligent Laboratory Systems 144, 108-121, 2015
762015
Fault discriminant enhanced kernel principal component analysis incorporating prior fault information for monitoring nonlinear processes
X Deng, X Tian, S Chen, CJ Harris
Chemometrics and Intelligent Laboratory Systems 162, 21-34, 2017
682017
Sparse kernel locality preserving projection and its application in nonlinear process fault detection
D Xiaogang, T Xuemin
Chinese Journal of Chemical Engineering 21 (2), 163-170, 2013
572013
Fault detection of multimode non-Gaussian dynamic process using dynamic Bayesian independent component analysis
Y Xu, X Deng
Neurocomputing 200, 70-79, 2016
562016
Batch Process Monitoring Based on Multiway Global Preserving Kernel Slow Feature Analysis
H Zhang, X Tian, X Deng
IEEE Access 5, 2696-2710, 2017
532017
Anomaly detection using improved deep SVDD model with data structure preservation
Z Zhang, X Deng
Pattern Recognition Letters 148, 1-6, 2021
522021
Incipient fault detection for nonlinear processes based on dynamic multi-block probability related kernel principal component analysis
P Cai, X Deng
ISA transactions 105, 210-220, 2020
502020
Modified kernel principal component analysis using double-weighted local outlier factor and its application to nonlinear process monitoring
X Deng, L Wang
ISA transactions 72, 218-228, 2018
502018
State-of-Health Prediction For Lithium-Ion Batteries With Multiple Gaussian Process Regression Model
X Zheng, X Deng
IEEE Access 7, 150383-150394, 2019
472019
Process fault detection based on dynamic kernel slow feature analysis
N Zhang, X Tian, L Cai, X Deng
Computers & Electrical Engineering 41, 9-17, 2015
462015
Two-step localized kernel principal component analysis based incipient fault diagnosis for nonlinear industrial processes
X Deng, P Cai, Y Cao, P Wang
Industrial & Engineering Chemistry Research 59 (13), 5956-5968, 2020
362020
Multiphase batch process with transitions monitoring based on global preserving statistics slow feature analysis
H Zhang, X Tian, X Deng, Y Cao
Neurocomputing 293, 64-86, 2018
362018
Multimode process fault detection using local neighborhood similarity analysis
X Deng, X Tian
Chinese Journal of Chemical Engineering 22 (11-12), 1260-1267, 2014
362014
A new fault isolation method based on unified contribution plots
X Deng, X Tian
Proceedings of the 30th Chinese Control Conference, 4280-4285, 2011
342011
Batch process fault detection and identification based on discriminant global preserving kernel slow feature analysis
H Zhang, X Tian, X Deng, Y Cao
ISA transactions 79, 108-126, 2018
332018
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