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Zhiqiang Ge
Zhiqiang Ge
Zhejiang University, Peng Cheng Laboratory, Southeast University
在 seu.edu.cn 的电子邮件经过验证
标题
引用次数
引用次数
年份
Review of recent research on data-based process monitoring
Z Ge, Z Song, F Gao
Industrial & Engineering Chemistry Research 52 (10), 3543-3562, 2013
10842013
Data mining and analytics in the process industry: The role of machine learning
Z Ge, Z Song, SX Ding, B Huang
Ieee Access 5, 20590-20616, 2017
9922017
Review on data-driven modeling and monitoring for plant-wide industrial processes
Z Ge
Chemometrics and Intelligent Laboratory Systems 171, 16-25, 2017
6132017
A survey on deep learning for data-driven soft sensors
Q Sun, Z Ge
IEEE Transactions on Industrial Informatics 17 (9), 5853-5866, 2021
4032021
Process monitoring based on independent component analysis− principal component analysis (ICA− PCA) and similarity factors
Z Ge, Z Song
Industrial & Engineering Chemistry Research 46 (7), 2054-2063, 2007
3562007
Deep learning of semisupervised process data with hierarchical extreme learning machine and soft sensor application
L Yao, Z Ge
IEEE Transactions on Industrial Electronics 65 (2), 1490-1498, 2018
2912018
Review and big data perspectives on robust data mining approaches for industrial process modeling with outliers and missing data
J Zhu, Z Ge, Z Song, F Gao
Annual Reviews in Control 46, 107-133, 2018
2912018
Distributed parallel PCA for modeling and monitoring of large-scale plant-wide processes with big data
J Zhu, Z Ge, Z Song
IEEE Transactions on Industrial Informatics 13 (4), 1877-1885, 2017
2792017
Distributed PCA model for plant-wide process monitoring
Z Ge, Z Song
Industrial & engineering chemistry research 52 (5), 1947-1957, 2013
2592013
Improved kernel PCA-based monitoring approach for nonlinear processes
Z Ge, C Yang, Z Song
Chemical Engineering Science 64 (9), 2245-2255, 2009
2342009
A comparative study of just-in-time-learning based methods for online soft sensor modeling
Z Ge, Z Song
Chemometrics and Intelligent Laboratory Systems 104 (2), 306-317, 2010
2242010
Process data analytics via probabilistic latent variable models: A tutorial review
Z Ge
Industrial & Engineering Chemistry Research 57 (38), 12646-12661, 2018
2172018
Online monitoring of nonlinear multiple mode processes based on adaptive local model approach
Z Ge, Z Song
Control Engineering Practice 16 (12), 1427-1437, 2008
1962008
Global–local structure analysis model and its application for fault detection and identification
M Zhang, Z Ge, Z Song, R Fu
Industrial & Engineering Chemistry Research 50 (11), 6837-6848, 2011
1832011
Nonlinear process monitoring based on linear subspace and Bayesian inference
Z Ge, M Zhang, Z Song
Journal of Process Control 20 (5), 676-688, 2010
1832010
Mixture Bayesian regularization method of PPCA for multimode process monitoring
Z Ge, Z Song
AIChE journal 56 (11), 2838-2849, 2010
1812010
Semisupervised JITL framework for nonlinear industrial soft sensing based on locally semisupervised weighted PCR
X Yuan, Z Ge, B Huang, Z Song, Y Wang
IEEE Transactions on Industrial Informatics 13 (2), 532-541, 2016
1712016
Multimode process monitoring based on Bayesian method
Z Ge, Z Song
Journal of Chemometrics: A Journal of the Chemometrics Society 23 (12), 636-650, 2009
1712009
Weighted linear dynamic system for feature representation and soft sensor application in nonlinear dynamic industrial processes
X Yuan, Y Wang, C Yang, Z Ge, Z Song, W Gui
IEEE Transactions on Industrial Electronics 65 (2), 1508-1517, 2017
1692017
Locally weighted kernel principal component regression model for soft sensing of nonlinear time-variant processes
X Yuan, Z Ge, Z Song
Industrial & Engineering Chemistry Research 53 (35), 13736-13749, 2014
1682014
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