Online Contribution Rate Based Fault Diagnosis for Nonlinear Industrial Processes
暂无分享,去创建一个
Gang Li | Kai Zhang | Kai-Xiang Peng | Kai-xiang Peng | Kai Zhang | Gang Li
[1] Dong-Hua Zhou,et al. Total PLS Based Contribution Plots for Fault Diagnosis: Total PLS Based Contribution Plots for Fault Diagnosis , 2009 .
[2] Jialin Liu,et al. Fault diagnosis using contribution plots without smearing effect on non-faulty variables , 2012 .
[3] Steven X. Ding,et al. Data-driven monitoring for stochastic systems and its application on batch process , 2013, Int. J. Syst. Sci..
[4] Xiao-Sheng Si,et al. A Survey on Anomaly Detection, Life Prediction and Maintenance Decision for Industrial Processes: A Survey on Anomaly Detection, Life Prediction and Maintenance Decision for Industrial Processes , 2014 .
[5] Kaixiang Peng,et al. Contribution rate plot for nonlinear quality-related fault diagnosis with application to the hot strip mill process , 2013 .
[6] S. Joe Qin,et al. Quality‐relevant and process‐relevant fault monitoring with concurrent projection to latent structures , 2013 .
[7] Ping Zhang,et al. A comparison study of basic data-driven fault diagnosis and process monitoring methods on the benchmark Tennessee Eastman process , 2012 .
[8] Julian Morris,et al. Nonlinear multiscale modelling for fault detection and identification , 2008 .
[9] Shuai Li,et al. Dynamical process monitoring using dynamical hierarchical kernel partial least squares , 2012 .
[10] Gunnar Rätsch,et al. An introduction to kernel-based learning algorithms , 2001, IEEE Trans. Neural Networks.
[11] S. Joe Qin,et al. Decentralized Fault Diagnosis of Large-scale Processes Using Multiblock Kernel Principal Component Analysis: Decentralized Fault Diagnosis of Large-scale Processes Using Multiblock Kernel Principal Component Analysis , 2010 .
[12] Gunnar Rätsch,et al. Input space versus feature space in kernel-based methods , 1999, IEEE Trans. Neural Networks.
[13] S. Joe Qin,et al. Decentralized Fault Diagnosis of Large-scale Processes Using Multiblock Kernel Principal Component Analysis: Decentralized Fault Diagnosis of Large-scale Processes Using Multiblock Kernel Principal Component Analysis , 2010 .
[14] Gang Li,et al. Total PLS Based Contribution Plots for Fault Diagnosis , 2009 .
[15] Jin Hyun Park,et al. Fault detection and identification of nonlinear processes based on kernel PCA , 2005 .
[16] Gang Li,et al. Reconstruction based fault prognosis for continuous processes , 2010 .
[17] Zhou Dong,et al. A Survey on Anomaly Detection, Life Prediction and Maintenance Decision for Industrial Processes , 2013 .
[18] Carlos F. Alcala,et al. Reconstruction-based contribution for process monitoring with kernel principal component analysis , 2010, Proceedings of the 2010 American Control Conference.
[19] In-Beum Lee,et al. Fault identification for process monitoring using kernel principal component analysis , 2005 .
[20] Alain Rakotomamonjy,et al. Variable Selection Using SVM-based Criteria , 2003, J. Mach. Learn. Res..
[21] Haixia Xu,et al. Adaptive kernel principal component analysis , 2010, Signal Process..
[22] S. Joe Qin,et al. Statistical process monitoring: basics and beyond , 2003 .
[23] E. Martin,et al. Non-linear projection to latent structures revisited: the quadratic PLS algorithm , 1999 .
[24] Daniel Cremers,et al. Shape statistics in kernel space for variational image segmentation , 2003, Pattern Recognit..
[25] Gunnar Rätsch,et al. Kernel PCA and De-Noising in Feature Spaces , 1998, NIPS.
[26] Si-Zhao Joe Qin,et al. Reconstruction-based contribution for process monitoring , 2009, Autom..
[27] S. J. Qin,et al. An alternative PLS algorithm for the monitoring of industrial process , 2001, Proceedings of the 2001 American Control Conference. (Cat. No.01CH37148).
[28] J. Golinval,et al. Fault detection based on Kernel Principal Component Analysis , 2010 .
[29] In-Beum Lee,et al. Nonlinear dynamic process monitoring based on dynamic kernel PCA , 2004 .
[30] U. Kruger,et al. Moving window kernel PCA for adaptive monitoring of nonlinear processes , 2009 .