Quality-related fault detection based on mutual information principal component analysis
暂无分享,去创建一个
[1] Zhiqiang Ge,et al. Supervised linear dynamic system model for quality related fault detection in dynamic processes , 2016 .
[2] Magdi S. Mahmoud,et al. Data-driven fault detection filter design for time-delay systems , 2014, Int. J. Autom. Control..
[3] Hongbo Shi,et al. Improved performance of process monitoring based on selection of key principal components , 2015 .
[4] Kaixiang Peng,et al. Adaptive total PLS based quality-relevant process monitoring with application to the Tennessee Eastman process , 2015, Neurocomputing.
[5] Qiang Liu,et al. Concurrent Canonical Correlation Analysis Modeling for Quality-Relevant Monitoring , 2016 .
[6] Xuefeng Yan,et al. Plant-wide process monitoring based on mutual information-multiblock principal component analysis. , 2014, ISA transactions.
[7] Hongbo Shi,et al. Process monitoring via enhanced neighborhood preserving embedding , 2016 .
[8] Tian Xuemin,et al. A Nonlinear Quality-relevant Process Monitoring Method with Kernel Input-output Canonical Variate Analysis , 2015 .
[9] Qiang Liu,et al. Quality-Relevant Monitoring and Diagnosis with Dynamic Concurrent Projection to Latent Structures , 2014 .
[10] Ping Zhang,et al. A comparison study of basic data-driven fault diagnosis and process monitoring methods on the benchmark Tennessee Eastman process , 2012 .
[11] Hongbo Shi,et al. Key principal components with recursive local outlier factor for multimode chemical process monitoring , 2016 .
[12] Mudassir Rashid,et al. Multiway independent component analysis mixture model and mutual information based fault detection and diagnosis approach of multiphase batch processes , 2013 .
[13] Chunhui Zhao,et al. Fault modeling and prognosis based on combined relative analysis and autoregressive modeling , 2015, The 27th Chinese Control and Decision Conference (2015 CCDC).
[14] Q. Jin,et al. Quality-Related Statistical Process Monitoring Method Based on Global and Local Partial Least-Squares Projection , 2016 .
[15] Li Qi,et al. Online monitoring of glutamic solution concentration based on PLS regression , 2015, The 27th Chinese Control and Decision Conference (2015 CCDC).
[16] Chen Zhaoxu,et al. A data-driven approach of fault detection for LTI systems , 2013, Proceedings of the 32nd Chinese Control Conference.
[17] Donghua Zhou,et al. Total projection to latent structures for process monitoring , 2009 .
[18] Yaguo Lei,et al. A data-driven multiplicative fault diagnosis approach for automation processes. , 2014, ISA transactions.
[19] Abdessamad Kobi,et al. Fault detection and identification with a new feature selection based on mutual information , 2008 .
[20] Jiang Bin,et al. Adaptive PCA based fault diagnosis scheme in imperial smelting process , 2013, 2013 10th IEEE International Conference on Control and Automation (ICCA).
[21] Kaixiang Peng,et al. Quality-related process monitoring for dynamic non-Gaussian batch process with multi-phase using a new data-driven method , 2016, Neurocomputing.
[22] Xiukun Wei,et al. Fault diagnosis of rail vehicle suspension system based on distributed DPCA , 2015, The 27th Chinese Control and Decision Conference (2015 CCDC).
[23] Shi Xuhua,et al. Mutual information based PCA algorithm with application in process monitoring , 2015 .
[24] Y. Meng,et al. PCA based on mutual information for feature selection , 2013 .
[25] Hao Luo,et al. Quality-related fault detection using linear and nonlinear principal component regression , 2016, J. Frankl. Inst..
[26] Kaixiang Peng,et al. Quality-related prediction and monitoring of multi-mode processes using multiple PLS with application to an industrial hot strip mill , 2015, Neurocomputing.
[27] Bin Jiang,et al. Adaptive PCA based fault diagnosis scheme in imperial smelting process. , 2014, ISA transactions.