Reliable Fault Detection and Diagnosis of Large-Scale Nonlinear Uncertain Systems Using Interval Reduced Kernel PLS
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Hazem Nounou | Hassani Messaoud | Majdi Mansouri | Mohamed Nounou | Abdelmalek Kouadri | Kamaleldin Abodayeh | Mohamed-Faouzi Harkat | Radhia Fezai | H. Messaoud | M. Nounou | M. Mansouri | H. Nounou | A. Kouadri | K. Abodayeh | M. Harkat | R. Fezai
[1] Ying Sun,et al. An Integrated Vision-Based Approach for Efficient Human Fall Detection in a Home Environment , 2019, IEEE Access.
[2] Kai-xiang Peng,et al. Quality-Related Process Monitoring Based on Total Kernel PLS Model and Its Industrial Application , 2013 .
[3] S. Wold,et al. Nonlinear PLS modeling , 1989 .
[4] Xiao-Heng Chang,et al. Robust quantized H∞ filtering for discrete-time uncertain systems with packet dropouts , 2016, Appl. Math. Comput..
[5] Donghua Zhou,et al. Geometric properties of partial least squares for process monitoring , 2010, Autom..
[6] Hazem N. Nounou,et al. Fault detection of uncertain chemical processes using interval partial least squares-based generalized likelihood ratio test , 2019, Inf. Sci..
[7] Bart Nicolai,et al. Kernel PLS regression on wavelet transformed NIR spectra for prediction of sugar content of apple , 2007 .
[8] Shen Yin,et al. A nonlinear quality-related fault detection approach based on modified kernel partial least squares. , 2017, ISA transactions.
[9] Richard D. Braatz,et al. Data-driven Methods for Fault Detection and Diagnosis in Chemical Processes , 2000 .
[10] S. Joe Qin,et al. Quality‐relevant and process‐relevant fault monitoring with concurrent projection to latent structures , 2013 .
[11] Ping Zhang,et al. A comparison study of basic data-driven fault diagnosis and process monitoring methods on the benchmark Tennessee Eastman process , 2012 .
[12] Chi Ma,et al. Fault diagnosis of nonlinear processes using multiscale KPCA and multiscale KPLS , 2011 .
[13] Ying-wei Zhang,et al. Complex process quality prediction using modified kernel partial least squares , 2010 .
[14] E. F. Vogel,et al. A plant-wide industrial process control problem , 1993 .
[15] Hazem Nounou,et al. New sensor fault detection and isolation strategy–based interval‐valued data , 2020, Journal of Chemometrics.
[16] Yingwei Zhang,et al. Quality-related fault detection approach based on dynamic kernel partial least squares , 2016 .
[17] Hazem Nounou,et al. Enhanced data validation strategy of air quality monitoring network , 2018, Environmental research.
[18] Xiaojian Yi,et al. Design of robust nonfragile fault detection filter for uncertain dynamic systems with quantization , 2018, Appl. Math. Comput..
[19] T. Severini. Likelihood Methods in Statistics , 2001 .
[20] Manabu Kano,et al. Statistical process monitoring based on dissimilarity of process data , 2002 .
[21] Yaguo Lei,et al. A data-driven multiplicative fault diagnosis approach for automation processes. , 2014, ISA transactions.
[22] Hazem Nounou,et al. Kernel PLS-based GLRT method for fault detection of chemical processes , 2016 .
[23] Jiongqi Wang,et al. An incipient fault detection approach via detrending and denoising , 2018 .
[24] In-Beum Lee,et al. A novel multivariate regression approach based on kernel partial least squares with orthogonal signal correction , 2005 .
[25] L. Billard,et al. Symbolic Covariance Principal Component Analysis and Visualization for Interval-Valued Data , 2012 .
[26] Fu Xiao,et al. AHU sensor fault diagnosis using principal component analysis method , 2004 .
[27] Hongbo Shi,et al. Improved Kernel PLS-based Fault Detection Approach for Nonlinear Chemical Processes , 2014 .
[28] Roger Sauter,et al. In All Likelihood , 2002, Technometrics.
[29] Roman Rosipal,et al. Kernel Partial Least Squares Regression in Reproducing Kernel Hilbert Space , 2002, J. Mach. Learn. Res..
[30] Fouzi Harrou,et al. Monitoring Influent Conditions of Wastewater Treatment Plants by Nonlinear Data-Based Techniques , 2019, IEEE Access.
[31] Wenyou Du,et al. Process Fault Detection Using Directional Kernel Partial Least Squares , 2015 .
[32] S. Joe Qin,et al. Analysis and generalization of fault diagnosis methods for process monitoring , 2011 .
[33] Donghua Zhou,et al. Fault detection based on robust characteristic dimensionality reduction , 2019, Control Engineering Practice.
[34] Bhupinder S. Dayal,et al. Improved PLS algorithms , 1997 .
[35] Foudil Cherif,et al. Flexible and Efficient Topological Approaches for a Reliable Robots Swarm Aggregation , 2019, IEEE Access.
[36] Hazem N. Nounou,et al. Improved Statistical Fault Detection Technique and Application to Biological Phenomena Modeled by S-Systems , 2017, IEEE Transactions on NanoBioscience.
[37] Stephen E. Fienberg,et al. Testing Statistical Hypotheses , 2005 .
[38] Haibo He,et al. A Novel Framework for Fault Diagnosis Using Kernel Partial Least Squares Based on an Optimal Preference Matrix , 2017, IEEE Transactions on Industrial Electronics.
[39] Okyay Kaynak,et al. Improved PLS Focused on Key-Performance-Indicator-Related Fault Diagnosis , 2015, IEEE Transactions on Industrial Electronics.
[40] F. Palumbo,et al. A PCA for interval-valued data based on midpoints and radii , 2003 .
[41] Mohamed Nounou,et al. Process Monitoring Using Data-Based Fault Detection Techniques: Comparative Studies , 2017 .
[42] Frédéric Kratz,et al. On the application of interval PCA to process monitoring: A robust strategy for sensor FDI with new efficient control statistics , 2018 .
[43] Abdelmalek Kouadri,et al. A combined monitoring scheme with fuzzy logic filter for plant-wide Tennessee Eastman Process fault detection , 2018, Chemical Engineering Science.
[44] R. Rosipal,et al. Kernel Partial Least Squares for Nonlinear Regression and Discrimination , 2002 .
[45] Gerald S. Rogers,et al. Mathematical Statistics: A Decision Theoretic Approach , 1967 .
[46] Hanwen Zhang,et al. Fault detection based on augmented kernel Mahalanobis distance for nonlinear dynamic processes , 2018, Comput. Chem. Eng..
[47] John F. MacGregor,et al. Process monitoring and diagnosis by multiblock PLS methods , 1994 .
[48] Majdi Mansouri,et al. Multiscale Kernel PLS-Based Exponentially Weighted-GLRT and Its Application to Fault Detection , 2019, IEEE Transactions on Emerging Topics in Computational Intelligence.
[49] Huanhuan Chen,et al. Cognitive fault diagnosis in Tennessee Eastman Process using learning in the model space , 2014, Comput. Chem. Eng..
[50] Roman Rosipal,et al. Overview and Recent Advances in Partial Least Squares , 2005, SLSFS.
[51] Fuli Wang,et al. Performance modeling of centrifugal compressor using kernel partial least squares , 2012 .
[52] Christos Georgakis,et al. Plant-wide control of the Tennessee Eastman problem , 1995 .
[53] P. Giordani,et al. A least squares approach to principal component analysis for interval valued data , 2004 .
[54] Hazem N. Nounou,et al. Fault detection of chemical processes using improved generalized likelihood ratio test , 2017, 2017 22nd International Conference on Digital Signal Processing (DSP).
[55] Zheng Liu,et al. Learning-based super resolution using kernel partial least squares , 2011, Image Vis. Comput..
[56] James R. Ottewill,et al. Fault detection and identification combining process measurements and statistical alarms , 2020 .