Related references
Note: Only part of the references are listed.Online process monitoring using a new PCMD index
Ines Jaffel et al.
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY (2015)
Dimensionality reduction of RKHS model parameters
Okba Taouali et al.
ISA TRANSACTIONS (2015)
Detection, isolation and fault estimation of nonlinear systems using a directional study
Maya Kallas et al.
12TH EUROPEAN WORKSHOP ON ADVANCED CONTROL AND DIAGNOSIS (ACD 2015) (2015)
Hybrid kernel identification method based on support vector regression and regularisation network algorithms
Okba Taouali et al.
IET SIGNAL PROCESSING (2014)
A new online fault detection method based on PCA technique
Ines Jaffel et al.
IMA JOURNAL OF MATHEMATICAL CONTROL AND INFORMATION (2014)
Online prediction model based on the SVD-KPCA method
Ilyes Elaissi et al.
ISA TRANSACTIONS (2013)
Process monitoring based on improved recursive PCA methods by adaptive extracting principal components
Lirong Xia et al.
TRANSACTIONS OF THE INSTITUTE OF MEASUREMENT AND CONTROL (2013)
Online identification of nonlinear system using reduced kernel principal component analysis
Okba Taouali et al.
NEURAL COMPUTING & APPLICATIONS (2012)
Generalized Reconstruction-Based Contributions for Output-Relevant Fault Diagnosis With Application to the Tennessee Eastman Process
Gang Li et al.
IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY (2011)
Reconstruction-Based Contribution for Process Monitoring with Kernel Principal Component Analysis
Carlos F. Alcala et al.
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH (2010)
Nonlinear process monitoring using kernel principal component analysis
JM Lee et al.
CHEMICAL ENGINEERING SCIENCE (2004)
Choosing multiple parameters for support vector machines
O Chapelle et al.
MACHINE LEARNING (2002)
Sensor and actuator fault isolation by structured partial PCA with nonlinear extensions
Y Huang et al.
JOURNAL OF PROCESS CONTROL (2000)