This work is focused on exploring the use of Multi-scale Principal Component Analysis (MSPCA) for performance assessment and diagnosis of PID controllers in steel rolling processes. An optimal PID controller is used for performance benchmark. Diagnosis is implemented using an angle-classifier PCA-based approach. Theoretical framework of MSPCA, the performance index and the diagnosis procedure are developed. A procedure for implementing the proposed algorithm is presented. Simulations on the rolling mill roll force demonstrate reliable assessment and diagnosis results and practical use of the proposed metho
(PCA) is used for detecting faults in a simulated wastewater treatment plant (WWTP). PCA is a multiv...
This paper presents a new multivariate process capability index (MPCI) which is based on the princip...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
This work is focused on exploring the use of Multi-scale Principal Component Analysis (MSPCA) for pe...
In the field of hot rolling process monitoring, the activation of non-linear dynamic behaviour may r...
In paper mill plants, the competition for increasing efficiency and reducing costs is a primary purp...
. Abstract:- A new approach for fault detection and monitoring based on the parameters identificatio...
This research looks into the issues of the quality improvement based on process control instead of p...
A major technical challenge facing the manufacturing and process control industries is the need to i...
Multivariate Statistical Process Control (MSPC) is known generally as an upgraded technique, from wh...
Abstract: A unified framework based on the dynamic principal component analysis (PCA) is proposed fo...
Performance feature extraction is the primary problem in equipment performance degradation assessmen...
Condition-based monitoring (CBM) has advanced to the stage where industry is now demanding machinery...
This dissertation presents several methods for improving multivariate monitoring capabilities, with...
Monitoring of process control systems is extremely important for industries to ensure the quality of...
(PCA) is used for detecting faults in a simulated wastewater treatment plant (WWTP). PCA is a multiv...
This paper presents a new multivariate process capability index (MPCI) which is based on the princip...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
This work is focused on exploring the use of Multi-scale Principal Component Analysis (MSPCA) for pe...
In the field of hot rolling process monitoring, the activation of non-linear dynamic behaviour may r...
In paper mill plants, the competition for increasing efficiency and reducing costs is a primary purp...
. Abstract:- A new approach for fault detection and monitoring based on the parameters identificatio...
This research looks into the issues of the quality improvement based on process control instead of p...
A major technical challenge facing the manufacturing and process control industries is the need to i...
Multivariate Statistical Process Control (MSPC) is known generally as an upgraded technique, from wh...
Abstract: A unified framework based on the dynamic principal component analysis (PCA) is proposed fo...
Performance feature extraction is the primary problem in equipment performance degradation assessmen...
Condition-based monitoring (CBM) has advanced to the stage where industry is now demanding machinery...
This dissertation presents several methods for improving multivariate monitoring capabilities, with...
Monitoring of process control systems is extremely important for industries to ensure the quality of...
(PCA) is used for detecting faults in a simulated wastewater treatment plant (WWTP). PCA is a multiv...
This paper presents a new multivariate process capability index (MPCI) which is based on the princip...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...