The experimental evaluation of an automatic procedure for sensor fault detection and identification in a real process under closed-loop control is the objective of the present research. The scheme proposed here is very robust to faults in the main sensors of a multiloop control system, thus improving safety and reliability of plant operations. A state variable transformation is carried out in order to derive a model suitable for Recursive Least Squares (RLS) identification valid for all regimes of operation. The fault detection method is based on a moving window statistical analysis of the estimated model parameters. Simultaneously, a state estimation scheme, based on the Extended Kalman Filter (EKF), enables the fault identification, reduc...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
A new methodology for instrument failure detection in linear dynamical systems subject to plant para...
The plant-wide disturbance can affect the product quality, manufacturing costs, process safety and e...
A sensor failure detection and identification scheme for a closed loop nonlinear system is described...
We combine a previously developed strategy for Fault Detection and Identification (FDI) with a super...
In this paper a model-based procedure exploitinganalytical redundancy for the detection and isolatio...
As the sophistication of systems used in chemical processing industries increases and demands for hi...
This paper presents the application results concerning the fault detection of a dynamic process usin...
The paper presents the application results concerning the fault diagnosis of a chemical process usin...
A model-based fault detection and diagnosis (FDD) solution improves the capability in a civil aircra...
This article discusses the Kalman observer based fault detection approach. The calculation of the re...
In this work a model--based procedure exploiting analytical redundancy via state estimation techniqu...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
Safety in industrial process and production plants is a concern of rising importance, especially if ...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
A new methodology for instrument failure detection in linear dynamical systems subject to plant para...
The plant-wide disturbance can affect the product quality, manufacturing costs, process safety and e...
A sensor failure detection and identification scheme for a closed loop nonlinear system is described...
We combine a previously developed strategy for Fault Detection and Identification (FDI) with a super...
In this paper a model-based procedure exploitinganalytical redundancy for the detection and isolatio...
As the sophistication of systems used in chemical processing industries increases and demands for hi...
This paper presents the application results concerning the fault detection of a dynamic process usin...
The paper presents the application results concerning the fault diagnosis of a chemical process usin...
A model-based fault detection and diagnosis (FDD) solution improves the capability in a civil aircra...
This article discusses the Kalman observer based fault detection approach. The calculation of the re...
In this work a model--based procedure exploiting analytical redundancy via state estimation techniqu...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
Safety in industrial process and production plants is a concern of rising importance, especially if ...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
A new methodology for instrument failure detection in linear dynamical systems subject to plant para...
The plant-wide disturbance can affect the product quality, manufacturing costs, process safety and e...