This paper addresses the problem of improving state estimation of dynamic industrial processes in real time for single, double, triple and quadruple fault detection and diagnosis purposes using multi-sensor data fusion strategy. The proposed monitoring systems track the process states to infer its operating conditions utilizing a decentralized kalman filtering methodology based on state-vector fusion technique. The paper considers both the synchronous and asynchronous multi-sensor scenarios to explore their relevant data fusion problems. The performances of the resulting monitoring systems are investigated under the two possible cases of time-delayed measurements due to communication delay and multi-rate sensors. The state-vector data fusio...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
In this paper a model-based procedure exploitinganalytical redundancy for the detection and isolatio...
Sensors are indispensable components of modern plants and processes and their reliability is vital t...
Abstract — In this paper, an unscented Kalman filter (UKF) is proposed in an integrated design frame...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using ...
This article presents a novel Auto-encoder-enabled fault resilient multi-sensor fusion architecture ...
The experimental evaluation of an automatic procedure for sensor fault detection and identification ...
This paper presents a real-time statistical technique for sensors incipient fault detection and isol...
Multisensor data fusion has found widespread application in industry and commerce. The purpose of da...
Decentralized Kalman Filters are often used in multi-sensor target tracking as such a distributed fu...
This article discusses the Kalman observer based fault detection approach. The calculation of the re...
The problem of state estimation of a continuous-time stochastic process using an Asynchronous Distri...
In this dissertation, the problem of distributed fault detection and data fusion for dynamic systems...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
In this paper a model-based procedure exploitinganalytical redundancy for the detection and isolatio...
Sensors are indispensable components of modern plants and processes and their reliability is vital t...
Abstract — In this paper, an unscented Kalman filter (UKF) is proposed in an integrated design frame...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using multiple Cub...
This paper presents a fault detection and diagnosis (FDD) for a nonlinear systems using ...
This article presents a novel Auto-encoder-enabled fault resilient multi-sensor fusion architecture ...
The experimental evaluation of an automatic procedure for sensor fault detection and identification ...
This paper presents a real-time statistical technique for sensors incipient fault detection and isol...
Multisensor data fusion has found widespread application in industry and commerce. The purpose of da...
Decentralized Kalman Filters are often used in multi-sensor target tracking as such a distributed fu...
This article discusses the Kalman observer based fault detection approach. The calculation of the re...
The problem of state estimation of a continuous-time stochastic process using an Asynchronous Distri...
In this dissertation, the problem of distributed fault detection and data fusion for dynamic systems...
This Thesis focuses on two specific research areas, both related to the subject of supervision and d...
In this paper a model-based procedure exploitinganalytical redundancy for the detection and isolatio...
Sensors are indispensable components of modern plants and processes and their reliability is vital t...