Distributed solutions for signal processing techniques are important for establishing large-scale monitoring and control applications. They enable the deployment of scalable sensor networks for particular application areas. Typically, such networks consists of a large number of vulnerable components connected via unreliable communication links and are sometimes deployed in harsh environment. Therefore, dependability of sensor network is a challenging problem. An efficient and cost effective answer to this challenge is provided by employing runtime reconfiguration techniques that assure the integrity of the desired signal processing functionalities. Runtime reconfigurability has thorough impact both on system design, implementation, testing/...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributed state estimation under uncertain process and measurement noise covariances is considered...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
A sensor network operating under changing operational conditions will have to adapt to its environme...
Abstract-Distributed Kalman filtering is an important signal processing method for state estimation ...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
We address a state estimation problem over a large-scale sensor network with uncertain communication...
International audienceThis paper proposes a distributed method for jointly estimating the input and ...
for state-estimation has recently gained increasing attention due to its cost effectiveness and feas...
We propose a state estimation methodology using a network of distributed observers. We consider a sc...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributed state estimation under uncertain process and measurement noise covariances is considered...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
A sensor network operating under changing operational conditions will have to adapt to its environme...
Abstract-Distributed Kalman filtering is an important signal processing method for state estimation ...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
In the last years, the distributed state estimation issue has gained great importance in the framewo...
We address a state estimation problem over a large-scale sensor network with uncertain communication...
International audienceThis paper proposes a distributed method for jointly estimating the input and ...
for state-estimation has recently gained increasing attention due to its cost effectiveness and feas...
We propose a state estimation methodology using a network of distributed observers. We consider a sc...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributing calculations of a central Kalman filter requires subsystem level expressions for the pr...
Distributed state estimation under uncertain process and measurement noise covariances is considered...