A sensor network operating under changing operational conditions will have to adapt to its environment, topology and system performance. In order to obtain this flexible behavior, a reconfiguration framework is proposed for distributed signal processing solutions. The considered example in this article is distributed Kalman filtering, whereas the reconfiguration framework is based on a first order logic reasoner to find a feasible configuration in a dynamic execution context. In a simulated scenario of a greenhouse temperature field estimation, the proposed system can minimize the state estimation error, while satisfying the systems constraints such as battery life, communication bandwidth or reliability and timeliness of respons
Most distributed Kalman filtering (DKF) algorithms for sensor networks calculate a local estimate of...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This paper describes the distributed information filtering where a set of sensor networks are requir...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
Abstract-Distributed Kalman filtering is an important signal processing method for state estimation ...
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...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This paper focuses on distributed state estimation using a sensor network for monitoring a linear sy...
In this work, a distributed Kalman filtering and clustering framework for sensor networks tasked wit...
This thesis deals with two aspects of recursive state estimation: distributed estimation and estimat...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
Most distributed Kalman filtering (DKF) algorithms for sensor networks calculate a local estimate of...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This paper describes the distributed information filtering where a set of sensor networks are requir...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
Distributed solutions for signal processing techniques are important for establishing large-scale mo...
Abstract-Distributed Kalman filtering is an important signal processing method for state estimation ...
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...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This paper focuses on distributed state estimation using a sensor network for monitoring a linear sy...
In this work, a distributed Kalman filtering and clustering framework for sensor networks tasked wit...
This thesis deals with two aspects of recursive state estimation: distributed estimation and estimat...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
Most distributed Kalman filtering (DKF) algorithms for sensor networks calculate a local estimate of...
Centralized state-estimation algorithms, such as the original Kalman filter, are no longer feasible ...
This paper describes the distributed information filtering where a set of sensor networks are requir...