This paper studies the remote Kalman filtering problem for a distributed system setting with multiple sensors that are located at different physical locations. Each sensor encapsulates its own measurement data into one single packet and transmits the packet to the remote filter via a lossy distinct channel. For each communication channel, a time-homogeneous Markov chain is used to model the normal operating condition of packet delivery and losses. Based on the Markov model, a necessary and sufficient condition is obtained, which can guarantee the stability of the mean estimation error covariance. Especially, the stability condition is explicitly expressed as a simple inequality whose parameters are the spectral radius of the system state ma...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
This paper investigates the distributed filtering for discrete-time-invariant systems in sensor netw...
This paper studies the remote Kalman filtering problem for a distributed system setting with multipl...
This paper studies a networked state estimation problem for a spatially large linear system with a d...
This paper studies the stability of Kalman filtering over a network subject to random packet losses,...
We address the peak covariance stability of time-varying Kalman filter with possible packet losses i...
Stochastic stability for centralized Kalman filtering over a wireless sensor network with correlated...
Kalman filter is known as the optimal linear mean-squared error estimator. It has been a hot topic i...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
This paper considers a sensor network where single or multiple sensors amplify and forward their mea...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
This paper considers a sensor network where single or multiple sensors amplify and forward their me...
Abstract — We study the Kalman filtering problem when part or all of the observation measurements ar...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
This paper investigates the distributed filtering for discrete-time-invariant systems in sensor netw...
This paper studies the remote Kalman filtering problem for a distributed system setting with multipl...
This paper studies a networked state estimation problem for a spatially large linear system with a d...
This paper studies the stability of Kalman filtering over a network subject to random packet losses,...
We address the peak covariance stability of time-varying Kalman filter with possible packet losses i...
Stochastic stability for centralized Kalman filtering over a wireless sensor network with correlated...
Kalman filter is known as the optimal linear mean-squared error estimator. It has been a hot topic i...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
This paper considers a sensor network where single or multiple sensors amplify and forward their mea...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
This paper considers a sensor network where single or multiple sensors amplify and forward their me...
Abstract — We study the Kalman filtering problem when part or all of the observation measurements ar...
We consider Kalman filtering in a network with packet losses, and use a two state Markov chain to de...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
We study distributed Kalman filtering over the wireless sensor network, where each sensor node is re...
This paper investigates the distributed filtering for discrete-time-invariant systems in sensor netw...