This paper focuses on a networked state estimation problem for a spatially large linear system with a distributed array of sensors, each of which offers partial state measurements, and the transmission is lossy. We propose a measurement coding scheme with two goals. Firstly, it permits adjusting the communication requirements by controlling the dimension of the vector transmitted by each sensor to the central estimator. Secondly, for a given communication requirement, the scheme is optimal, within the family of linear causal coders, in the sense that the weakest channel condition is required to guarantee the stability of the estimator. For this coding scheme, we derive the minimum mean-square error (MMSE) state estimator, and state a necess...
AbstractThis paper addresses a decentralized robust set-valued state estimation problem for a class ...
This paper considers state estimation of scalar linear systems using analog amplify and forwarding w...
Abstract—Technological advances have made wireless sensors cheap and reliable enough to be brought i...
This paper studies a networked state estimation problem for a spatially large linear system with a d...
We consider remote state estimation of a scalar stationary linear Gauss-Markov process observed via ...
This paper studies the state estimation problem for a stochastic discrete-time system over a lossy c...
We consider remote state estimation of a scalar stationary linear Gauss-Markov process observed via ...
Kalman filter is known as the optimal linear mean-squared error estimator. It has been a hot topic i...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
This paper studies the state estimation problem of a stochastic discrete-time system over a lossy ch...
We consider the problem of linear minimum mean square error estimation for a discrete-time system ov...
In this paper, we consider optimal linear sensor fusion for obtaining a remote state estimate of a l...
This paper investigates state estimation of linear time-invariant systems where the sensors and cont...
This paper investigates state estimation of linear time-invariant systems where the sensors and cont...
In a typical sensor network scenario a goal is to monitor a spatio-temporal process through a number...
AbstractThis paper addresses a decentralized robust set-valued state estimation problem for a class ...
This paper considers state estimation of scalar linear systems using analog amplify and forwarding w...
Abstract—Technological advances have made wireless sensors cheap and reliable enough to be brought i...
This paper studies a networked state estimation problem for a spatially large linear system with a d...
We consider remote state estimation of a scalar stationary linear Gauss-Markov process observed via ...
This paper studies the state estimation problem for a stochastic discrete-time system over a lossy c...
We consider remote state estimation of a scalar stationary linear Gauss-Markov process observed via ...
Kalman filter is known as the optimal linear mean-squared error estimator. It has been a hot topic i...
This paper presents distributed bounded-error parameter and state estimation algorithms suited to me...
This paper studies the state estimation problem of a stochastic discrete-time system over a lossy ch...
We consider the problem of linear minimum mean square error estimation for a discrete-time system ov...
In this paper, we consider optimal linear sensor fusion for obtaining a remote state estimate of a l...
This paper investigates state estimation of linear time-invariant systems where the sensors and cont...
This paper investigates state estimation of linear time-invariant systems where the sensors and cont...
In a typical sensor network scenario a goal is to monitor a spatio-temporal process through a number...
AbstractThis paper addresses a decentralized robust set-valued state estimation problem for a class ...
This paper considers state estimation of scalar linear systems using analog amplify and forwarding w...
Abstract—Technological advances have made wireless sensors cheap and reliable enough to be brought i...