A set of N independent Gaussian linear time invariant systems is observed by M sensors whose task is to provide the best possible steady-state causal minimum mean square estimate of the state of the systems, in addition to minimizing a steady-state measurement cost. The sensors can switch between systems instantaneously, and there are additional resource constraints, for example on the number of sensors which can observe a given system simultaneously. We first derive a tractable relaxation of the problem, which provides a bound on the achievable performance. This bound can be computed by solving a convex program involving linear matrix inequalities. Exploiting the additional structure of the sites evolving independently, we can decompose th...
This paper considers the problem of sensory data scheduling of multiple processes. There are n indep...
Effective sensor scheduling requires the consideration of long-term effects and thus optimization ov...
International audienceThis paper investigates an adaptation of the Kalman filter for linear continuo...
Abstract — A set of N independent Gaussian linear time invariant systems is observed by M sensors wh...
Abstract—A set of N independent Gaussian linear time-invariant systems is observed by M sensors whos...
In this paper, we consider Kalman filtering over a network and construct the optimal sensor data sch...
In this paper, we consider Kalman filtering over a network and construct the optimal sensor data sch...
Consider a set of sensors estimating the state of a process in which only one of these sensors can o...
Abstract—Consider a set of sensors estimating the state of a process in which only one of these sens...
The problem of optimal periodic scheduling of single channel measures for the state estimation of a ...
In this paper we consider the problem of infinite-horizon sensor scheduling for estimation in linear...
Abstract — This paper studies the infinite-horizon sensor scheduling problem for linear Gaussian pro...
This paper proposes an estimation framework under scheduled measurements for linear discrete-time st...
The optimal filtering problem for systems subject to both the discrete and continuous measurements i...
We consider scheduling two Gauss-Markov systems. Two sensors, each measuring the state of one of the...
This paper considers the problem of sensory data scheduling of multiple processes. There are n indep...
Effective sensor scheduling requires the consideration of long-term effects and thus optimization ov...
International audienceThis paper investigates an adaptation of the Kalman filter for linear continuo...
Abstract — A set of N independent Gaussian linear time invariant systems is observed by M sensors wh...
Abstract—A set of N independent Gaussian linear time-invariant systems is observed by M sensors whos...
In this paper, we consider Kalman filtering over a network and construct the optimal sensor data sch...
In this paper, we consider Kalman filtering over a network and construct the optimal sensor data sch...
Consider a set of sensors estimating the state of a process in which only one of these sensors can o...
Abstract—Consider a set of sensors estimating the state of a process in which only one of these sens...
The problem of optimal periodic scheduling of single channel measures for the state estimation of a ...
In this paper we consider the problem of infinite-horizon sensor scheduling for estimation in linear...
Abstract — This paper studies the infinite-horizon sensor scheduling problem for linear Gaussian pro...
This paper proposes an estimation framework under scheduled measurements for linear discrete-time st...
The optimal filtering problem for systems subject to both the discrete and continuous measurements i...
We consider scheduling two Gauss-Markov systems. Two sensors, each measuring the state of one of the...
This paper considers the problem of sensory data scheduling of multiple processes. There are n indep...
Effective sensor scheduling requires the consideration of long-term effects and thus optimization ov...
International audienceThis paper investigates an adaptation of the Kalman filter for linear continuo...