We consider a sensor scheduling problem for estimating Gaussian random variables under an energy constraint. The sensors are described by a linear observation model, and the observation noise is Gaussian. We formulate this problem as a stochastic sequential decision problem. Due to the Gaussian assumption and the linear observation model, the stochastic sequential decision problem is equivalent to a deterministic one. We present a greedy algorithm for this problem, and discover conditions sufficient to guarantee the optimality of the greedy algorithm. Furthermore, we present two special cases of the original scheduling problem where the greedy algorithm is optimal under weaker conditions. We illustrate our result through numerical examples....
Abstract — Sensor scheduling has been a topic of interest to the target tracking community for some ...
In this paper we consider the problem of infinite-horizon sensor scheduling for estimation in linear...
In this paper, we present new algorithms and analysis for the linear inverse sensor placement and sc...
In this paper, we focus on activating only a few sensors, among many available, to estimate the stat...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
In this paper, we consider sensor data scheduling with communication energy constraint. A sensor has...
We investigate sensor scheduling for remote estimation when multiple smart sensors monitor multiple ...
In this paper, we consider the problem of sensor scheduling with limited resources. Two sensors are ...
We consider the problem of multiple sensor scheduling for remote state estimation of multiple proces...
This paper considers the problem of sensory data scheduling of multiple processes. There are n indep...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
Abstract — Wireless Sensor Networks (WSNs) enable a wealth of new applications where remote estimati...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
We consider sensor power scheduling for estimating the state of a general high-order Gauss-Markov sy...
Recent advancement of wireless technologies and electronics has enabled the development of low-cost ...
Abstract — Sensor scheduling has been a topic of interest to the target tracking community for some ...
In this paper we consider the problem of infinite-horizon sensor scheduling for estimation in linear...
In this paper, we present new algorithms and analysis for the linear inverse sensor placement and sc...
In this paper, we focus on activating only a few sensors, among many available, to estimate the stat...
Consider the Hidden Markov model where the realization of a sin-gle Markov chain is observed by a nu...
In this paper, we consider sensor data scheduling with communication energy constraint. A sensor has...
We investigate sensor scheduling for remote estimation when multiple smart sensors monitor multiple ...
In this paper, we consider the problem of sensor scheduling with limited resources. Two sensors are ...
We consider the problem of multiple sensor scheduling for remote state estimation of multiple proces...
This paper considers the problem of sensory data scheduling of multiple processes. There are n indep...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
Abstract — Wireless Sensor Networks (WSNs) enable a wealth of new applications where remote estimati...
In this note we consider the following problem. Suppose a set of sensors is jointly trying to estima...
We consider sensor power scheduling for estimating the state of a general high-order Gauss-Markov sy...
Recent advancement of wireless technologies and electronics has enabled the development of low-cost ...
Abstract — Sensor scheduling has been a topic of interest to the target tracking community for some ...
In this paper we consider the problem of infinite-horizon sensor scheduling for estimation in linear...
In this paper, we present new algorithms and analysis for the linear inverse sensor placement and sc...