This work presents results on communication rate analysis for event-based state estimation schemes. An event-based estimator in the form of the Kalman filter with intermittent observations is first introduced, based on which time-varying upper and lower bounds on the expectation of the communication rate are developed. For stable systems, time-invariant upper and lower bounds are given. For sensors whose measurement values are scalars, the exact expression for the expectation of the communication rate is obtained. Numerical examples are presented to illustrate the results. It is shown that the developed results are rich enough to be generalized to recover existing results obtained for event-based minimum mean squared error estimates and est...
The methods frequently used to estimate the state of an LTI system require that the precise value of...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The problem of state estimation for a linear, time-varying, gaussian system from measurements which ...
International audienceIn this work, an event-based optimal state estimation problem for linear-time ...
This book explores event-based estimation problems. It shows how several stochastic approaches are d...
Event-based sensing and communication holds the promise of lower resource utilization and/or better ...
In this paper, the joint input and state estimation problem is considered for linear discrete-time s...
Abstract: In this paper, the state estimation problem for continuous-time linear systems with two ty...
In this paper, an event-triggered, data-rate constrained observer for discrete-time linear systems w...
To reduce the amount of data transfer in networked systems, measurements are usually taken only when...
Abstract—This paper considers a distributed estimation problem in which a sensor sporadically transm...
We consider sensor data scheduling for remote state estimation. Due to constrained communication ene...
summary:This paper is concerned with the design of event-based state estimation algorithm for nonlin...
An event-triggered control (ETC) strategy is consistent if it achieves a better closed-loop performa...
We consider sensor data scheduling for remote state estimation. Due to constrained communication ene...
The methods frequently used to estimate the state of an LTI system require that the precise value of...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The problem of state estimation for a linear, time-varying, gaussian system from measurements which ...
International audienceIn this work, an event-based optimal state estimation problem for linear-time ...
This book explores event-based estimation problems. It shows how several stochastic approaches are d...
Event-based sensing and communication holds the promise of lower resource utilization and/or better ...
In this paper, the joint input and state estimation problem is considered for linear discrete-time s...
Abstract: In this paper, the state estimation problem for continuous-time linear systems with two ty...
In this paper, an event-triggered, data-rate constrained observer for discrete-time linear systems w...
To reduce the amount of data transfer in networked systems, measurements are usually taken only when...
Abstract—This paper considers a distributed estimation problem in which a sensor sporadically transm...
We consider sensor data scheduling for remote state estimation. Due to constrained communication ene...
summary:This paper is concerned with the design of event-based state estimation algorithm for nonlin...
An event-triggered control (ETC) strategy is consistent if it achieves a better closed-loop performa...
We consider sensor data scheduling for remote state estimation. Due to constrained communication ene...
The methods frequently used to estimate the state of an LTI system require that the precise value of...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
The problem of state estimation for a linear, time-varying, gaussian system from measurements which ...