In this paper, we study the distributed fusion estimation problem for linear time-varying systems and nonlinear systems with bounded noises, where the addressed noises do not provide any statistical information, and are unknown but bounded. When considering linear time-varying fusion systems with bounded noises, a new local Kalman-like estimator is designed such that the square error of the estimator is bounded as time goes to ∞. A novel constructive method is proposed to find an upper bound of fusion estimation error, then a convex optimization problem on the design of an optimal weighting fusion criterion is established in terms of linear matrix inequalities, which can be solved by standard software packages. Furthermore, according to the...
Abstract — Distributed linear estimation theory has received increased attention in recent years due...
A minimax estimation fusion in distributed multisensor systems is proposed, which aims to minimize t...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
This paper shows that a general multisensor unbiased linearly weighted estimation fusion essentially...
Data availability: Data will be made available on request.In this paper, the distributed fusion esti...
In this paper, the optimal distributed Kalman filtering fusion with linear equality constraint (LEC)...
This paper studies the fusion estimation problem of a class of multisensor multirate systems with ob...
This paper studies the event-triggered distributed fusion estimation problems for a class of nonline...
This paper proposed a mini-max fusion strategy in distributed multi-sensor system, which aims to min...
This paper is concerned with the performance of distributed and centralized fusion with best linear ...
WeA05 Plumeria 2 - Estimation Problems I (Regular Session): no. WeA05.3The fusion estimation is inve...
Distributed implementations of state estimation algorithms generally have in common that each node i...
This paper deals with data (or information) fusion for the purpose of estimation. Three estimation f...
In this paper, we consider the problem of estimating the state of a dynamical system from distribute...
Abstract—The distributed processing of measurements and the subsequent data fusion is called Track-t...
Abstract — Distributed linear estimation theory has received increased attention in recent years due...
A minimax estimation fusion in distributed multisensor systems is proposed, which aims to minimize t...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...
This paper shows that a general multisensor unbiased linearly weighted estimation fusion essentially...
Data availability: Data will be made available on request.In this paper, the distributed fusion esti...
In this paper, the optimal distributed Kalman filtering fusion with linear equality constraint (LEC)...
This paper studies the fusion estimation problem of a class of multisensor multirate systems with ob...
This paper studies the event-triggered distributed fusion estimation problems for a class of nonline...
This paper proposed a mini-max fusion strategy in distributed multi-sensor system, which aims to min...
This paper is concerned with the performance of distributed and centralized fusion with best linear ...
WeA05 Plumeria 2 - Estimation Problems I (Regular Session): no. WeA05.3The fusion estimation is inve...
Distributed implementations of state estimation algorithms generally have in common that each node i...
This paper deals with data (or information) fusion for the purpose of estimation. Three estimation f...
In this paper, we consider the problem of estimating the state of a dynamical system from distribute...
Abstract—The distributed processing of measurements and the subsequent data fusion is called Track-t...
Abstract — Distributed linear estimation theory has received increased attention in recent years due...
A minimax estimation fusion in distributed multisensor systems is proposed, which aims to minimize t...
For multisensor data fusion, distributed state estimation techniques that enable a local processing ...