This thesis studies the problem of recursive distributed state estimation over unreliable networks. The main contribution is to fuse the independent and dependent information separately. Local estimators communicate directly only with their immediate neighbors and nothing is assumed about the structure of the communication network, specifically it need not be connected at all times. The proposed estimator is a Hybrid one that fuses independent and dependent (or correlated) information using a distributed averaging and iterative conservative fusion rule respectively. It will be discussed how the hybrid method can improve estimators's performance and make it robust to network failures. The content of the thesis is divided in two main parts. ...
summary:This paper considers a distributed state estimation problem for multi-agent systems under st...
In this thesis several topics on consensus and gossip algorithms for multi-agent systems are address...
We study distributed estimation of dynamic random fields observed by a sparsely connected network of...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
Many modern fusion architectures are designed to process and fuse data in networked systems. Alongsi...
Following recent advances in networked communication technologies, sensor networks have been employe...
This work was performed while N. Ghasemi was a visiting scholar at the University of Maryland, Colle...
We present the Bayesian consensus filter (BCF) for tracking a moving target using a networked group ...
summary:This paper is concerned with the distributed filtering problem for nonlinear time-varying sy...
This paper deals with a distributed state estimation problem for jointly observable multi-agent syst...
This article proposes a distributed estimation algorithm that uses local information about the neigh...
It is shown that the covariance intersection fusion rule, widely used in the context of distributed ...
State estimation techniques for centralized, distributed, and decentralized systems are studied. An ...
This paper describes the distributed information filtering where a set of sensor networks are requir...
In this paper we investigate how stability and optimality of consensus-based distributed filters dep...
summary:This paper considers a distributed state estimation problem for multi-agent systems under st...
In this thesis several topics on consensus and gossip algorithms for multi-agent systems are address...
We study distributed estimation of dynamic random fields observed by a sparsely connected network of...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
Many modern fusion architectures are designed to process and fuse data in networked systems. Alongsi...
Following recent advances in networked communication technologies, sensor networks have been employe...
This work was performed while N. Ghasemi was a visiting scholar at the University of Maryland, Colle...
We present the Bayesian consensus filter (BCF) for tracking a moving target using a networked group ...
summary:This paper is concerned with the distributed filtering problem for nonlinear time-varying sy...
This paper deals with a distributed state estimation problem for jointly observable multi-agent syst...
This article proposes a distributed estimation algorithm that uses local information about the neigh...
It is shown that the covariance intersection fusion rule, widely used in the context of distributed ...
State estimation techniques for centralized, distributed, and decentralized systems are studied. An ...
This paper describes the distributed information filtering where a set of sensor networks are requir...
In this paper we investigate how stability and optimality of consensus-based distributed filters dep...
summary:This paper considers a distributed state estimation problem for multi-agent systems under st...
In this thesis several topics on consensus and gossip algorithms for multi-agent systems are address...
We study distributed estimation of dynamic random fields observed by a sparsely connected network of...