Many problems in multiagent networks can be solved through distributed learning (state estimation) of linear dynamical systems. In this paper, we develop a partial-diffusion Kalman filtering (PDKF) algorithm, as a fully distributed solution for state estimation in the multiagent networks with limited communication resources. In the PDKF algorithm, every agent (node) is allowed to share only a subset of its intermediate estimate vectors with its neighbors at each iteration, reducing the amount of internode communications. We analyze the stability of the PDKF algorithm and show that the algorithm is stable and convergent in both mean and mean-square senses. We also derive a closed-form expression for the steady-state mean-square deviation cri...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
The state-of-the-art algorithms for Kalman filtering in agent networks with information diffusion im...
This paper studies a distributed state estimation problem for both continuous- and discrete-time lin...
The performance of partial diffusion Kalman filtering (PDKF) algorithm for the networks with noisy l...
Increasing the energy efficiency of an Internet of Things (IoT) system is a major challenge for its ...
Adaptive estimation of optimal combination weights for partial-diffusion Kalman filtering together w...
The Distributed Diffusion Kalman Filter (DDKF) algorithm in all its magnitude has earned great atten...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
Following recent advances in networked communication technologies, sensor networks have been employe...
This paper is concerned with distributed Kalman filtering for linear time-varying systems over multi...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
Cataloged from PDF version of article.We introduce novel diffusion based adaptive estimation strate...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
We study distributed estimation of dynamic random fields observed by a sparsely connected network of...
In this paper, we consider the problem of estimating the state of a dynamical system from distribute...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
The state-of-the-art algorithms for Kalman filtering in agent networks with information diffusion im...
This paper studies a distributed state estimation problem for both continuous- and discrete-time lin...
The performance of partial diffusion Kalman filtering (PDKF) algorithm for the networks with noisy l...
Increasing the energy efficiency of an Internet of Things (IoT) system is a major challenge for its ...
Adaptive estimation of optimal combination weights for partial-diffusion Kalman filtering together w...
The Distributed Diffusion Kalman Filter (DDKF) algorithm in all its magnitude has earned great atten...
We introduce novel diffusion based adaptive estimation strategies for distributed networks that have...
Following recent advances in networked communication technologies, sensor networks have been employe...
This paper is concerned with distributed Kalman filtering for linear time-varying systems over multi...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
Cataloged from PDF version of article.We introduce novel diffusion based adaptive estimation strate...
This dissertation is aimed at developing optimal and distributed state estimation algorithms for a t...
We study distributed estimation of dynamic random fields observed by a sparsely connected network of...
In this paper, we consider the problem of estimating the state of a dynamical system from distribute...
This letter presents a fully distributed approach for tracking state vector sequences over sensor ne...
The state-of-the-art algorithms for Kalman filtering in agent networks with information diffusion im...
This paper studies a distributed state estimation problem for both continuous- and discrete-time lin...