Networked systems comprised of multiple nodes with sensing, processing, and communication capabilities are able to provide more accurate estimates of some state of a dynamic process through communication between the network nodes. This paper considers the distributed estimation or tracking problem and focuses on a class of consensus normalized algorithms. A distributed algorithm consisting of two well-studied parts, namely, Simultaneous Perturbation Stochastic Approximation (SPSA) and the consensus approach is proposed for networked systems with uncertainties. Such combination allows us to relax the assumption regarding the strong convexity of the minimized mean-risk functional, which may not be fulfilled in the distributed optimization pro...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
International audienceIn this chapter we present a popular class of distributed algorithms, known as...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
In this paper, we study almost sure convergence of a dynamic average consensus algorithm which allow...
We consider a dynamic network of sensors that cooperate to estimate parameters of multiple targets. ...
Motivated by the design of distributed observers with good performance and robustness to measurement...
In this paper, a new algorithm for distributed multi-target tracking in a sensor network is proposed...
This paper considers consensus-seeking of networked agents in an uncertain environment where each ag...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
We address four problems related to multi-agent optimization, filtering and agreement. First, we inv...
We address the consensus-based distributed linear filtering problem, where a discrete time, linear ...
This paper studies the coordination and consensus of networked agents in an uncertain environment. W...
Abstract—This paper investigates the problem of distributed stochastic approximation in multi-agent ...
In this chapter we present a popular class of distributed algorithms, known as linear consensus algo...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
International audienceIn this chapter we present a popular class of distributed algorithms, known as...
In this paper, a distributed stochastic approximation algorithm is studied. Applications of such alg...
In this paper, we study almost sure convergence of a dynamic average consensus algorithm which allow...
We consider a dynamic network of sensors that cooperate to estimate parameters of multiple targets. ...
Motivated by the design of distributed observers with good performance and robustness to measurement...
In this paper, a new algorithm for distributed multi-target tracking in a sensor network is proposed...
This paper considers consensus-seeking of networked agents in an uncertain environment where each ag...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
We address four problems related to multi-agent optimization, filtering and agreement. First, we inv...
We address the consensus-based distributed linear filtering problem, where a discrete time, linear ...
This paper studies the coordination and consensus of networked agents in an uncertain environment. W...
Abstract—This paper investigates the problem of distributed stochastic approximation in multi-agent ...
In this chapter we present a popular class of distributed algorithms, known as linear consensus algo...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
International audienceIn this chapter we present a popular class of distributed algorithms, known as...