International audienceWe address a classical identification problem that consists in estimating a vector of constant unknown parameters from a given linear input/output relationship. The proposed method relies on a network of gradient-descent-based estimators, each of which exploits only a portion of the input-output data. A key feature of the method is that the input-output signals are hybrid, so they may evolve in continuous time (i.e., they may flow), or they may change at isolated time instances (i.e., they may jump). The estimators are interconnected over a weakly-connected directed graph, so the alternation of flows and jumps combined with the distributed character of the algorithm introduce a rich behavior that is impossible to obtai...
In this paper we study a distributed optimization problem for continuous time multi-agent systems. I...
We introduce a diffusion-based algorithm in which multiple agents cooperate to predict a common and ...
This work shows how to develop distributed versions of block blind estimation techniques that have b...
International audienceWe address a classical identification problem that consists in estimating a ve...
International audienceGiven a linear input/output relationship involving unknown parameters, we prop...
Classical schemes in system identification and adaptive control often rely on persistence of excitat...
Estimating the unknown parameters of a system is critical in many engineering applications, such as ...
Submitted to IEEE Trans. Automat. ControlWe propose a framework of stability analysis for a class of...
An adaptive distributed estimation strategy is developed based on incremental gradient techniques. T...
This paper considers the problem of distributed adaptive linear parameter estimation in multiagent i...
Abstract. The paper considers the problem of distributed adaptive linear parameter estimation in mul...
In this paper, we first address the uniformly exponential stability (UES) problem of a group of dist...
We provide an overview of adaptive estimation algorithms over distributed networks. The algorithms ...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
In this study, the authors address the problem of composite cooperative state estimation and system ...
In this paper we study a distributed optimization problem for continuous time multi-agent systems. I...
We introduce a diffusion-based algorithm in which multiple agents cooperate to predict a common and ...
This work shows how to develop distributed versions of block blind estimation techniques that have b...
International audienceWe address a classical identification problem that consists in estimating a ve...
International audienceGiven a linear input/output relationship involving unknown parameters, we prop...
Classical schemes in system identification and adaptive control often rely on persistence of excitat...
Estimating the unknown parameters of a system is critical in many engineering applications, such as ...
Submitted to IEEE Trans. Automat. ControlWe propose a framework of stability analysis for a class of...
An adaptive distributed estimation strategy is developed based on incremental gradient techniques. T...
This paper considers the problem of distributed adaptive linear parameter estimation in multiagent i...
Abstract. The paper considers the problem of distributed adaptive linear parameter estimation in mul...
In this paper, we first address the uniformly exponential stability (UES) problem of a group of dist...
We provide an overview of adaptive estimation algorithms over distributed networks. The algorithms ...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
In this study, the authors address the problem of composite cooperative state estimation and system ...
In this paper we study a distributed optimization problem for continuous time multi-agent systems. I...
We introduce a diffusion-based algorithm in which multiple agents cooperate to predict a common and ...
This work shows how to develop distributed versions of block blind estimation techniques that have b...