In this paper we propose a novel Augmented Lagrangian Tracking distributed optimization algorithm for solving multi-agent optimization problems where each agent has its own decision variables, cost function and constraint set, and the goal is to minimize the sum of the agents' cost functions subject to local constraints plus some additional coupling constraint involving the decision variables of all the agents. In contrast to alternative approaches available in the literature, the proposed algorithm jointly features a constant penalty parameter, the ability to cope with unbounded local constraint sets, and the ability to handle both affine equality and nonlinear inequality coupling constraints, while requiring convexity only. The effectiven...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
We develop a decentralized algorithm for multiagent, convex optimization programs, subject to separa...
In this paper we deal with decision-coupled problems involving multiple agents over a network. Each ...
In this paper we propose a novel Augmented Lagrangian Tracking distributed optimization algorithm fo...
We propose a distributed solution for a constrained convex optimization problem over a network of cl...
In this paper we consider a distributed optimization scenario in which a set of agents has to solve ...
Distributed and parallel algorithms have been frequently investigated in the recent years, in partic...
We consider constraint-coupled optimization problems in which agents of a network aim to cooperative...
In this paper, we propose a novel distributed algorithm to address constraint-coupled optimization p...
In this paper we introduce two discrete-time, distributed optimization algorithms executed by a set ...
We study distributed optimization in a cooperative multi-agent setting, where agents have to agree o...
International audienceThis article introduces a distributed convex optimization algorithm in a const...
In this work, a distributed multi-agent optimization problem is studied where different subsets of a...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
We develop a decentralized algorithm for multiagent, convex optimization programs, subject to separa...
In this paper we deal with decision-coupled problems involving multiple agents over a network. Each ...
In this paper we propose a novel Augmented Lagrangian Tracking distributed optimization algorithm fo...
We propose a distributed solution for a constrained convex optimization problem over a network of cl...
In this paper we consider a distributed optimization scenario in which a set of agents has to solve ...
Distributed and parallel algorithms have been frequently investigated in the recent years, in partic...
We consider constraint-coupled optimization problems in which agents of a network aim to cooperative...
In this paper, we propose a novel distributed algorithm to address constraint-coupled optimization p...
In this paper we introduce two discrete-time, distributed optimization algorithms executed by a set ...
We study distributed optimization in a cooperative multi-agent setting, where agents have to agree o...
International audienceThis article introduces a distributed convex optimization algorithm in a const...
In this work, a distributed multi-agent optimization problem is studied where different subsets of a...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
We develop a decentralized algorithm for multiagent, convex optimization programs, subject to separa...
In this paper we deal with decision-coupled problems involving multiple agents over a network. Each ...