In this paper we propose a subgradient method for solving coupled optimization problems in a distributed way given restrictions on the communication topology. The iterative procedure maintains local variables at each node and relies on local subgradient updates in combination with a consensus process. The local subgradient steps are applied simultaneously as opposed to the standard sequential or cyclic procedure. We study convergence properties of the proposed scheme using results from consensus theory and approximate subgradient methods. The framework is illustrated on an optimal distributed finite-time rendezvous problem.© 2008 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in a...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
This paper introduces a novel distributed algorithm over static directed graphs for solving big data...
In this paper we propose a subgradient method for solving coupled optimization problems in a distrib...
We address the problem of distributed unconstrained convex optimization under separability assumptio...
We propose a consensus-based distributed optimization algo-rithm for minimizing separable convex obj...
The distributed convex optimization problem is studied in this paper for any fixed and connected net...
Abstract — We study the problem of unconstrained distributed optimization in the context of multi-ag...
This paper studies the convex optimization problem with general constraints, where its global object...
Abstract: We consider the distributed unconstrained minimization of separable convex cost functions,...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We consider the distributed unconstrained minimization of separable convex cost functions, where the...
We consider a multi-agent setting with agents exchanging information over a network to solve a conve...
Abstract—We consider the problem of cooperatively minimizing the sum of convex functions, where the ...
Dual decomposition has been successfully employed in a variety of distributed convex optimization pr...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
This paper introduces a novel distributed algorithm over static directed graphs for solving big data...
In this paper we propose a subgradient method for solving coupled optimization problems in a distrib...
We address the problem of distributed unconstrained convex optimization under separability assumptio...
We propose a consensus-based distributed optimization algo-rithm for minimizing separable convex obj...
The distributed convex optimization problem is studied in this paper for any fixed and connected net...
Abstract — We study the problem of unconstrained distributed optimization in the context of multi-ag...
This paper studies the convex optimization problem with general constraints, where its global object...
Abstract: We consider the distributed unconstrained minimization of separable convex cost functions,...
We consider a general class of convex optimization problems over time-varying, multi-agent networks,...
We consider the distributed unconstrained minimization of separable convex cost functions, where the...
We consider a multi-agent setting with agents exchanging information over a network to solve a conve...
Abstract—We consider the problem of cooperatively minimizing the sum of convex functions, where the ...
Dual decomposition has been successfully employed in a variety of distributed convex optimization pr...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We consider a convex optimization problem for non-hierarchical agent networks where each agent has a...
This paper introduces a novel distributed algorithm over static directed graphs for solving big data...