We study finite-time performance of a recently proposed distributed dual subgradient (DDSG) method for convex constrained multi-agent optimization problems. The algorithm enjoys performance guarantees on the last primal iterate, as opposed to those derived for ergodic means for vanilla DDSG algorithms. Our work improves the recently published convergence rate of $\Ocal(\log T/\sqrt{T})$ with decaying step-sizes to $\Ocal(1/\sqrt{T})$ with constant step-size on a metric that combines suboptimality and constraint violation. We then numerically evaluate the algorithm on three grid optimization problems. Namely, these are tie-line scheduling in multi-area power systems, coordination of distributed energy resources in radial distribution network...
In order to operate a distribution grid efficiently, the optimal operation of electric power distrib...
Optimal power flow (OPF) is an important problem for power generation and it is in general non-conve...
The modern power grid is undergoing unprecedented levels of transformations due to the rising preval...
International audienceThis article introduces a distributed convex optimization algorithm in a const...
In this paper we consider a distributed optimiza- tion scenario in which a set of processors aims at...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
In this paper, we consider a general challenging distributed optimization setup arising in several i...
There has been considerable recent interest in optimization methods associated with a multi-agent ne...
We consider a generic decentralized constrained optimization problem over static, directed communica...
Mathematical optimization techniques are among the most successful tools for controlling technical s...
The increasing penetrations of distributed energy resources (DERs) at the power distribution level a...
This thesis explores a particular class of distributed optimization methods for various separable re...
Distributed optimization methods have been extensively applied for the optimization of electric powe...
This chapter presents a distributed optimization method named sequential distributed consensus-based...
In order to operate a distribution grid efficiently, the optimal operation of electric power distrib...
Optimal power flow (OPF) is an important problem for power generation and it is in general non-conve...
The modern power grid is undergoing unprecedented levels of transformations due to the rising preval...
International audienceThis article introduces a distributed convex optimization algorithm in a const...
In this paper we consider a distributed optimiza- tion scenario in which a set of processors aims at...
This dissertation studies first a distributed algorithm to solve general convex optimizationproblems...
We address constraint-coupled optimization for a system composed of multiple cooperative agents comm...
In this paper, we consider a general challenging distributed optimization setup arising in several i...
There has been considerable recent interest in optimization methods associated with a multi-agent ne...
We consider a generic decentralized constrained optimization problem over static, directed communica...
Mathematical optimization techniques are among the most successful tools for controlling technical s...
The increasing penetrations of distributed energy resources (DERs) at the power distribution level a...
This thesis explores a particular class of distributed optimization methods for various separable re...
Distributed optimization methods have been extensively applied for the optimization of electric powe...
This chapter presents a distributed optimization method named sequential distributed consensus-based...
In order to operate a distribution grid efficiently, the optimal operation of electric power distrib...
Optimal power flow (OPF) is an important problem for power generation and it is in general non-conve...
The modern power grid is undergoing unprecedented levels of transformations due to the rising preval...