We consider a class of convex feasibility problems where the constraints that describe the feasible set are loosely coupled. These problems arise in robust stability analysis of large, weakly interconnected systems. To facilitate distributed implementation of robust stability analysis of such systems, we propose two algorithms based on decomposition and simultaneous projections. The first algorithm is a nonlinear variant of Cimmino’s mean projection algorithm, but by taking the structure of the constraints into account, we can obtain a faster rate of convergence. The second algorithm is devised by applying the alternating direction method of multipliers to a convex minimization reformulation of the convex feasibility problem. We use numeric...
We provide a unifying framework for distributed convex optimization over time-varying networks, in t...
This paper addresses the problem of robust optimization in large-scale networks of identical process...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
We consider a class of convex feasibility problems where the constraints that describe the feasible ...
In this paper a specific class of convex feasibility problems are considered and tailored algorithms ...
This paper considers robust stability analysis of a large network of interconnected uncertain system...
In this paper, we consider robust stability analysis of large-scale sparsely interconnected uncertai...
In this paper, we consider robust stability analysis of large-scale sparsely interconnected uncertai...
This paper presents a distributed computational framework for stochastic convex optimization problem...
International audienceA suboptimal approach to distributed robust MPC for uncertain systems consisti...
In this paper we introduce an iterative distributed Jacobi algorithm for solving convex optimization...
A distributed MPC approach for linear uncertain systems sharing convex constraints is presented. The...
This paper addresses the problem of robust optimization in large-scale networks of identical process...
The performance analysis of uncertain large-scale systems is considered in this paper. It is perform...
International audienceA suboptimal approach to distributed robust MPC for uncertain systems consisti...
We provide a unifying framework for distributed convex optimization over time-varying networks, in t...
This paper addresses the problem of robust optimization in large-scale networks of identical process...
This thesis discusses different methods for robust optimization problems that are convex in the unce...
We consider a class of convex feasibility problems where the constraints that describe the feasible ...
In this paper a specific class of convex feasibility problems are considered and tailored algorithms ...
This paper considers robust stability analysis of a large network of interconnected uncertain system...
In this paper, we consider robust stability analysis of large-scale sparsely interconnected uncertai...
In this paper, we consider robust stability analysis of large-scale sparsely interconnected uncertai...
This paper presents a distributed computational framework for stochastic convex optimization problem...
International audienceA suboptimal approach to distributed robust MPC for uncertain systems consisti...
In this paper we introduce an iterative distributed Jacobi algorithm for solving convex optimization...
A distributed MPC approach for linear uncertain systems sharing convex constraints is presented. The...
This paper addresses the problem of robust optimization in large-scale networks of identical process...
The performance analysis of uncertain large-scale systems is considered in this paper. It is perform...
International audienceA suboptimal approach to distributed robust MPC for uncertain systems consisti...
We provide a unifying framework for distributed convex optimization over time-varying networks, in t...
This paper addresses the problem of robust optimization in large-scale networks of identical process...
This thesis discusses different methods for robust optimization problems that are convex in the unce...