This paper presents a classification of formulations for distributed system optimization based on formulation structure. Two main classes are identified: nested formulations and alternating formulations. Nested formulations are bilevel programming problems where optimization subproblems are nested in the functions of a coordinating master problem. Alternating formulations iterate between solving a master problem and disciplinary subproblems in a sequential scheme. Methods included in the former class are collaborative optimization and BLISS2000. The latter class includes concurrent subspace optimization, analytical target cascading, and augmented Lagrangian coordination. Although the distinction between nested and alternating formulations h...
This paper reports about research projects of the University of Paderborn in the field of distribute...
We address general optimization problems formulated on networks. Each node in the network has a func...
Abstract — We propose a distributed optimization method for solving a distributed model predictive c...
This paper presents a classification of formulations for distributed system optimization based on fo...
A classification of methods for distributed system optimization based on formulation structur
Distributed optimization is a very important concept with applications in control theory and many re...
In this paper we present a parallel algorithm for the solution of discrete optimization problems, wh...
Coordination plays a key role in solving decomposed optimal design problems. Several coordination st...
Bilevel problem formulations have received considerable attention as an approach to multidisciplinar...
Historical evolution of engineering disciplines and the complexity of the MDO problem suggest that d...
A coevolutionary architecture for distributed optimization of complex coupled systems is presented. ...
In the distributed optimization problem for a multi-agent system, each agent knows a local function ...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
Collaborative optimization is a design architecture applicable in any multidisciplinary analysis env...
Multidisciplinary optimization (MDO) problems are a specific class of concurrent engineering problem...
This paper reports about research projects of the University of Paderborn in the field of distribute...
We address general optimization problems formulated on networks. Each node in the network has a func...
Abstract — We propose a distributed optimization method for solving a distributed model predictive c...
This paper presents a classification of formulations for distributed system optimization based on fo...
A classification of methods for distributed system optimization based on formulation structur
Distributed optimization is a very important concept with applications in control theory and many re...
In this paper we present a parallel algorithm for the solution of discrete optimization problems, wh...
Coordination plays a key role in solving decomposed optimal design problems. Several coordination st...
Bilevel problem formulations have received considerable attention as an approach to multidisciplinar...
Historical evolution of engineering disciplines and the complexity of the MDO problem suggest that d...
A coevolutionary architecture for distributed optimization of complex coupled systems is presented. ...
In the distributed optimization problem for a multi-agent system, each agent knows a local function ...
In this paper we investigate how standard nonlinear programming algorithms can be used to solve cons...
Collaborative optimization is a design architecture applicable in any multidisciplinary analysis env...
Multidisciplinary optimization (MDO) problems are a specific class of concurrent engineering problem...
This paper reports about research projects of the University of Paderborn in the field of distribute...
We address general optimization problems formulated on networks. Each node in the network has a func...
Abstract — We propose a distributed optimization method for solving a distributed model predictive c...