A lot of real-life problems lead frequently to the solution of a complicated (large scale, multicriteria, unstable, nonsmooth etc.) nonlinear optimization problem. In order to cope with large scale problems and to develop many optimum plans a hiearchical approach to problem solving may be useful. The idea of hierarchical decision making is to reduce the overall complex problem into smaller and simpler approximate problems (subproblems) which may thereupon treated independently. One way to break a problem into smaller subproblems is the use of decomposition-coordination schemes. For finding proper values for coordination parameters in convex programming some rapidly convergent iterative methods are developed, their convergence properties and...
Large scale optimization problems are tractable only if they are somehow decomposed. Hierarchical de...
A method is proposed for decomposing large optimization problems encountered in the design of engine...
This paper gives a proof of convergence of a decomposition algorithm for solution of an optimization...
A lot of real-life problems lead frequently to the solution of a complicated (large scale, multicrit...
Many optimization problems in economics are of the multiobjective type and highdimensional. Pos-sibi...
Many real‐life optimization problems are of the multiobjective type and highdimensional. Possibiliti...
Abstract: Convergence study is given, defining the prerequisites for the implementation of the non-...
Decomposition of large engineering design prob-lems into smaller design subproblems enhances robust-...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76760/1/AIAA-1998-4795-679.pd
We consider the optimization problems which may be solved by the direct decomposition method. It is ...
Some geometric properties of the solution set for nonlinear and multicriteria programming problems a...
Multidisciplinary design optimization (MDO) gives rise to nonlinear optimization problems characteri...
Multidisciplinary design optimization (MDO) gives rise to nonlinear optimization problems characteri...
Two techniques for formulating the coupling between levels in multilevel optimization by linear deco...
Decomposition of multidisciplinary engineering system design problems into smaller subproblems is de...
Large scale optimization problems are tractable only if they are somehow decomposed. Hierarchical de...
A method is proposed for decomposing large optimization problems encountered in the design of engine...
This paper gives a proof of convergence of a decomposition algorithm for solution of an optimization...
A lot of real-life problems lead frequently to the solution of a complicated (large scale, multicrit...
Many optimization problems in economics are of the multiobjective type and highdimensional. Pos-sibi...
Many real‐life optimization problems are of the multiobjective type and highdimensional. Possibiliti...
Abstract: Convergence study is given, defining the prerequisites for the implementation of the non-...
Decomposition of large engineering design prob-lems into smaller design subproblems enhances robust-...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/76760/1/AIAA-1998-4795-679.pd
We consider the optimization problems which may be solved by the direct decomposition method. It is ...
Some geometric properties of the solution set for nonlinear and multicriteria programming problems a...
Multidisciplinary design optimization (MDO) gives rise to nonlinear optimization problems characteri...
Multidisciplinary design optimization (MDO) gives rise to nonlinear optimization problems characteri...
Two techniques for formulating the coupling between levels in multilevel optimization by linear deco...
Decomposition of multidisciplinary engineering system design problems into smaller subproblems is de...
Large scale optimization problems are tractable only if they are somehow decomposed. Hierarchical de...
A method is proposed for decomposing large optimization problems encountered in the design of engine...
This paper gives a proof of convergence of a decomposition algorithm for solution of an optimization...