Many areas in which computational optimisation may be applied are multi-objective optimisation problems; those where multiple objectives must be minimised (for minimisation problems) or maximised (for maximisation problems). Where (as is usually the case) these are competing objectives, the optimisation involves the discovery of a set of solutions the quality of which cannot be distinguished without further preference information regarding the objectives. A large body of literature exists documenting the study and application of evolutionary algorithms to multi-objective optimisation, with particular focus being given to evolutionary strategy techniques which demonstrate the ability to converge to desired solutions rapidly on many problems....
International audienceMetaheuristics for Hard Optimization comprises of three parts. The first part ...
The goal of the research out of which this monograph grew, was to make annealing as much as possible...
In the last decade some large scale combinatorial optimization problems have been tackled by way of ...
Many areas in which computational optimisation may be applied are multi-objective optimisation probl...
This thesis is available for Library use on the understanding that it is copyright material and that...
Author name used in this publication: S. L. HoAuthor name used in this publication: H. C. Wong2002-2...
Copyright © 2009 University of ExeterSimulated annealing generalises greedy or elitist search method...
As multiobjective optimization problems have many solutions, evolutionary algorithms have been widel...
Simulated annealing is a provably convergent optimiser for single-objective problems. Previously pro...
Simulated annealing is a useful heuristic for finding good solutions for difficult combinatorial opt...
Abstract—In this paper, we propose a population-based implementation of simulated annealing to tackl...
A multi-objective optimization problem can be solved by decomposing it into one or more single objec...
Abstract—In this paper a new approach is proposed for the adaptation of the simulated annealing sear...
International audienceMetaheuristics exhibit desirable properties like simplicity, easy parallelizab...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
International audienceMetaheuristics for Hard Optimization comprises of three parts. The first part ...
The goal of the research out of which this monograph grew, was to make annealing as much as possible...
In the last decade some large scale combinatorial optimization problems have been tackled by way of ...
Many areas in which computational optimisation may be applied are multi-objective optimisation probl...
This thesis is available for Library use on the understanding that it is copyright material and that...
Author name used in this publication: S. L. HoAuthor name used in this publication: H. C. Wong2002-2...
Copyright © 2009 University of ExeterSimulated annealing generalises greedy or elitist search method...
As multiobjective optimization problems have many solutions, evolutionary algorithms have been widel...
Simulated annealing is a provably convergent optimiser for single-objective problems. Previously pro...
Simulated annealing is a useful heuristic for finding good solutions for difficult combinatorial opt...
Abstract—In this paper, we propose a population-based implementation of simulated annealing to tackl...
A multi-objective optimization problem can be solved by decomposing it into one or more single objec...
Abstract—In this paper a new approach is proposed for the adaptation of the simulated annealing sear...
International audienceMetaheuristics exhibit desirable properties like simplicity, easy parallelizab...
International audienceFinding the global minimum of a nonconvex optimization problem is a notoriousl...
International audienceMetaheuristics for Hard Optimization comprises of three parts. The first part ...
The goal of the research out of which this monograph grew, was to make annealing as much as possible...
In the last decade some large scale combinatorial optimization problems have been tackled by way of ...