Evolutionary algorithms alone cannot solve optimization problems very efficiently since there are many random (not very rational) decisions in these algorithms. Combination of evolutionary algorithms and other techniques have been proven to be an efficient optimization methodology. In this talk, I will explain the basic ideas of our three algorithms along this line (1): Orthogonal genetic algorithm which treats crossover/mutation as an experimental design problem, (2) Multiobjective evolutionary algorithm based on decomposition (MOEA/D) which uses decomposition techniques from traditional mathematical programming in multiobjective optimization evolutionary algorithm, and (3) Regular model based multiobjective estimation of distribut...
Abstract: Evolutionary multi-objective optimization (EMO), whose main task is to deal with multi-ob...
Optimisation is a challenge for computerized multidisciplinary design. With multidisciplinary design...
Abstract—This letter suggests an approach for decomposing a multiobjective optimization problem (MOP...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
Real-world has many optimization scenarios with multiple constraints and objective functions that ar...
We are very pleased to introduce this special issue on multiobjective evolutionary optimization for ...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
Multi-objective optimization problems deal with multiple conflicting objectives. In principle, they ...
Evolutionary multiobjective optimization Multiobjective evolutionary algorithms Multicriteria decisi...
The idea behind genetic algorithms is to extract optimization strategies nature uses successfully - ...
Over the past few years, the research on evolutionary algorithms has demonstrated their niche in sol...
In the talk, various issues of the design and application of multiobjective evolutionary algorithms ...
. A parallel two-level evolutionary algorithm which evolves genetic algorithms of maximum convergenc...
A multi-objective optimization problem (MOP) is often found in real-world optimization problem. Amon...
Abstract: Evolutionary multi-objective optimization (EMO), whose main task is to deal with multi-ob...
Optimisation is a challenge for computerized multidisciplinary design. With multidisciplinary design...
Abstract—This letter suggests an approach for decomposing a multiobjective optimization problem (MOP...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
Practical optimization problems often have multiple objectives, which are likely to conflict with ea...
Real-world has many optimization scenarios with multiple constraints and objective functions that ar...
We are very pleased to introduce this special issue on multiobjective evolutionary optimization for ...
The emergence of different metaheuristics and their new variants in recent years has made the defini...
Multi-objective optimization problems deal with multiple conflicting objectives. In principle, they ...
Evolutionary multiobjective optimization Multiobjective evolutionary algorithms Multicriteria decisi...
The idea behind genetic algorithms is to extract optimization strategies nature uses successfully - ...
Over the past few years, the research on evolutionary algorithms has demonstrated their niche in sol...
In the talk, various issues of the design and application of multiobjective evolutionary algorithms ...
. A parallel two-level evolutionary algorithm which evolves genetic algorithms of maximum convergenc...
A multi-objective optimization problem (MOP) is often found in real-world optimization problem. Amon...
Abstract: Evolutionary multi-objective optimization (EMO), whose main task is to deal with multi-ob...
Optimisation is a challenge for computerized multidisciplinary design. With multidisciplinary design...
Abstract—This letter suggests an approach for decomposing a multiobjective optimization problem (MOP...