[[abstract]]Permutation property has been recognized as a common but challenging feature in combinatorial problems. Because of their complexity, recent research has turned to genetic algorithms to address such problems. Although genetic algorithms have been proven to facilitate the entire space search, they lack in fine-tuning capability for obtaining the global optimum. Therefore, in this study a hybrid genetic algorithm was developed by integrating both the evolutional and the neighborhood search for permutation optimization.Experimental results of a production scheduling problem indicate that the hybrid genetic algorithm outperforms the other methods, in particular for larger problems. Numerical evidence also shows that different input d...
Genetic algorithms (GAs) have proved to be a versatile and effective approach for solving combinator...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
In this paper, a genetic algorithm that produces an approximate set of all non-dominated solutions i...
The permutation flowshop scheduling problem (PFSP) is an important issue in the manufacturing indust...
In this paper, a HGA (hybrid genetic algorithm) is proposed for permutation flowshop scheduling prob...
Discrete optimization methods are applied in time-dependent systems where there are problems of prod...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
In this paper, permutation flow shop scheduling problems (PFSS) are investigated with a genetic algo...
International audiencePopulation heuristics present native abilities for solving optimization proble...
The genetic algorithm (GA) paradigm has attracted considerable attention as a promising heuristic ap...
Abstract — This paper considers a hybrid metaheuristic for the Permutation flow shop Schedulin...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This paper explores university course timetabling problem. There are several characteristics that ma...
Scheduling is considered as an important topic in production management and combinatorial optimizati...
Genetic algorithms (GAs) have proved to be a versatile and effective approach for solving combinator...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
In this paper, a genetic algorithm that produces an approximate set of all non-dominated solutions i...
The permutation flowshop scheduling problem (PFSP) is an important issue in the manufacturing indust...
In this paper, a HGA (hybrid genetic algorithm) is proposed for permutation flowshop scheduling prob...
Discrete optimization methods are applied in time-dependent systems where there are problems of prod...
The choice of a search algorithm can play a vital role in the success of a scheduling application. E...
In this paper, permutation flow shop scheduling problems (PFSS) are investigated with a genetic algo...
International audiencePopulation heuristics present native abilities for solving optimization proble...
The genetic algorithm (GA) paradigm has attracted considerable attention as a promising heuristic ap...
Abstract — This paper considers a hybrid metaheuristic for the Permutation flow shop Schedulin...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This paper explores university course timetabling problem. There are several characteristics that ma...
Scheduling is considered as an important topic in production management and combinatorial optimizati...
Genetic algorithms (GAs) have proved to be a versatile and effective approach for solving combinator...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
In this paper, a genetic algorithm that produces an approximate set of all non-dominated solutions i...