Genetic algorithms are commonly used to solve combinatorial optimizationproblems. The implementation evolves using genetic operators (crossover, mutation,selection, etc.). Anyway, genetic algorithms like some other methods have parameters(population size, probabilities of crossover and mutation) which need to be tune orchosen.In this paper, our project is based on an existing hybrid genetic algorithmworking on the multiprocessor scheduling problem. We propose a hybrid Fuzzy-Genetic Algorithm (FLGA) approach to solve the multiprocessor scheduling problem.The algorithm consists in adding a fuzzy logic controller to control and tunedynamically different parameters (probabilities of crossover and mutation), in anattempt to improve the algorithm...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
Several researchers have proposed methods about combination of Genetic Algorithm (GA) and Fuzzy Logi...
Evolutionary algorithms, and genetic algorithms in particular, are generally time consuming when loo...
Genetic algorithms are commonly used to solve combinatorial optimizationproblems. The implementation...
The performance of a genetic algorithm is dependent on the genetic operators, in general, and on the...
In this paper, dynamic programming for sequencing weighted jobs on a single machine to minimizing to...
A new multiobjective dynamic fuzzy genetic algorithm is applied to solve a fuzzy mixed-model assembl...
The main purpose of using the hybrid evolutionary algorithm is to reach optimal values and achieve g...
This paper presents the use of genetic algorithms to develop smartly tuned fuzzy logic controllers i...
The main purpose of using the hybrid evolutionary algorithm is to reach optimal values and achieve g...
The Genetic Algorithms (GAs) have been very successful in handling optimization problems which are d...
Multiprocessors have evolved as powerful computing tools for executing dynamic real time tasks. The ...
This thesis describes the use of the genetic algorithm to facilitate the design process of a fuzzy l...
The current trend in manufacturing technology is considered by two main items automation andflexibil...
International audienceThis paper proposes a new method to design a fuzzy logic controller by genetic...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
Several researchers have proposed methods about combination of Genetic Algorithm (GA) and Fuzzy Logi...
Evolutionary algorithms, and genetic algorithms in particular, are generally time consuming when loo...
Genetic algorithms are commonly used to solve combinatorial optimizationproblems. The implementation...
The performance of a genetic algorithm is dependent on the genetic operators, in general, and on the...
In this paper, dynamic programming for sequencing weighted jobs on a single machine to minimizing to...
A new multiobjective dynamic fuzzy genetic algorithm is applied to solve a fuzzy mixed-model assembl...
The main purpose of using the hybrid evolutionary algorithm is to reach optimal values and achieve g...
This paper presents the use of genetic algorithms to develop smartly tuned fuzzy logic controllers i...
The main purpose of using the hybrid evolutionary algorithm is to reach optimal values and achieve g...
The Genetic Algorithms (GAs) have been very successful in handling optimization problems which are d...
Multiprocessors have evolved as powerful computing tools for executing dynamic real time tasks. The ...
This thesis describes the use of the genetic algorithm to facilitate the design process of a fuzzy l...
The current trend in manufacturing technology is considered by two main items automation andflexibil...
International audienceThis paper proposes a new method to design a fuzzy logic controller by genetic...
Genetic algorithms were intensively investigated in various modifications and in combinations with o...
Several researchers have proposed methods about combination of Genetic Algorithm (GA) and Fuzzy Logi...
Evolutionary algorithms, and genetic algorithms in particular, are generally time consuming when loo...