Migration of individuals allows a fruitful interaction between subpopulations in the island model, a well known distributed approach for evolutionary computing, where separate subpopulations evolve in parallel. This model is well suited for a distributed environment running a Single Program Multiple Data (SPMD) scheme. Here, the same Genetic Algorithm (GA) is replicated in many processors and attempting better convergence, through an expected improvement on genetic diversity, selected individuals are exchanged periodically. For exchanging, an individual is selected from a source subpopulation and then exported towards a target subpopulation. Usually, the imported string is accepted on arrival and then inserted into the target subpopulation....
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Parallel genetic algorithms, models and implementations, attempts to exploit the intrinsically paral...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
The migration interval is one of the fundamental parameters governing the dynamic behaviour of islan...
A major problem in the use of genetic algorithms is premature convergence, a premature stagnation o...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
This paper describes and verifies a convergence model that allows the islands in a parallel genetic ...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
Parallel genetic algorithms, models and implementations, attempts to exploit the intrinsically paral...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
Mathematica has proven itself to be a suitable platform on which to develop prototype Genetic Progr...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Parallel genetic algorithms (PGAs) have been traditionally used to extend the power of serial geneti...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
The migration interval is one of the fundamental parameters governing the dynamic behaviour of islan...
A major problem in the use of genetic algorithms is premature convergence, a premature stagnation o...
Parallelization of an evolutionary algorithm takes the advantage of modular population division and ...
This paper describes and verifies a convergence model that allows the islands in a parallel genetic ...
Evolutionary computation (EC) has been recently recognized as a research field, which studies a new ...
In this paper we develop a study on several types of parallel genetic algorithms (PGAs). Our mo-tiva...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...