A multi-agent system is divided into groups forming sub-populations of agents. These groups of agents are evolving simultaneously with the aim of searching for all the local extrema of a given function with complex landscape. Mathematically, this multi-agent system is represented by a multi-population genetic algorithm (MPGA). Each population contains a set of agents that are binary coded chromosomes undergoing evolution with mutation and crossover. A migration operator is used to control the exchange of chromosomes between different populations. Since the location of the extrema for the given function f is defined by the condition of vanishing first derivative, we define the fitness of a chromosome as a monotonically decreasing function of...
International audienceGraph‐theoretic approaches have relevant applications in landscape genetic ana...
This chapter proposes a new approach, wherein multiple populations are evolved on different landscap...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
A set of multi-population genetic algorithm (MPGA) operators, including mutation, crossover, and mig...
A histogram assisted adjustment of fitness distribution in standard genetic algorithm is introduced ...
In nature, living organisms can be viewed as the product of their genotype-phenotype mapping (GP-map...
A formalism is presented for modelling the evolutionary dynamics of a population of gene sequences. ...
In this paper we investigate the introduction of a multiple-layer genotype-phenotype mapping to a Ge...
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes...
The ability of organisms to evolve and adapt to the environment has provided mother nature with a ri...
International audienceThis paper considers a new method that enables a genetic algorithm (GA) to ide...
This paper proposes a new approach, wherein multiple populations are evolved on different landscape...
This paper examines the implicit maintenance of diversity within a population through the inclusion ...
By adopting a basic interpretation of the biological processes of transcription and translation, the...
International audienceGraph‐theoretic approaches have relevant applications in landscape genetic ana...
This chapter proposes a new approach, wherein multiple populations are evolved on different landscap...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
A set of multi-population genetic algorithm (MPGA) operators, including mutation, crossover, and mig...
A histogram assisted adjustment of fitness distribution in standard genetic algorithm is introduced ...
In nature, living organisms can be viewed as the product of their genotype-phenotype mapping (GP-map...
A formalism is presented for modelling the evolutionary dynamics of a population of gene sequences. ...
In this paper we investigate the introduction of a multiple-layer genotype-phenotype mapping to a Ge...
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes...
The ability of organisms to evolve and adapt to the environment has provided mother nature with a ri...
International audienceThis paper considers a new method that enables a genetic algorithm (GA) to ide...
This paper proposes a new approach, wherein multiple populations are evolved on different landscape...
This paper examines the implicit maintenance of diversity within a population through the inclusion ...
By adopting a basic interpretation of the biological processes of transcription and translation, the...
International audienceGraph‐theoretic approaches have relevant applications in landscape genetic ana...
This chapter proposes a new approach, wherein multiple populations are evolved on different landscap...
Premature convergence in the process of genetic algorithm (GA) for searching solution is frequently ...