A multi-chromosome GA (Multi-GA) was developed, based upon concepts from the natural world, allowing improved flexibility in a number of areas including representation, genetic operators, their parameter rates and real world multi-dimensional applications. A series of experiments were conducted, comparing the performance of the Multi-GA to a traditional GA on a number of recognised and increasingly complex test optimisation surfaces, with promising results. Further experiments demonstrated the Multi-GA's flexibility through the use of non-binary chromosome representations and its applicability to dynamic parameterisation. A number of alternative and new methods of dynamic parameterisation were investigated, in addition to a new non-binary '...
This paper examines the implicit maintenance of diversity within a population through the inclusion ...
Multi-chromosomes representations have been used in Genetic Algorithms to decompose complex solution...
Genetic Algorithm is an optimization technique based on a genetic model comprising string representa...
In this paper we investigate the introduction of a multiple-layer genotype-phenotype mapping to a Ge...
For more than two decades, genetic algorithms (GAs) have been studied by researchers from different ...
This paper examines the use of the biological concepts of transcription and translation, to introduc...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
For more than two decades, genetic algorithms (GAs) have been studied by researchers from different ...
The issue of which encoding scheme to use for the genetic algorithm (GA) genocode, has not received ...
In this paper we present a version of genetic algorithm GA where parameters are created by the GA, ...
By adopting a basic interpretation of the biological processes of transcription and translation, the...
A Genetic Algorithm (GA) is a form of complex system in which various structures interact via suffic...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
Abstract. The most problematic aspect in the application of a ge-netic algorithm (GA) is the coding ...
. Multi-chromosomes representations have been used in Genetic Algorithms to decompose complex soluti...
This paper examines the implicit maintenance of diversity within a population through the inclusion ...
Multi-chromosomes representations have been used in Genetic Algorithms to decompose complex solution...
Genetic Algorithm is an optimization technique based on a genetic model comprising string representa...
In this paper we investigate the introduction of a multiple-layer genotype-phenotype mapping to a Ge...
For more than two decades, genetic algorithms (GAs) have been studied by researchers from different ...
This paper examines the use of the biological concepts of transcription and translation, to introduc...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
For more than two decades, genetic algorithms (GAs) have been studied by researchers from different ...
The issue of which encoding scheme to use for the genetic algorithm (GA) genocode, has not received ...
In this paper we present a version of genetic algorithm GA where parameters are created by the GA, ...
By adopting a basic interpretation of the biological processes of transcription and translation, the...
A Genetic Algorithm (GA) is a form of complex system in which various structures interact via suffic...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
Abstract. The most problematic aspect in the application of a ge-netic algorithm (GA) is the coding ...
. Multi-chromosomes representations have been used in Genetic Algorithms to decompose complex soluti...
This paper examines the implicit maintenance of diversity within a population through the inclusion ...
Multi-chromosomes representations have been used in Genetic Algorithms to decompose complex solution...
Genetic Algorithm is an optimization technique based on a genetic model comprising string representa...