We return to the geometry optimization problem of Lennard-Jones clusters to analyze the performance dependence of 'cut and splice' genetic algorithms (GAs) on the employed population size. We generally find that admixing twinning mutation moves leads to an improved robustness of the algorithm efficiency with respect to this a priori unknown technical parameter. The resulting very stable performance of the corresponding mutation + mating GA implementation over a wide range of population sizes is an important feature when addressing unknown systems with computationally involved first-principles based GA sampling
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
The k-means problem is one of the most popular models of cluster analysis. The problem is NP-hard, a...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
We return to the geometry optimization problem of Lennard-Jones clusters to analyze the performance ...
We return to the geometry optimization problem of Lennard-Jones clusters to analyze the performance ...
Certain aspects of the methodology of genetic algorithms for global structural optimization of clust...
An improved genetic algorithm (GA) is described that has been developed to increase the efficiency o...
This dissertation documents the development and application of the space-fixed modified genetic algo...
This dissertation documents the development and application of the space-fixed modified genetic algo...
this paper, based on the generalized tight-binding molecular dynamics, we apply the GA to study the ...
This dissertation documents the development and application of the space-fixed modified genetic algo...
Evolutionary computation techniques (in particular, genetic algorithms) have been applied to optimiz...
Coordenação de Aperfeiçoamento de Pessoal de Nível SuperiorIn this work we present a proposal to imp...
Nanoclusters are small clumps of atoms of one or several materials. A cluster possesses a unique set...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
The k-means problem is one of the most popular models of cluster analysis. The problem is NP-hard, a...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
We return to the geometry optimization problem of Lennard-Jones clusters to analyze the performance ...
We return to the geometry optimization problem of Lennard-Jones clusters to analyze the performance ...
Certain aspects of the methodology of genetic algorithms for global structural optimization of clust...
An improved genetic algorithm (GA) is described that has been developed to increase the efficiency o...
This dissertation documents the development and application of the space-fixed modified genetic algo...
This dissertation documents the development and application of the space-fixed modified genetic algo...
this paper, based on the generalized tight-binding molecular dynamics, we apply the GA to study the ...
This dissertation documents the development and application of the space-fixed modified genetic algo...
Evolutionary computation techniques (in particular, genetic algorithms) have been applied to optimiz...
Coordenação de Aperfeiçoamento de Pessoal de Nível SuperiorIn this work we present a proposal to imp...
Nanoclusters are small clumps of atoms of one or several materials. A cluster possesses a unique set...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...
The k-means problem is one of the most popular models of cluster analysis. The problem is NP-hard, a...
Whilst technological advancements have allowed imaging at atomic resolution using scanning transmiss...