Global geometry optimization of silicon clusters described by three empirical potentials
نویسندگان
چکیده
منابع مشابه
Genetic Algorithms in Application to the Geometry Optimization of Nanoparticles
Applications of genetic algorithms to the global geometry optimization problem of nanoparticles are reviewed. Genetic operations are investigated and importance of phenotype genetic operations, considering the geometry of nanoparticles, are mentioned. Other efficiency improving developments such as floating point representation and local relaxation are described broadly. Parallelization issues ...
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