A fast annealing evolutionary algorithm for global optimization |
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Authors: | Cai Wensheng Shao Xueguang |
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Affiliation: | Department of Applied Chemistry, University of Science and Technology of China, Hefei, Anhui, 230026, People's Republic of China. wscai@ustc.edu.cn |
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Abstract: | By combining the aspect of population in genetic algorithms (GAs) and the simulated annealing algorithm (SAA), a novel algorithm, called fast annealing evolutionary algorithm (FAEA), is proposed. The algorithm is similar to the annealing evolutionary algorithm (AEA), and a very fast annealing technique is adopted for the annealing procedure. By an application of the algorithm to the optimization of test functions and a comparison of the algorithm with other stochastic optimization methods, it is shown that the algorithm is a highly efficient optimization method. It was also applied in optimization of Lennard-Jones clusters and compared with other methods in this study. The results indicate that the algorithm is a good tool for the energy minimization problem. |
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Keywords: | annealing evolutionary algorithm global optimization Lennard–Jones clusters |
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