J4 ›› 2016, Vol. 38 ›› Issue (06): 1171-1176.
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DU Xiaoxin,ZHANG Jianfei,GUO Yuan,JIN Mei
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Abstract:
The fruit fly optimization algorithm (FOA) is easy to fall into local extremum and has slow convergence speed. To overcome these problems, combining the advantages of Cauchy mutation and Gaussian mutation, we propose the concepts of mutation effectiveness coefficient and CauchyGaussian dynamic reduction mutation factor and a fruit fly optimization algorithm with CauchyGaussian dynamic reduction mutation (FOACGDRM) as well, which takes into account of both the global exploration character and the local exploitation character, and which is applied to improve the FOA. The FOACGDRM can enrich population diversity, effectively avoid local extremum and enhance the convergence speed. Simulation experiments on classic function instances and practical engineering instances verify the FOACGDRM, which show that the FOACGDRM is better in precision speed and stability.
Key words: fruit fly optimization;Cauchy mutation;Gaussian mutation;dynamic reduction mutation;mutation effectiveness coefficient;dynamic reduction mutation factor
DU Xiaoxin,ZHANG Jianfei,GUO Yuan,JIN Mei. A fruit fly optimization algorithm with CauchyGaussian dynamic reduction mutation[J]. J4, 2016, 38(06): 1171-1176.
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http://joces.nudt.edu.cn/EN/Y2016/V38/I06/1171