高维函数优化的高效遗传算法

Qifeng Lin, W. Liu, Hongxin Peng, Yuxing Chen
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引用次数: 3

摘要

针对高维函数优化问题,提出了一种高效遗传算法(EGA)。为了生成多个不同的解并增强局部搜索能力,我们将在EGA中使用我们改进的新的子空间交叉和及时突变算子。新算子的结合使得随机化和精英解分析的整合达到了稳定性和多样化的平衡,进一步提高了高维函数情况下解的质量。在仿真中对标准遗传算法和PRPDPGA进行了比较。通过测试优化函数的基准计算研究表明,该算法能够快速得到较好的解,同时避免过早收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Genetic Algorithm for High-Dimensional Function Optimization
An Efficient Genetic Algorithm(EGA) proposed in this paper was aiming to high-dimensional function optimization. To generate multiple diverse solutions and to strengthen local search ability, the new subspace crossover and timely mutation operators improved by us will be used in EGA. The combination of the new operators allow the integration of randomization and elite solutions analysis to achieve a balance of stability and diversification to further improve the quality of solutions in the case of high-dimensional functions. Standard GA and PRPDPGA proposed already were compared in simulation. Computational studies of benchmark by testing optimization functions suggest that the proposed algorithm was able to quickly achieve good solutions while avoiding being trapped in premature convergence.
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