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Published:2021
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刘景森, 马义想, 李煜. Improved Butterfly Algorithm for Multi-dimensional Complex Function Optimization Problem[J]. Acta Electronica Sinica, 2021, 49(6): 1068-1076.
刘景森, 马义想, 李煜. Improved Butterfly Algorithm for Multi-dimensional Complex Function Optimization Problem[J]. Acta Electronica Sinica, 2021, 49(6): 1068-1076. DOI: 10.12263/DZXB.20200148.
针对蝴蝶优化算法存在的问题,提出一种融合差分变异策略并根据进化代数自适应调整权重的蝴蝶优化算法.首先,在全局搜索阶段引入非线性惯性权重改善蝴蝶位置更新公式,自适应调节算法在不同进化时期的搜索范围和粒度,提高算法的收敛速度与寻优精度;然后通过加入F分布全局自适应随机变异对全局公式进一步改进,提升算法的全局探索遍历性,防止出现低精度早熟现象;最后在局部搜索阶段融入具有判定系数和扰动因子的双向差分变异策略,在不减损种群多样性的同时使蝴蝶个体的探索更具方向性,有利于算法摆脱局部极值点,加快收敛速度.理论分析证明了改进算法的时间复杂度与基本蝴蝶优化算法一致,6种代表性对比算法在CEC 2017基准函数上进行的多种维度测试结果表明,改进算法在求解高维复杂函数优化问题时收敛速度和寻优精度明显优于其它对比算法,维度变化对求解性能的影响更小,寻优性能更好更稳定.
Aiming at the problem of butterfly optimization algorithm
this paper proposes a butterfly optimization algorithm which fuses the differential mutation strategy and adaptively adjusts the weight according to the evolutionary algebra. The nonlinear inertial weight is introduced in the global search stage to improve the update equation of butterfly position
the search range and granularity of the algorithm in different evolution periods are adjusted adaptively
and the convergence speed and optimization accuracy of the algorithm are improved. The global equation is further improved by adding F distribution global adaptive random mutation to improve the global search ergodicity of the algorithm
and prevent the occurrence of low precision precocious phenomenon. The bidirectional differential mutation strategy with decision coefficient and disturbance factor is integrated in the local search stage
which makes the exploration of butterfly individuals more directional without derogating the diversity of the population
which is beneficial to the algorithm to get rid of the local extremum points and speed up the convergence speed. The theoretical analysis proves that the time complexity of the improved algorithm is consistent with the basic butterfly optimization algorithm. The multi-dimensional test results of six representative contrast algorithms on benchmark functions of CEC 2017 show that the optimization accuracy and convergence speed of the improved algorithm is obviously better than those of other contrast algorithms in solving the optimization problem of high-dimensional complex functions
and the change of dimensions have less impact on the performance of the algorithm
and the optimization performance is better and more stable.
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