A quantum-behaved particle swarm optimization algorithm with the flexible single-/multi-population strategy and multi-stage perturbation strategy based on the characteristics of objective function

被引:0
|
作者
Yunhua Guo
Nian-Zhong Chen
Junmin Mou
Ben Zhang
机构
[1] Ministry of Education,Key Laboratory of High Performance Ship Technology (Wuhan University of Technology)
[2] Wuhan University of Technology,School of Energy and Power Engineering
[3] Tianjin University,School of Civil Engineering
[4] Wuhan University of Technology,School of Navigation
来源
Soft Computing | 2020年 / 24卷
关键词
Quantum-behaved particle swarm; Characteristics of function; Single-/multi-population; Multi-stage perturbation;
D O I
暂无
中图分类号
学科分类号
摘要
The characteristics of objective functions have important impacts on the search process of the optimization algorithm. Many multimodal functions tend to make the algorithm fall into local optima, and the local search accuracy is usually affected by the coupling of the objective functions in different dimensions. A novel quantum-behaved particle swarm optimization algorithm with the flexible single-/multi-population strategy and the multi-stage perturbation strategy (QPSO_FM) is proposed in the present paper. This algorithm aims to adjust the optimization strategies based on the characteristics of the objective functions. The number of sub-populations is determined by the monotonicity variations of the objective functions, and two mechanisms are introduced to balance the diversity and the convergent speed for the multi-population case. The strategy of multi-stage perturbation is applied to enhance the search ability. At the first stage, the main target of the perturbation is to broaden the search range. The second stage applies the univariate perturbation (relying on the coupling degree of the objective function) to raise the local search accuracy. Performance comparisons between the proposed and existing algorithms are carried out through the experiments on the standard functions. The results show that the proposed algorithm can generally provide excellent global search ability and high local search accuracy.
引用
收藏
页码:6909 / 6956
页数:47
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