Improved sparrow search algorithm with multi-strategy integration and its application

被引:0
|
作者
Fu H. [1 ]
Liu H. [1 ]
机构
[1] Faculty of Electrical and Control Engineering, Liaoning Technical University, Huludao
来源
Kongzhi yu Juece/Control and Decision | 2021年 / 37卷 / 01期
关键词
Coal and gas outburst; Identification of risk; Intelligent optimization algorithm; Multi-strategy integration; Sparrow search algorithm;
D O I
10.13195/j.kzyjc.2021.0582
中图分类号
学科分类号
摘要
Aiming at the shortcomings of the sparrow search algorithm, such as falling into local optimum easily and slow convergence speed, an improved sparrow search algorithm based on multi-strategy fusion is proposed. The elite chaotic reverse learning strategy is used to generate the initial population, which enhances the quality of the initial individuals and the diversity of the population, and realizes the exploration of more high-quality search areas to improve the local extremum escape ability and convergence performance of the algorithm. Combined with the random following strategy of the chicken swarm algorithm, the position updating process of the followers in the sparrow search algorithm is optimized, and the local development performance and global search ability of the algorithm are balanced. The Cauchy-Gauss mutation strategy is used to improve the ability of maintaining population diversity and resisting stagnation. Ten benchmark test functions with different characteristics are optimizated. The test results and Wilcoxon's signed rank test results both show that the improved algorithm has better optimization accuracy, convergence performance and stability. Finally, the improved algorithm is used to optimize the parameters of the least square support vector machine and is applied to the identification of coal and gas outburst risk. The effectiveness of the improved strategy and the superiority of the improved algorithm are further verified by comparetive experiments. © 2022, Editorial Office of Control and Decision. All right reserved.
引用
收藏
页码:87 / 96
页数:9
相关论文
共 22 条
  • [11] Mao Q H, Zhang Q., Improved sparrow algorithm combining cauchy mutation and opposition-based learning, Journal of Frontiers of Computer Science and Technology, 15, 6, pp. 1155-1164, (2021)
  • [12] Yuan J H, Zhao Z W, Liu Y P, Et al., DMPPT control of photovoltaic microgrid based on improved sparrow search algorithm, IEEE Access, 9, pp. 16623-16629, (2021)
  • [13] Zhang D M, Chen Z Y, Xin Z Y, Et al., Salp swarm algorithm based on craziness and adaptive, Control and Decision, 35, 9, pp. 2112-2120, (2020)
  • [14] Long W, Wu T B, Tang M Z, Et al., Grey wolf optimizer algorithm based on lens imaging learning strategy, Acta Automatica Sinica, 46, 10, pp. 2148-2164, (2020)
  • [15] Osamy W, El-Sawy A A, Salim A., CSOCA: Chicken swarm optimization based clustering algorithm for wireless sensor networks, IEEE Access, 8, pp. 60676-60688, (2020)
  • [16] Wang W C, Xu L, Chau K W, Et al., Yin-Yang firefly algorithm based on dimensionally Cauchy mutation, Expert Systems With Applications, 150, (2020)
  • [17] Liu J S, Yuan M M, Zuo F., Global search-oriented adaptive leader salp swarm algorithm, Control and Decision, 36, 9, pp. 2152-2160, (2021)
  • [18] Qian X Y, Fang W., Opposition-based learning competitive particle swarm optimizer with local search, Control and Decision, 36, 4, pp. 779-789, (2021)
  • [19] Gu Q H, Li X X, Lu C W, Et al., Hybrid genetic grey wolf algorithm for high dimensional complex function optimization, Control and Decision, 35, 5, pp. 1191-1198, (2020)
  • [20] He Q, Lin J, Xu H., Hybrid Cauchy mutation and uniform distribution of grasshopper optimization algorithm, Control and Decision, 36, 7, pp. 1558-1568, (2021)