多策略改进海鸥优化算法

IF 2.9 4区 计算机科学
Yancang Li, Weizhi Li, Qiuyu Yuan, Huawang Shi, Muxuan Han
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引用次数: 0

摘要

摘要针对海鸥优化算法在寻优过程中收敛速度慢、精度低、易陷入局部最优、性能依赖于参数选择等缺点,在分析海鸥种群特征的基础上,提出了一种基于多策略融合的改进海鸥优化算法。首先,采用L-C级联混沌映射对种群进行初始化,使海鸥在初始解空间中分布更均匀;其次,为了提高算法早期的全局搜索能力,引入非线性收敛因子对海鸥在迁徙阶段的位置进行调整;同时,在种群位置更新后引入群体学习策略,进一步提高种群质量和优化精度。最后,在算法后期,利用Levy飞行制导机制的金正弦策略更新种群位置,提高种群的多样性,增强算法后期的局部发展能力。为了验证改进算法的优化性能,选择CEC2017和CEC2022测试套件进行仿真实验,并绘制箱形图。实验结果表明,该算法具有明显的收敛速度、精度和稳定性优势。工程实例结果表明,该算法在解决具有未知搜索空间的复杂问题方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-strategy Improved Seagull Optimization Algorithm
Abstract Aiming at the shortcomings of seagull optimization algorithm in the process of searching for optimization, such as slow convergence speed, low precision, easy falling into local optimal, and performance dependent on the selection of parameters, this paper proposes an improved gull optimization algorithm based on multi-strategy fusion based on the analysis of gull population characteristics. Firstly, L–C cascade chaotic mapping is used to initialize the population so that seagulls are more evenly distributed in the initial solution space. Secondly, to improve the algorithm’s global exploration ability in the early stage, the nonlinear convergence factor is incorporated to adjust the position of seagulls in the migration stage. At the same time, the group learning strategy was introduced after the population position update to improve the population quality and optimization accuracy further. Finally, in the late stage of the algorithm, the golden sine strategy of the Levy flight guidance mechanism is used to update the population position to improve the population’s diversity and enhance the local development ability of the algorithm in the late stage. To verify the optimization performance of the improved algorithm, CEC2017 and CEC2022 test suites are selected for simulation experiments, and box graphs are drawn. The test results show that the proposed algorithm has apparent convergence speed, accuracy, and stability advantages. The engineering case results demonstrate the proposed algorithm’s advantages in solving complex problems with unknown search spaces.
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来源期刊
International Journal of Computational Intelligence Systems
International Journal of Computational Intelligence Systems 工程技术-计算机:跨学科应用
自引率
3.40%
发文量
94
期刊介绍: The International Journal of Computational Intelligence Systems publishes original research on all aspects of applied computational intelligence, especially targeting papers demonstrating the use of techniques and methods originating from computational intelligence theory. The core theories of computational intelligence are fuzzy logic, neural networks, evolutionary computation and probabilistic reasoning. The journal publishes only articles related to the use of computational intelligence and broadly covers the following topics: -Autonomous reasoning- Bio-informatics- Cloud computing- Condition monitoring- Data science- Data mining- Data visualization- Decision support systems- Fault diagnosis- Intelligent information retrieval- Human-machine interaction and interfaces- Image processing- Internet and networks- Noise analysis- Pattern recognition- Prediction systems- Power (nuclear) safety systems- Process and system control- Real-time systems- Risk analysis and safety-related issues- Robotics- Signal and image processing- IoT and smart environments- Systems integration- System control- System modelling and optimization- Telecommunications- Time series prediction- Warning systems- Virtual reality- Web intelligence- Deep learning
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