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融合互利共生和透镜成像学习的HHO算法
引用本文:陈功,曾国辉,黄勃,刘瑾.融合互利共生和透镜成像学习的HHO算法[J].计算机工程与应用,2022,58(10):76-86.
作者姓名:陈功  曾国辉  黄勃  刘瑾
作者单位:上海工程技术大学 电子电气工程学院,上海 201620
摘    要:针对哈里斯鹰优化算法收敛速度慢、易陷入局部最优的问题,提出一种融合互利共生和透镜成像学习的哈里斯鹰优化算法(improved Harris hawks optimization,IHHO).利用Tent混沌映射初始化种群,增加种群多样性,提高算法寻优性能;在探索阶段融入一种互利共生思想,并引入非线性惯性因子,以增强种群...

关 键 词:哈里斯鹰优化算法  Tent混沌映射  互利共生  透镜成像  反向学习  图像分割

HHO Algorithm Combining Mutualism and Lens Imaging Learning
CHEN Gong,ZENG Guohui,HUANG Bo,LIU Jin.HHO Algorithm Combining Mutualism and Lens Imaging Learning[J].Computer Engineering and Applications,2022,58(10):76-86.
Authors:CHEN Gong  ZENG Guohui  HUANG Bo  LIU Jin
Affiliation:School of Electronic and Electrical Engineering, Shanghai University of Engineering Science, Shanghai 201620, China
Abstract:Aiming at the problem that Harris hawks optimization algorithm converges slowly and is prone to local optimization, this paper proposes an improved Harris hawks optimization algorithm(IHHO) which combines mutually beneficial symbiosis and lens imaging learning. Firstly, the algorithm uses Tent chaotic map to initialize the population to increase the diversity of the population and improve the optimization performance of the algorithm. Secondly, in the exploration stage, the algorithm integrates the idea of mutually beneficial symbiosis and nonlinear inertia factor to enhance the exchange of population information and accelerate the convergence speed. Then, the algorithm uses lens imaging reverse learning strategy to perturb and mutate the Harris hawks position with a certain probability to improve the ability of the algorithm to jump out of the local optimum. Finally, the simulation results of 16 benchmark test functions show that IHHO has faster convergence speed, higher precision and stronger robustness compared with the other five algorithms. At the same time, IHHO is applied to the problem of image segmentation, and the simulation results verify the feasibility of the algorithm in practical engineering applications.
Keywords:Harris hawks optimization  Tent chaotic map  mutually beneficial symbiosis  lens imaging  opposition-based learning  image segmentation  
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