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Modified Harris Hawks Optimization Algorithm with Exploration Factor and Random Walk Strategy

机译:基于探索因子和随机游走策略的改进Harris Hawks优化算法

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摘要

One of the most popular population-based metaheuristic algorithms is Harris hawks optimization (HHO), which imitates the hunting mechanisms of Harris hawks in nature. Although HHO can obtain optimal solutions for specific problems, it stagnates in local optima solutions. In this paper, an improved Harris hawks optimization named ERHHO is proposed for solving global optimization problems. Firstly, we introduce tent chaotic map in the initialization stage to improve the diversity of the initialization population. Secondly, an exploration factor is proposed to optimize parameters for improving the ability of exploration. Finally, a random walk strategy is proposed to enhance the exploitation capability of HHO further and help search agent jump out the local optimal. Results from systematic experiments conducted on 23 benchmark functions and the CEC2017 test functions demonstrated that the proposed method can provide a more reliable solution than other well-known algorithms.
机译:最流行的基于种群的元启发式算法之一是哈里斯鹰优化 (HHO),它模仿自然界中哈里斯鹰的狩猎机制。尽管HHO可以针对特定问题获得最优解,但它在局部最优解中停滞不前。该文提出了一种改进的Harris hawks优化方法ERHHO,用于求解全局优化问题。首先,在初始化阶段引入帐篷混沌图,提高初始化种群的多样性;其次,提出勘探因子优化参数,提高勘探能力;最后,提出一种随机游走策略,以进一步增强HHO的利用能力,帮助搜索智能体跳出局部最优。对23个基准函数和CEC2017测试函数进行的系统实验结果表明,与其他知名算法相比,所提方法可以提供更可靠的解决方案。

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