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用于大规模优化问题的嵌入规则的 Harris 鹰优化器。

Rules embedded harris hawks optimizer for large-scale optimization problems.

作者信息

Samma Hussein, Sama Ali Salem Bin

机构信息

School of Computing, Faculty of Engineering, Universiti Teknologi Malaysia, Johor Bahru, 81310 UTM Johor, Malaysia.

Faculty of Computer and Information Technology, University of Shabwah, Shabwah, Republic of Yemen.

出版信息

Neural Comput Appl. 2022;34(16):13599-13624. doi: 10.1007/s00521-022-07146-z. Epub 2022 Mar 31.

DOI:10.1007/s00521-022-07146-z
PMID:35378781
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8967692/
Abstract

Harris Hawks Optimizer (HHO) is a recent optimizer that was successfully applied for various real-world problems. However, working under large-scale problems requires an efficient exploration/exploitation balancing scheme that helps HHO to escape from possible local optima stagnation. To achieve this objective and boost the search efficiency of HHO, this study develops embedded rules used to make adaptive switching between exploration/exploitation based on search performances. These embedded rules were formulated based on several parameters such as population status, success rate, and the number of consumed search iterations. To verify the effectiveness of these embedded rules in improving HHO performances, a total of six standard high-dimensional functions ranging from 1000-D to 10,000-D and CEC'2010 large-scale benchmark were employed in this study. In addition, the proposed Rules Embedded Harris Hawks Optimizer (REHHO) applied for one real-world high dimensional wavelength selection problem. Conducted experiments showed that these embedded rules significantly improve HHO in terms of accuracy and convergence curve. In particular, REHHO was able to achieve superior performances against HHO in all conducted benchmark problems. Besides that, results showed that faster convergence was obtained from the embedded rules. Furthermore, REHHO was able to outperform several recent and state-of-the-art optimization algorithms.

摘要

哈里斯鹰优化算法(HHO)是一种最近提出的优化算法,已成功应用于各种实际问题。然而,在大规模问题中运行需要一种有效的探索/利用平衡策略,以帮助HHO避免陷入可能的局部最优停滞。为了实现这一目标并提高HHO的搜索效率,本研究开发了基于搜索性能在探索/利用之间进行自适应切换的嵌入式规则。这些嵌入式规则是根据种群状态、成功率和已消耗的搜索迭代次数等多个参数制定的。为了验证这些嵌入式规则对提高HHO性能的有效性,本研究总共使用了六个从1000维到10000维的标准高维函数以及CEC'2010大规模基准测试。此外,所提出的嵌入规则的哈里斯鹰优化算法(REHHO)应用于一个实际的高维波长选择问题。进行的实验表明,这些嵌入式规则在准确性和收敛曲线上显著提高了HHO。特别是,在所有进行的基准测试问题中,REHHO相对于HHO都能够实现卓越的性能。除此之外,结果表明嵌入式规则实现了更快的收敛。此外,REHHO能够超越几种近期的和最先进的优化算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc1f/8967692/82cecf2e8266/521_2022_7146_Fig15_HTML.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc1f/8967692/c27845e80cf8/521_2022_7146_Fig10_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc1f/8967692/e764be2e9acc/521_2022_7146_Fig11_HTML.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bc1f/8967692/82cecf2e8266/521_2022_7146_Fig15_HTML.jpg

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