Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.

To address the limitations of the Zebra Optimization Algorithm (ZOA), including insufficient late-stage optimization search capability, susceptibility to local optima, slow convergence, and inadequate exploration, this paper proposes an enhanced Zebra Optimization Algorithm integrating opposition-ba...

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Main Authors: Tengfei Ma, Guangda Lu, Zhuanping Qin, Tinghang Guo, Zheng Li, Changli Zhao
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0329504
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author Tengfei Ma
Guangda Lu
Zhuanping Qin
Tinghang Guo
Zheng Li
Changli Zhao
author_facet Tengfei Ma
Guangda Lu
Zhuanping Qin
Tinghang Guo
Zheng Li
Changli Zhao
author_sort Tengfei Ma
collection DOAJ
description To address the limitations of the Zebra Optimization Algorithm (ZOA), including insufficient late-stage optimization search capability, susceptibility to local optima, slow convergence, and inadequate exploration, this paper proposes an enhanced Zebra Optimization Algorithm integrating opposition-based learning and a dynamic elite-pooling strategy (OP-ZOA: Opposition-Based Learning Dynamic Elite-Pooling Zebra Optimization Algorithm). he proposed search algorithm employs a good point set-elite opposition-based learning mechanism to initialize the population, enhancing diversity and facilitating escape from local optima. Additionally, a real-time information synchronization mechanism is incorporated into the position update process, enabling the exchange of position and state information between the optimal individual (Xbest) and the vigilante agent (Xworse). This eliminates information silos, thereby improving global search capability and convergence speed. Furthermore, a dynamic elite-pooling strategy is introduced, incorporating three distinct fitness factors. The optimal individual's position is updated by randomly selecting from these factors, enhancing the algorithm's ability to attain the global optimum and increasing its overall robustness. During experimental evaluation, the efficiency of OP-ZOA was verified using the CEC2017 test functions, demonstrating superior performance compared to seven recently proposed meta-heuristic algorithms (Bloodsucking Leech Algorithm (BSLO), Parrot Optimization Algorithm (PO), Polar Lights Algorithm (PLO), Red-tailed Hawk Optimization Algorithm (RTH), Bitterling Fish Optimization Algorithm (BFO), Spider Wasp Optimization Algorithm (SWO) and Zebra Optimization Algorithm (ZOA)). Finally, OP-ZOA exhibits distinct advantages in optimizing the APF (artificial potential field) method to address local optimum convergence issues. Specifically, it achieves faster iteration speeds across four different environments, with the planned path length after escaping local optima being shortened by an average of 7.55175 m (16.291%) compared to other optimization algorithms. These results confirm OP-ZOA's enhanced optimization capability, significantly improving both escape efficiency from local optima and solution reliability.
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institution Kabale University
issn 1932-6203
language English
publishDate 2025-01-01
publisher Public Library of Science (PLoS)
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spelling doaj-art-9d1c61ecd666416b8765ab8ea129c4c22025-08-20T03:59:35ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01208e032950410.1371/journal.pone.0329504Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.Tengfei MaGuangda LuZhuanping QinTinghang GuoZheng LiChangli ZhaoTo address the limitations of the Zebra Optimization Algorithm (ZOA), including insufficient late-stage optimization search capability, susceptibility to local optima, slow convergence, and inadequate exploration, this paper proposes an enhanced Zebra Optimization Algorithm integrating opposition-based learning and a dynamic elite-pooling strategy (OP-ZOA: Opposition-Based Learning Dynamic Elite-Pooling Zebra Optimization Algorithm). he proposed search algorithm employs a good point set-elite opposition-based learning mechanism to initialize the population, enhancing diversity and facilitating escape from local optima. Additionally, a real-time information synchronization mechanism is incorporated into the position update process, enabling the exchange of position and state information between the optimal individual (Xbest) and the vigilante agent (Xworse). This eliminates information silos, thereby improving global search capability and convergence speed. Furthermore, a dynamic elite-pooling strategy is introduced, incorporating three distinct fitness factors. The optimal individual's position is updated by randomly selecting from these factors, enhancing the algorithm's ability to attain the global optimum and increasing its overall robustness. During experimental evaluation, the efficiency of OP-ZOA was verified using the CEC2017 test functions, demonstrating superior performance compared to seven recently proposed meta-heuristic algorithms (Bloodsucking Leech Algorithm (BSLO), Parrot Optimization Algorithm (PO), Polar Lights Algorithm (PLO), Red-tailed Hawk Optimization Algorithm (RTH), Bitterling Fish Optimization Algorithm (BFO), Spider Wasp Optimization Algorithm (SWO) and Zebra Optimization Algorithm (ZOA)). Finally, OP-ZOA exhibits distinct advantages in optimizing the APF (artificial potential field) method to address local optimum convergence issues. Specifically, it achieves faster iteration speeds across four different environments, with the planned path length after escaping local optima being shortened by an average of 7.55175 m (16.291%) compared to other optimization algorithms. These results confirm OP-ZOA's enhanced optimization capability, significantly improving both escape efficiency from local optima and solution reliability.https://doi.org/10.1371/journal.pone.0329504
spellingShingle Tengfei Ma
Guangda Lu
Zhuanping Qin
Tinghang Guo
Zheng Li
Changli Zhao
Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
PLoS ONE
title Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
title_full Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
title_fullStr Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
title_full_unstemmed Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
title_short Zebra optimization algorithm incorporating opposition-based learning and dynamic elite-pooling strategies and its applications.
title_sort zebra optimization algorithm incorporating opposition based learning and dynamic elite pooling strategies and its applications
url https://doi.org/10.1371/journal.pone.0329504
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