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A novel bio-inspired optimization model based on Yellow Saddle Goatfish behavior

机译:基于黄色马鞍山羊皮行为的新型生物启发优化模型

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摘要

Several species of fish live in groups to increase their foraging efficiency and reproduction rates. Such groups are considered self-organized since they can adopt different cooperative actions without the presence of an apparent leader. One of their most interesting collaborative behaviors found in fish is the hunting strategy presented by the Yellow Saddle Goatfish (Parupeneus cyclostomus). In this strategy, the complete group of fish is distributed in subpopulations to cover the whole hunting region. In each sub-population, all fish participate collectively in the hunt considering two different roles: chaser and blocker. In the hunt, a chaser fish actively tries to find the prey in a certain area whereas a blocker fish moves spatially to avoid the escape of the prey. In this paper, we develop the hunting model of Yellow Saddle Goatfish, which at some abstraction level can be characterized as a search strategy for optimization proposes. In the approach, different computational operators are designed in order to emulate this peculiar hunting behavior. With the use of this biological model, the new search strategy improves the optimization results in terms of accuracy and convergence in comparison to other popular optimization techniques. The performance of this method is tested by analyzing its results with other related evolutionary computation techniques. Several standard benchmark functions commonly used in the literature were considered to obtain optimization results. Furthermore, the proposed model is applied to solve certain engineering optimization problems. Analysis of the experimental results exhibits the efficiency, accuracy, and robustness of the proposed algorithm.
机译:几种鱼类生活在一起,以提高他们的觅食效率和复制率。这些群体被认为是自组织的,因为他们可以在没有明显领导者的情况下采取不同的合作行动。在鱼类中发现的他们最有趣的合作行为之一是由黄色马鞍鸡肉(Parupenescrcastomus)提出的狩猎策略。在这一策略中,完整的鱼类分布在群体中以覆盖整个狩猎区域。在每个子人口中,所有鱼都在寻找两种不同的角色中共同参与:追逐者和阻拦。在狩猎中,追逐鱼积极尝试在某个区域找到猎物,而一条阻挡者在空间上移动以避免猎物的逃避。在本文中,我们开发了黄色鞍山山的狩猎模型,在一些抽象级别可以被称为优化提出的搜索策略。在该方法中,设计了不同的计算运营商,以便模拟这种特殊的狩猎行为。随着这种生物学模型的使用,与其他流行的优化技术相比,新的搜索策略在准确性和收敛方面提高了优化结果。通过使用其他相关的进化计算技术分析其结果来测试该方法的性能。常用于文献中常用的若干标准基准功能被认为是获得优化结果。此外,所提出的模型用于解决某些工程优化问题。实验结果的分析表现出所提出的算法的效率,准确性和鲁棒性。

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