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Krill herd: A new bio-inspired optimization algorithm

机译:磷虾群:一种新的受生物启发的优化算法

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摘要

In this paper, a novel biologically-inspired algorithm, namely krill herd (KH) is proposed for solving optimization tasks. The KH algorithm is based on the simulation of the herding behavior of krill individuals. The minimum distances of each individual krill from food and from highest density of the herd are considered as the objective function for the krill movement. The time-dependent position of the krill individuals is formulated by three main factors: (ⅰ) movement induced by the presence of other individuals (ⅱ) foraging activ ity, and (ⅲ) random diffusion. For more precise modeling of the krill behavior, two adap tive genetic operators are added to the algorithm. The proposed method is verified using several benchmark problems commonly used in the area of optimization. Further, the KH algorithm is compared with eight well-known methods in the literature. The KH algo rithm is capable of efficiently solving a wide range of benchmark optimization problems and outperforms the exciting algorithms.
机译:在本文中,提出了一种新颖的生物启发算法,即磷虾群(KH),用于解决优化任务。 KH算法基于磷虾个体放牧行为的模拟。每个磷虾与食物之间的最小距离以及与牛群的最高密度之间的最小距离被视为磷虾运动的目标函数。磷虾个体随时间的位置由三个主要因素决定:(ⅰ)其他个体的存在引起的运动(ⅱ)觅食活动,以及(ⅲ)随机扩散。为了对磷虾行为进行更精确的建模,向该算法添加了两个自适应遗传算子。通过在优化领域中常用的几个基准问题验证了所提出的方法。此外,将KH算法与文献中的八种众所周知的方法进行了比较。 KH算法能够有效解决各种基准优化问题,并且性能优于令人兴奋的算法。

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