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Sigmoidal Salp Swarm Algorithm

机译:乙状结肠蜂群算法

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The salp swarm algorithm (SSA) imitates the swarming behavior of salps while foraging in the deep ocean. This algorithm is equally good for single as well as multiobjective optimization problems. The position update process of leader salp depends on perturbation. Currently SSA used fixed value to decide perturbation that lacks diversity in solutions. In this research paper, we propose a new variant of SSA by introducing a new parameter for perturbation. The new parameter is inspired by sigmoidal decreasing function. Since it is nonlinear function; it gives improved results for complex optimization problems. The anticipated approach is named as sigmoidal salp swarm algorithm (S3A). The performance of S3A is tested over a set of fifteen benchmark problems and results proves that it improves results up to 60% in terms of mean value.
机译:蜂群算法(SSA)模仿在深海觅食时蜂群的蜂群行为。该算法同样适用于单目标优化问题和多目标优化问题。领导者的位置更新过程取决于摄动。当前,SSA使用固定值来确定解决方案缺乏多样性的扰动。在这篇研究论文中,我们通过引入新的扰动参数,提出了SSA的新变体。新参数受S形递减函数的启发。由于它是非线性函数;它为复杂的优化问题提供了改进的结果。预期的方法称为S形蜂群算法(S3A)。通过对15个基准问题的测试,S3A的性能得到了验证,结果证明它可以将结果的平均值提高多达60%。

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