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An enhanced associative learning-based exploratory whale optimizer for global optimization

机译:基于增强的基于联想学习的探索性鲸鲸优化器,用于全球优化

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摘要

Whale optimization algorithm (WOA) is a recent nature-inspired metaheuristic that mimics the cooperative life of humpback whales and their spiral-shaped hunting mechanism. In this research, it is first argued that the exploitation tendency of WOA is limited and can be considered as one of the main drawbacks of this algorithm. In order to mitigate the problems of immature convergence and stagnation problems, the exploitative and exploratory capabilities of modified WOA in conjunction with a learning mechanism are improved. In this regard, the proposed WOA with associative learning approaches is combined with a recent variant of hill climbing local search to further enhance the exploitation process. The improved algorithm is then employed to tackle a wide range of numerical optimization problems. The results are compared with different well-known and novel techniques on multi-dimensional classic problems and new CEC 2017 test suite. The extensive experiments and statistical tests show the superiority of the proposed BMWOA compared to WOA and several well-established algorithms.
机译:鲸鱼优化算法(WOA)是最近的一种自然启发的成分型,模仿驼背鲸的合作寿命及其螺旋形狩猎机构。在本研究中,首先认为WOA的开发趋势是有限的,并且可以被认为是该算法的主要缺点之一。为了减轻收敛和停滞问题的问题,改善了改进的WOA与学习机制的剥削和探索性能力得到改善。在这方面,拟议的WOA与关联学习方法相结合,最近的山坡攀登本地搜索变体,以进一步提高剥削过程。然后采用改进的算法来解决广泛的数值优化问题。将结果与多维经典问题和新CEC 2017测试套件的不同众所周知和新颖的技术进行比较。与WOA和几种完整的算法相比,广泛的实验和统计测试显示了所提出的BMWOA的优越性。

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