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Novel grey wolf optimization based on modified differential evolution for numerical function optimization

机译:基于改进差分演进的新型灰狼优化,用于数值函数优化

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摘要

Grey wolf optimization algorithm (GWO) is a new swarm intelligence optimization algorithm proposed in recent years. Because of few control parameters and easy implementation, GWO is widely used in many fields. Compared with other common swarm optimization algorithms, it is more suitable for the global optimization problems. Nevertheless, the algorithm still has the shortcoming of low accuracy and slow convergence speed. In this paper, a novel hybrid optimization algorithm named MDE-GWO is proposed. Firstly, a JADE with opposition-based learning strategy algorithm (MDE) is embedded in GWO to enhance the ability of avoiding a local optimum. Notably, by introducing the opposition-based learning strategy, the search ability of the improved algorithm is increased greatly. Additionally, in order to balance the global and local search capabilities and speed up the convergence of the GWO algorithm, a leader moving-rate strategy is put forward. 28 typical benchmark functions are utilized to test the performance of the improved algorithm. The experimental results show that MDE-GWO has stronger advantages in search accuracy, stability and convergence speed in most cases.
机译:灰狼优化算法(GWO)是近年来提出的一种新的群体智能优化算法。由于少量控制参数和简单的实现,GWO广泛用于许多领域。与其他常见的群优化算法相比,它更适合全局优化问题。然而,该算法仍然具有低精度和慢频率速度的缺点。本文提出了一种名为MDE-GWO的新型混合优化算法。首先,嵌入在GWO中具有基于反对的学习策略算法(MDE)的玉器,以增强避免局部最佳的能力。值得注意的是,通过引入基于对立的学习策略,改进算法的搜索能力大大增加。此外,为了平衡全局和本地搜索能力并加速GWO算法的收敛,提出了领导者移动速率策略。 28典型的基准函数用于测试改进算法的性能。实验结果表明,在大多数情况下,MDE-GWO在搜索准确性,稳定性和收敛速度方面具有更强的优势。

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