一种混合鲸鱼优化和粒子群优化算法

Zijing Yuan, Jiayi Li, Haichuan Yang, Baohang Zhang
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引用次数: 1

摘要

在优化算法领域,混合算法因其在提高算法性能方面的有效性而越来越受到研究者的重视。近年来,人们提出了一种新的自然元启发式算法——鲸鱼优化算法。该算法以自然界中的鲸鱼为对象,模拟它们三种不同的进食方式来解决现实的优化问题。另一方面,粒子群算法是模仿鸟群传递信息的方式提出的一种算法。作为种群智能算法,这两种算法在收敛过程中的精度都不够高。同时,它们也倾向于陷入局部最优。本文提出了一种基于鲸鱼优化算法和粒子群算法的混合算法,通过一种选择迭代来更新种群。实验结果表明,该算法在收敛精度和收敛速度上具有优异的优越性。
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A Hybrid Whale Optimization and Particle Swarm Optimization Algorithm
In the field of optimization algorithms, hybrid algorithms are increasingly valued by researchers for their effectiveness in improving algorithmic capabilities.In recent years, a new type of natural meta-heuristic algorithm called whale optimization algorithm has been proposed. The algorithm refers to whales in nature and imitates their three different feeding methods to solve realistic optimization problems. The particle swarm algorithm, on the other hand, is an algorithm proposed by imitating the way a flock of birds transmits information. As population intelligence algorithms, the accuracy of these two algorithms are not high enough in the convergence process. At the same time, they tend to fall into the local optimum. In this paper, a hybrid algorithm based on whale optimization algorithm and particle swarm algorithm is proposed to update the population by a kind of selection iteration. The experimental results confirm that the algorithm has excellent superiority in convergence accuracy and convergence speed.
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