An Improved Whale Swarm Algorithm with Nonlinear Weighting and Convergence Factor

Yongkun Zhao, Yuewei He, Baichen Chen, Xin Xue
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Abstract

A whale optimization algorithm based on nonlinear convergence factor and inertial weight is proposed to solve the problem of slow convergence and low convergence accuracy. The improved Logistic chaotic map was first used to initialize the swarm and increase the diversity of the swarm. Then the convergence factor of linear change is improved to a piecewise nonlinear convergence factor. Meanwhile, the nonlinear inertial weight is added to enhance the exploration and development ability of the algorithm. In the end, 7 benchmark functions were selected for testing, and the experiment showed that the improved algorithm had fast convergence speed and high precision.
一种带有非线性加权和收敛因子的改进鲸群算法
针对收敛速度慢、收敛精度低的问题,提出了一种基于非线性收敛因子和惯性权重的鲸鱼优化算法。首先利用改进的Logistic混沌映射对群体进行初始化,增加群体的多样性;然后将线性变化的收敛因子改进为分段非线性收敛因子。同时,增加了非线性惯性权值,增强了算法的探索开发能力。最后选取7个基准函数进行测试,实验表明改进算法收敛速度快,精度高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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