基于种群系统和细菌觅食算法的自适应灰狼算法

Yunhan Gu, Ning Liu
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引用次数: 2

摘要

本文提出了一种改进的灰狼优化算法,即基于种群系统和细菌觅食优化算法(BFO)的自适应灰狼算法(AdGWO)。针对在求解复杂优化问题时存在过早收敛和局部优化的缺点,AdGWO算法采用三阶段非线性变化函数模拟收敛因子的递减变化,同时集成了BFO的半消除机制。这些改进更符合自然狼的实际情况。该算法基于23个著名的测试函数,并与GWO进行了比较。实验结果表明,该算法能够避免陷入局部最优,具有良好的精度和稳定性,是一种更具竞争力的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Grey Wolf Algorithm Based on Population System and Bacterial Foraging Algorithm
In this thesis, an modified algorithm for grey wolf optimization in swarm intelligence optimization algorithm is proposed, which is called an adaptive grey wolf algorithm (AdGWO) based on population system and bacterial foraging optimization algorithm (BFO). In view of the disadvantages of premature convergence and local optimization in solving complex optimization problems, the AdGWO algorithm uses a three-stage nonlinear change function to simulate the decreasing change of the convergence factor, and at the same time integrates the half elimination mechanism of the BFO. These improvements are more in line with the actual situation of natural wolves. The algorithm is based on 23 famous test functions and compared with GWO. Experimental results demonstrate that this algorithm is able to avoid sinking into the local optimum, has good accuracy and stability, is a more competitive algorithm.
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