基于群决策突变策略的改进型头脑风暴优化算法

Algorithms Pub Date : 2024-04-23 DOI:10.3390/a17050172
Yanchi Zhao, Jia-Ping Cheng, Jing Cai
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引用次数: 0

摘要

为了解决脑暴优化算法(BSO)在避免局部最优化方面能力不足,导致其优化精度不够的问题,我们开发了一种羊群决策突变方法,大大提高了 BSO 算法的功效。此外,为了解决 BSO 算法种群多样性不足的问题,我们引入了一种利用好点集来提高初始种群质量的策略。同时,我们用光谱聚类取代了 K-means 聚类方法,提高了算法的聚类精度。这项工作引入了基于群决策突变策略的增强版头脑风暴优化算法(FDIBSO)。改进后的算法通过 CEC2018 与当代领先算法进行了比较。实验部分还采用了 AUV 智能评估作为应用案例。它针对不同维度设置下的组合权重模型,进一步证实了 FDIBSO 算法的有效性。研究结果表明,在应对复杂的优化挑战方面,FDIBSO 超越了 BSO 和其他增强算法。
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Improved Brain Storm Optimization Algorithm Based on Flock Decision Mutation Strategy
To tackle the problem of the brain storm optimization (BSO) algorithm’s suboptimal capability for avoiding local optima, which contributes to its inadequate optimization precision, we developed a flock decision mutation approach that substantially enhances the efficacy of the BSO algorithm. Furthermore, to solve the problem of insufficient BSO algorithm population diversity, we introduced a strategy that utilizes the good point set to enhance the initial population’s quality. Simultaneously, we substituted the K-means clustering approach with spectral clustering to improve the clustering accuracy of the algorithm. This work introduced an enhanced version of the brain storm optimization algorithm founded on a flock decision mutation strategy (FDIBSO). The improved algorithm was compared against contemporary leading algorithms through the CEC2018. The experimental section additionally employs the AUV intelligence evaluation as an application case. It addresses the combined weight model under various dimensional settings to substantiate the efficacy of the FDIBSO algorithm further. The findings indicate that FDIBSO surpasses BSO and other enhanced algorithms for addressing intricate optimization challenges.
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