基于树枝生长特性的智能仿生优化算法

Pub Date : 2021-04-01 DOI:10.4018/ijcini.20210401.oa3
Fei Tang
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引用次数: 3

摘要

为了提高仿生算法的性能,提出了一种基于树木向光生长形态特征的智能仿生优化算法。将树的生长器官映射到树生长算法的编码中,通过选择生长最快的个体构成树的下一层,形成整棵树。当树的生长达到一定水平时,加入茎尖的个体编码,增强单个茎尖在整个树的生长空间中的搜索能力。该方法可获得近似最优解。利用经典优化函数,将实验结果与遗传算法和蚁群算法的优化结果进行了比较。实验结果表明,与遗传算法或蚁群算法相比,该算法迭代次数少,收敛速度快,精度高,优化能力强。
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Intelligent Bionic Optimization Algorithm Based on the Growth Characteristics of Tree Branches
To improve the performance of bionic algorithms, an intelligent bionic optimization algorithm is proposed based on the morphological characteristics of trees growing toward light. The growth organ of the tree is mapped into the coding of the tree growth algorithm, and the entire tree is formed by selecting the fastest growing individual to form the next level of the tree. When the tree growth reaches a certain level, the individual code of the shoot tip is added to enhance the search ability of the individual shoot tip in the growth space of the entire tree. This method achieves a near-optimal solution. The experimental results were compared with the optimization results of the genetic algorithm and the ant colony algorithm using the classic optimization function. The experimental results show that this algorithm has fewer iterations, a faster convergence speed, higher precision, and a better optimization ability than the genetic algorithm or the ant colony algorithm.
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