梯度粒子群优化(GPSO)

Sarma O V Sanjay, R. Pidaparti
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引用次数: 2

摘要

在过去的二十年里,粒子群优化算法吸引了大量的研究人员,因为它能够通过简单的位置和速度的更新方程来搜索全局最优。在搜索空间中,一组随机初始化的点交换有关其位置和适应度的信息。个体的最佳因素和群体领导者的位置支持群体向最优状态移动。然而,该策略并不能保证在所有场景下都能获得全局最优值,这取决于适应度函数的复杂度。为了解决这个问题,提出了一个更好的变体,通过引入分组,层次(层次)和普遍领导的概念。在该算法中,在初始化过程中,对群体成员进行分组搜索,并根据群体中最适合度的个体将每个群体与一个群体领袖相关联。所有这些领导者形成了一个与普遍领导者相关联的等级群体。为此,应用该策略,在粒子群速度更新方程中引入了第四个项来控制全局领先者的影响。本文给出了粒子群算法及其修正方程,推导了粒子群算法的一般规则,并对标准基准函数进行了评价。与其他群集技术一样,该算法有望在计算智能、群体智能和群体机器人领域支持新的搜索、探索和映射策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graded Particle Swarm Optimization (GPSO)
Particle Swarm Optimization has attracted a vast amount of researchers over the past two decades for its ability to search global optima by simple update equations for position and velocity. A set of randomly initialized points in a search space exchange information regarding their position and fitness. The individual's personal best factor and the group leader's positions support the swarm's movement towards optima. However, this strategy is not guaranteed to achieve the global optimum values in all the scenarios, which is otherwise dependent on the complexity of the fitness function. In addressing this issue, a better performing variant is proposed by introducing the concept of grouping, gradation (hierarchy) and universal leader concepts. In the proposed variant, during initialization, the members of the swarm are grouped for search and each group is associated with a group leader based on best fitness individual in the group. All these group leaders form a hierarchical group associated with a universal leader. For, applying this strategy a fourth term in the PSO velocity update equation is introduced governing the influence of a universal leader. In the current paper, the GPSO algorithm, its modified equation and deduction of the general PSO rules followed by its evaluation on the standard benchmark functions are presented. This algorithm like other swarming techniques is expected to support new search, exploration and mapping strategies in the fields of computational intelligence, swarm intelligence and swarm robotics.
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