A New Boundary Condition for Particle Swarm Optimization

Hong-qi Li, Xu He, Xiaolong Xie, Li Li, Jinyu Zhou, Xiongyan Li
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引用次数: 12

Abstract

Boundary conditions are often used in particle swarm optimization (PSO) in order to enhance the entire solution space of particles as far as possible. However, most of them are not categorized in detail, the boundary conditions used for comparisons are not in the same category and their performances vary in different engineering fields. In order to address these issues, this paper presents a comprehensive learning velocity boundary condition (CLBC), which is verified by Rastrigrin and Rosenbrock function with 30 dimensionalities in three types of search range. The CLBC shows comparatively faster convergence ability and obtains more precise results, compared with other boundary conditions of the same kind.
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粒子群优化的一种新的边界条件
边界条件是粒子群优化算法中常用的一种方法,其目的是尽可能地增强粒子的整体解空间。然而,它们大多没有进行详细的分类,用于比较的边界条件也不属于同一类别,在不同的工程领域,它们的性能也不尽相同。为了解决这些问题,本文提出了一种综合学习速度边界条件(CLBC),并在三种搜索范围内用30维的Rastrigrin和Rosenbrock函数对其进行了验证。与其他同类边界条件相比,CLBC具有较快的收敛能力,得到的结果也更加精确。
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