基于全搜索历史的改进QPSO算法

Ji Zhao, Yi Fu, Juan Mei
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引用次数: 3

摘要

提出了一种改进的基于全搜索历史的QPSO算法(ESH-QPSO)。ESH-QPSO是一种集成了整个搜索历史方案和标准量子粒子群优化(QPSO)的算法。它保证所有更新后的位置之前不会被重新访问,这有助于防止过早收敛。整个搜索历史方案利用BSP树将连续搜索空间划分为子区域。划分的子区域作为突变范围,使得相应的突变是自适应的和无参数的。当子区域被表述为相邻子区域之间存在一定的重叠时,这允许粒子以更好的适应度从一个子区域移动到另一个子区域。与其他传统算法相比,在8个标准测试函数上的实验结果表明,所提算法在多模态和单模态函数的优化方面具有优势,收敛速度和精度均有提高,证明了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved QPSO Algorithm Based on Entire Search History
An improved QPSO algorithm based on entire search history (ESH-QPSO) is proposed. ESH-QPSO is an integration of the entire search history scheme and a standard quantum-behaved particle swarm optimization (QPSO). It guarantees that all updated positions are not revisited before, which helps prevent premature convergence. The entire search history scheme partitions the continuous search space into sub-regions by using BSP tree. The partitioned sub-region servers as mutation range such that the corresponding mutation is adaptive and parameter-less. When sub-regions are formulated as which certain overlap exists between adjacent sub-regions, this allows particle move from a sub-region to another with better fitness. Compared with other traditional algorithms, the experiment results on 8 standard testing functions show that the proposed algorithm is superior regarding the optimization of multimodal and unimodal functions, with enhancement in both convergence speed and precision those demonstrate the effectiveness of the algorithm.
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