多维变异的自适应粒子群优化

Toshiki Nishio, J. Kushida, Akira Hara, T. Takahama
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引用次数: 3

摘要

本文提出了多维变异自适应粒子群优化算法(MM-APSO),该算法比传统的自适应粒子群优化算法(APSO)更能进行移动高效搜索。特别地,它可以求解香蕉函数等不可分适应度函数,精度高,收敛速度快。MM-APSO由APSO和附加两种方法组成。一种是利用种群的运动载体进行多维变异。另一个是在发生突变时将速度重新初始化为0。对10个单峰和多峰基准函数进行了实验。实验结果表明,MM-APSO在收敛速度和求解精度方面都有明显提高。
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Adaptive particle swarm optimization with multi-dimensional mutation
The paper presents adaptive particle swarm optimization with multi-dimensional mutation (MM-APSO), which can perform move efficient search than the conventional adaptive particle swarm optimization (APSO). In particular, it can solve non-separable fitness functions such as banana functions with high accuracy and rapid convergence. MM-APSO consists of APSO and additional two methods. One is multi-dimensional mutation, which uses movement vector of population. The other is reinitializing velocity to 0 when mutation occurs. Experiments were conducted on 10 unimodal and multimodal benchmark functions. The experimental results show that MM-APSO substantially enhances the performance of the APSO in terms of convergence speed and solution accuracy.
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