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Quantum-Behaved Particle Swarm Optimization with Weighted Mean Personal Best Position and Adaptive Local Attractor

机译:加权平均个人最佳位置和自适应局部吸引子的量子行为粒子群优化

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Motivated by concepts in quantum mechanics and particle swarm optimization (PSO), quantum-behaved particle swarm optimization (QPSO) was proposed as a variant of PSO with better global search ability. In this paper, a QPSO with weighted mean personal best position and adaptive local attractor (ALA-QPSO) is proposed to simultaneously enhance the search performance of QPSO and acquire good global optimal ability. In ALA-QPSO, the weighted mean personal best position is obtained by distinguishing the difference of the effect of the particles with different fitness, and the adaptive local attractor is calculated using the sum of squares of deviations of the particles’ fitness values as the coefficient of the linear combination of the particle best known position and the entire swarm’s best known position. The proposed ALA-QPSO algorithm is tested on twelve benchmark functions, and compared with the basic Artificial Bee Colony and the other four QPSO variants. Experimental results show that ALA-QPSO performs better than those compared method in all of the benchmark functions in terms of better global search capability and faster convergence rate.
机译:受量子力学和粒子群优化(PSO)概念的启发,提出了量子行为粒子群优化(QPSO)作为PSO的一种变体,具有更好的全局搜索能力。本文提出了一种具有加权平均个人最佳位置和自适应局部吸引子的QPSO(ALA-QPSO),以同时提高QPSO的搜索性能并获得良好的全局最优能力。在ALA-QPSO中,通过区分具有不同适应度的粒子的效果差异来获得加权平均个人最佳位置,并使用粒子适应度值的偏差平方和作为系数来计算自适应局部吸引子粒子最知名位置和整个群体最知名位置的线性组合的总和。拟议的ALA-QPSO算法在十二个基准函数上进行了测试,并与基本的人工蜂群和其他四个QPSO变体进行了比较。实验结果表明,在更好的全局搜索能力和更快的收敛速度方面,ALA-QPSO在所有基准功能上的性能均优于比较方法。

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