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A Novel Multi-population Particle Swarm Optimization with Learning Patterns Evolved by Genetic Algorithm

机译:基于遗传算法的学习模式多种群粒子群算法

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In recent years, particle swarm optimization (PSO) and genetic algorithm (GA) have been applied to solve various real-world problems. However, the original PSO is based on single population whose learning patterns (inertia weights, learning factors) has no potentials in evolution. All particles in the population interact and search according to a fixed pattern, which leads to the reduction of population diversity in the later iterations and premature convergence on complex and multi-modal problems. Therefore, a novel multi-population PSO with learning patterns evolved by GA is proposed to improve diversity and exploration capabilities of populations. Meanwhile, the local search of PSO particles which start in the same position also evolved by GA independently maintains exploitation ability inside each sub population. Experimental results show that the accuracy is comparable and our method improves the convergence speed.
机译:近年来,粒子群优化(PSO)和遗传算法(GA)已用于解决各种现实问题。但是,原始的PSO是基于单一人群,其学习模式(惯性权重,学习因素)没有发展的潜力。种群中的所有粒子都按照固定的模式进行交互和搜索,从而导致种群多样性在以后的迭代中减少,并导致复杂和多模式问题的过早收敛。因此,提出了一种具有遗传算法演化的具有学习模式的新型多种群PSO,以提高种群的多样性和探索能力。同时,由GA演化而来的相同位置开始的PSO粒子的局部搜索独立地维持了每个亚种群内部的开发能力。实验结果表明,该方法具有较好的精度,并且提高了收敛速度。

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