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Multi-population and Self-adaptive Genetic Algorithm Based on Simulated Annealing for Permutation Flow Shop Scheduling Problem

机译:基于模拟退火的置换流量铺调度问题的多群和自适应遗传算法

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In order to solve the permutation flow shop scheduling problem, a multi-population and self-adaptive genetic algorithm based on simulated annealing is proposed in this paper. For the precocity problem of traditional genetic algorithm, the multi-population coevolution strategy is adopted. We introduce a squared term to improve traditional self-adaptive genetic operators, which can increase the searching efficiency and avoid getting into local optimum. A new cooling strategy is proposed to reinforce the ability of overall searching optimal solution. The algorithm is used to solve a series of typical Benchmark problems. Moreover, the results are compared with SGA, IGA, and GASA. The comparison demonstrates the effectiveness of the algorithm.
机译:为了解决置换流铺调度问题,本文提出了一种基于模拟退火的多人和自适应遗传算法。对于传统遗传算法的预幂问题,采用了多群体共区战略。我们介绍了一个平方术语来改善传统的自适应遗传算子,可以提高搜索效率,避免进入局部最佳。提出了一种新的冷却策略,以强化整体搜索最佳解决方案的能力。该算法用于解决一系列典型的基准问题。此外,结果将结果与SGA,IgA和GASA进行比较。比较表明了算法的有效性。

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