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Iterative Parallel Genetic Algorithms Based on Biased Initial Population

机译:基于有偏差初始种群的迭代并行遗传算法

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This paper proposes an iterative parallel genetic algorithm with biased initial population to solve large-scale combinatorial optimization problems. The proposed scheme employs a master-slave collaboration in which the master node manages searched space of slave nodes and assigns seeds to generate initial population to slaves for their restarting of evolution process. Our approach allows us as widely as possible to search by all the slave nodes in the beginning period of the searching and then focused searching by multiple slaves on a certain spaces that seems to include good quality solutions. Computer experiment shows the effectiveness of our proposed scheme.
机译:提出了一种有偏差初始种群的迭代并行遗传算法来解决大规模组合优化问题。所提出的方案采用了主从协作,其中主节点管理从节点的搜索空间,并分配种子以生成初始种群给从节点,以便从节点重新开始进化过程。我们的方法允许我们在搜索的开始阶段尽可能广泛地从所有从属节点进行搜索,然后由多个从属在一个似乎包含优质解决方案的特定空间上进行集中搜索。计算机实验表明了该方案的有效性。

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