首页> 中文期刊> 《电子学报》 >引入逆学习的量子自适应禁忌搜索算法

引入逆学习的量子自适应禁忌搜索算法

         

摘要

为增强量子进化算法的局部优化能力,结合禁忌搜索思想,提出一种具有逆学习机制的量子自适应禁忌搜索算法。算法采用一种量子自适应邻域映射机制,且禁忌表的禁忌长度可随量子态动态调整,这些策略较好的解决了集中性和多样性搜索的矛盾。另外,算法增加了一种能使个体尽快摆脱劣势区域的逆学习量子更新模式。设计的算法能较好的平衡全局和局部搜索,能有效避免量子过快陷入局部极值。通过实验表明提出的算法具有更好的局部搜索能力。%In order to enhance the local optimization capability of quantum-inspired evolutionary algorithm (QEA) ,a novel QEA incorporating inverse learning mode is proposed based on adaptive tabu search .In this algorithm ,the neighborhood structure and tabu tenure can be adjusted dynamically casing quantum entanglement states ,so that the conflict between intensification and di-versification is well solved .At the same time ,a novel quantum updating mode named inverse learning is designed to help individuals get out of inferior region .Therefore ,better balance between exploration and exploitation can be achieved to escape from a local opti-mum .Experiment results show that local optimization ability has been advanced effectively through the proposed algorithm .

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