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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A self-organizing map based hybrid chemical reaction optimization algorithm for multiobjective optimization
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A self-organizing map based hybrid chemical reaction optimization algorithm for multiobjective optimization

机译:基于自组织地图的多目标优化的混合化学反应优化算法

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摘要

Multiobjective particle swarm optimisation (MOPSO) is faced with convergence difficulties and diversity deviation, owing to combined learning orientations and premature phenomena. In MOPSO, leader selection is an important factor that can enhance the algorithm convergence rate. Inspired by this case, and aimed at balancing the convergence and diversity during the searching procedure, a self-organising map is used to construct the neighbourhood relationships among current solutions. In order to increase the population diversity, an extended chemical reaction optimisation algorithm is introduced to improve the diversity performance of the proposed algorithm. In view of the above, a self-organising map-based multiobjective hybrid particle swarm and chemical reaction optimisation algorithm (SMHPCRO) is proposed in this paper. Furthermore, the proposed algorithm is applied to 35 multiobjective test problems with all Pareto set shape and compared with 12 other multiobjective evolutionary algorithms to validate its performance. The experimental results indicate its advantages over other approaches.
机译:多目标粒子群优化(MOPSO)面临融合困难和多样性偏差,由于学习方向组合和过早现象。在MOPSO中,领导者选择是可以增强算法收敛速率的重要因素。受到这种情况的启发,并旨在在搜索过程中平衡收敛和多样性,使用自组织地图来构建当前解决方案之间的邻居关系。为了增加人口多样性,引入了扩展的化学反应优化算法,以提高所提出的算法的分集性能。鉴于上述情况,本文提出了一种自组织地图的多目标混合粒子群群和化学反应优化算法(SMHPCRO)。此外,所提出的算法应用于所有Pareto集合的35个多目标测试问题,并与12个其他多目标进化算法进行比较以验证其性能。实验结果表明其优于其他方法。

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