A self-organizing map based hybrid chemical reaction optimization algorithm for multiobjective optimization

作者:Hongye Li, Lei Wang

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.

论文关键词:Multiobjective optimization, Hybrid chemical reaction optimization, Self-organizing map, Multiobjective particle swarm optimization

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10489-018-1358-0