Decomposition-based evolutionary algorithms have become fairly popular for many-objective optimization in recent years. However, the existing decomposition methods still are quite sensitive to the various shapes of frontiers of many-objective optimization problems (MaOPs). On the one hand, the cone decomposition methods such as the penalty-based boundary intersection (PBI) are incapable of acquiring uniform frontiers for MaOPs with very convex frontiers. On the other hand, the parallel reference lines of the parallel decomposition methods including the normal boundary intersection (NBI) might result in poor diversity because of under-sampling near the boundaries for MaOPs with concave frontiers. In this paper, a collaborative decomposition method is first proposed to integrate the advantages of parallel decomposition and cone decomposition to overcome their respective disadvantages. This method inherits the NBI-style Tchebycheff function as a convergence measure to heighten the convergence and uniformity of distribution of the PBI method. Moreover, this method also adaptively tunes the extent of rotating an NBI reference line towards a PBI reference line for every subproblem to enhance the diversity of distribution of the NBI method. Furthermore, a collaborative decomposition-based evolutionary algorithm (CoDEA) is presented for many-objective optimization. A collaborative decomposition-based environmental selection mechanism is primarily designed in CoDEA to rank all the individuals associated with the same PBI reference line in the boundary layer and pick out the best ranks. CoDEA is compared with several popular algorithms on 85 benchmark test instances. The experimental results show that CoDEA achieves high competitiveness benefiting from the collaborative decomposition maintaining a good balance among the convergence, uniformity, and diversity of distribution.
翻译:近些年来,基于分解的进化算法对于许多目标优化问题(MAOPs)的多种边界形式仍然相当敏感。一方面,基于惩罚的分解方法(PBI)无法为基于惩罚的边界交叉(PBI)获得统一的马奥普斯边界和非常相似的边界。另一方面,平行分解方法的平行参照线(包括正常的边界交界点(NBI))可能会导致多样性差,因为在马奥普边界附近与相交的边界附近,对多目标优化问题(MAOPs)的各种边界形式仍然相当敏感。在本文中,首先提出合作分解方法,将平行分解和分解方法(PBIPrality Confirmlations)的优点结合起来,这一方法将NBI-S-sty Tchebycheff的功能作为提高PBI方法分配的趋同性和统一性。此外,这一方法还根据适应性调整了将NBI的参考线转换为每个次分流的PBI参考线,而将每个分解的分解,A-Bal-Balalalal-BIalalalal-alalalalalalal-al-modustration A-Bislations 和Bislationalal-modal-modal-modal-modal-mod-mod-modal-mocal-mod-modal-modal-modal-modal-modal-modal-modation-modation-mocalation-modal-mocalmentmentmental-mocal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-modal-mocal-modal-modal-modal-modal-modal-modal-mod-modal-modal-modal-modal-modal-modal-modal-modal-mocal-mocal-modal-