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Two-stage multi-tasking transform framework for large-scale many-objective optimization problems

机译:大规模多目标优化问题的两级多任务变换框架

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Real-world optimization applications in complex systems always contain multiple factors to be optimized, which can be formulated as multi-objective optimization problems. These problems have been solved by many evolutionary algorithms like MOEA/D, NSGA-III, and KnEA. However, when the numbers of decision variables and objectives increase, the computation costs of those mentioned algorithms will be unaffordable. To reduce such high computation cost on large-scale many-objective optimization problems, we proposed a two-stage framework. The first stage of the proposed algorithm combines with a multi-tasking optimization strategy and a bi-directional search strategy, where the original problem is reformulated as a multi-tasking optimization problem in the decision space to enhance the convergence. To improve the diversity, in the second stage, the proposed algorithm applies multi-tasking optimization to a number of sub-problems based on reference points in the objective space. In this paper, to show the effectiveness of the proposed algorithm, we test the algorithm on the DTLZ and LSMOP problems and compare it with existing algorithms, and it outperforms other compared algorithms in most cases and shows disadvantage on both convergence and diversity.
机译:复杂系统中的现实世界优化应用始终包含要优化的多个因素,可以制定为多目标优化问题。许多进化算法如Moea / D,NSGA-III和KNEA等这些问题已经解决。然而,当决策变量和目标的数量增加时,那些提到的算法的计算成本将无法实现。为了降低大规模的许多客观优化问题的高计算成本,我们提出了一个两级框架。所提出的算法的第一阶段与多任务优化策略和双向搜索策略相结合,其中原始问题被重构为决策空间中的多任务优化问题以增强收敛。为了提高多样性,在第二阶段,该算法基于客观空间中的参考点对多个子问题应用多任务优化。在本文中,为了展示所提出的算法的有效性,我们在DTLZ和LSMOP问题上测试算法,并将其与现有算法进行比较,并且在大多数情况下,它越优于其他比较算法,并显示了融合和多样性的缺点。

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