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Multi-objective Brain Storm Optimization Based on Estimating in Knee Region and Clustering in Objective-Space

机译:基于膝盖区域估计和目标空间聚类的多目标头脑风暴优化

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The knee region of the Pareto-optimal front is important to decision makers in practical contexts. In this paper, a new multi-objective swarm intelligent optimization algorithm, Multi-objective Brain Storm Optimization based on Estimating in Knee Region and Clustering in Objective-Space (MOBSO-EKCO) algorithm is proposed to get the knee point of Pareto-optimal front. Firstly, the clustering strategy acts directly in the objective space instead of in the solution space, which suggests the potential Pareto-dominance areas in the next iteration more quickly. Secondly, the estimating strategy is used to discover the knee regions, which are the most potential part of the Pareto front. Thirdly, Differential Evolution (DE) mutation is used to improve the performance of MBSO. Experimental results show that MOBSO-EKCO is a very promising algorithm for solving these tested multi-objective problems.
机译:在实际情况下,帕累托最优前沿的膝盖区域对于决策者很重要。本文提出了一种新的多目标群智能优化算法,即基于拐点区域估计和目标空间聚类的多目标脑部风暴优化算法(MOBSO-EKCO),以得到帕累托最优前沿的拐点。 。首先,聚类策略直接作用于目标空间而不是求解空间,这表明在下一次迭代中潜在的帕累托优势区域。其次,使用估计策略来发现膝盖区域,这些区域是帕累托锋面中最有潜力的部分。第三,差分进化(DE)突变用于提高MBSO的性能。实验结果表明,MOBSO-EKCO是解决这些经过测试的多目标问题的非常有前途的算法。

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