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An enhanced-indicator based many-objective evolutionary algorithm with adaptive reference point

机译:具有自适应参考点的增强指示器的多目标进化算法

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Indicator based many-objective evolutionary algorithms generally introduce the performance indicator as the selection criterion in environmental selection. In the calculation of some indicators, the reference points as sampled points on Pareto fronts are very important for their calculation. However, it is difficult to obtain good reference points on various types of Pareto fronts. To address this issue, this paper proposes an enhanced-indicator based many-objective evolutionary algorithm with adaptive reference point, termed EIEA. The algorithm proposes a reference point adaptation method to dynamically adapt the reference points for the calculation of indicators. Moreover, the calculation of IGD-NS is enhanced by employing the modified distance calculation to introduce the Pareto compliant which can further comprehensively measure the convergence and diversity. The proposed EIEA adopts Pareto dominance and the enhanced IGD-NS as the first selection criterion and the secondary selection criterion in environmental selection, respectively. The intensive experiments demonstrate that the proposed algorithm has good performance in solving problems with various types of Pareto fronts, surpassing several representative many-objective evolutionary algorithms for many-objective optimization.
机译:基于指示器的许多客观进化算法通常将性能指标作为环境选择的选择标准引入。在计算某些指标时,Pareto Fronts上的采样点的参考点对其计算非常重要。然而,很难在各种类型的帕累托前线上获得良好的参考点。为了解决这个问题,本文提出了一种具有自适应参考点的增强指示器的许多目标进化算法,称为EIEA。该算法提出了一种参考点自适应方法,以动态地调整指示符的计算参考点。此外,通过采用修改的距离计算来提高IGD-NS的计算,以介绍符合帕累托兼容,这可以进一步全面地测量收敛和多样性。所提出的eiea分别采用Pareto优势和增强的IGD-NS作为第一个选择标准和环境选择中的次要选择标准。密集实验表明,所提出的算法在解决各种类型的帕累托前线问题方面具有良好的性能,超越了多个代表性的多目标进化算法,用于多目标优化。

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