Indicator-based algorithms are gaining prominence as traditional multi-objective optimization algorithms based on domination and decomposition struggle to solve many-objective optimization problems. However, previous indicator-based multi-objective optimization algorithms suffer from the following flaws: 1) The environment selection process takes a long time; 2) Additional parameters are usually necessary. As a result, this paper proposed an multi-indicator and multi-objective optimization algorithm based on two-archive (SRA3) that can efficiently select good individuals in environment selection based on indicators performance and uses an adaptive parameter strategy for parental selection without setting additional parameters. Then we normalized the algorithm and compared its performance before and after normalization, finding that normalization improved the algorithm's performance significantly. We also analyzed how normalizing affected the indicator-based algorithm and observed that the normalized $I_{\epsilon+}$ indicator is better at finding extreme solutions and can reduce the influence of each objective's different extent of contribution to the indicator due to its different scope. However, it also has a preference for extreme solutions, which causes the solution set to converge to the extremes. As a result, we give some suggestions for normalization. Then, on the DTLZ and WFG problems, we conducted experiments on 39 problems with 5, 10, and 15 objectives, and the results show that SRA3 has good convergence and diversity while maintaining high efficiency. Finally, we conducted experiments on the DTLZ and WFG problems with 20 and 25 objectives and found that the algorithm proposed in this paper is more competitive than other algorithms as the number of objectives increases.
翻译:以指标为基础的算法随着基于统治和分解的传统多目标优化算法而日益受到重视,因为基于统治和分解的传统多目标优化算法是为了解决许多目标优化问题,然而,以往基于指标的多目标优化算法存在以下缺陷:(1) 环境选择过程需要很长时间;(2) 通常需要额外的参数。因此,本文件提议了一个基于两个结构(SRA3)的多指标和多目标优化算法,它能够根据指标性能在环境选择中有效地选择好的人,并且采用适应性参数战略来选择父母选择,而不必设定额外的参数。然后,我们使算法正常化,并比较其业绩,发现算法的正常化大大改善了工作业绩。 我们还分析了基于指标的正常化如何影响基于指标的算法的算法;(2) 通常需要增加参数。 因此,本文件提议了一个基于两个结构的多指标的多指标和多目标的优化算法。 然而,由于范围不同,它也倾向于采用极端的解决方案,从而使得所设定的解决方案与极端一致。 因此,我们提出了一些关于正常化的建议,我们提出了一些关于算法的标准化的建议,然后分析如何使基于指标的算法的算法的算法的算法的算法对基于指标的算法的算法的算法的算法的算法的算法的算法和GLLLLLL3和G结果,最后的数值是,我们进行了10的实验,关于效率的实验,我们进行了了10的实验,我们所的研了10的算法和G的结果。