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Effects of Including Single-Objective Optimal Solutions in an Initial Population on Evolutionary Multiobjective Optimization

机译:在初始群体中包括单目标最佳解决方案对进化多目标优化的影响

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In some multi-objective optimization problems, the search for the optimal solution of each individual objective is much easier than multi-objective optimization. In such a case, it looks a nice idea to search for the single-objective optimal solutions before the execution of multiobjective evolutionary algorithms (MOEAs). In this paper, we examine the effects of including the single-objective optimal solutions in an initial population of MOEAs on their multi-objective search behavior through computational experiments. We use single-machine scheduling problems with two objectives: to minimize the total flow time and the maximum tardiness. The optimal schedules for these two objectives can be easily obtained by sorting the given jobs in ascending order of their processing times and due dates, respectively. Experimental results demonstrate that the inclusion of the optimal solution for each objective (i.e., the inclusion of the two optimal solutions) clearly improves the search ability of NSGA-II. An interesting observation is that its performance is degraded by the inclusion of only the optimal solution for the total flow time.
机译:在一些多目标优化问题中,搜索每个单独目标的最佳解决方案比多目标优化更容易。在这种情况下,在执行多目标进化算法(MoES)之前,它看起来是一个很好的想法。在本文中,我们通过计算实验,研究了在莫伊亚初始群体中包括单目标最佳解决方案的影响。我们使用具有两个目标的单机调度问题:最小化总流量时间和最大迟到。这两个目标的最佳时间表可以通过分别按照其处理时间的升序和截止日期排序给定的作业来容易地获得。实验结果表明,包括每个物镜的最佳解决方案(即,包含两个最佳解决方案)显然提高了NSGA-II的搜索能力。一个有趣的观察是,它的性能因仅包含总流量时间的最佳解决方案而降低。

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