A. Priya, S. Sahana
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基于杂交ACO-CVOA的多处理器系统任务调度优化建模与仿真
多处理机系统上的任务分配是根据各处理机的容量进行任务分配,从中选择最优任务。处理器的最佳选择可以提高性能,这也会影响makespan。在任务调度中,大多数的研究工作都集中在控制任务项由于处理器选择不当而导致的功耗和时间复杂度。本文主要研究了一种新型的蚁群优化(ACO)与冠状病毒优化算法(CVOA)的杂交方法对最优任务分配的建模。还有其他几种方法可以通过使用传统的距离估计方法或使用标准的基于规则的验证来估计处理器的权重值并找到与任务的最佳匹配。该算法通过迭代搜索最佳机器选择相应的参数和权值,最终识别出机器的容量。通过对经过时间、吞吐量等参数的评价,对所提方法进行了性能评价,并与现有方法进行了比较。©2022信息科学研究所。版权所有。
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