Dynamic real-time scheduling for multi-processor tasks using genetic algorithm

Shu-Chen Cheng, Yueh-Min Huang
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引用次数: 14

Abstract

With the exponential growth of time to obtain an optimal solution, the job-shop scheduling problems have been categorized as NP-complete problems. The time complexity makes the exhaustive search for a global optimal schedule infeasible or even impossible. Recently, genetic algorithms have shown the feasibility to solve the job-shop scheduling problems. However, a pure GA-based approach tends to generate illegal schedules due to the crossover and the mutation operators. It is often the case that the gene expression or the genetic operators need to be specially tailored to fit the problem domain or some other schemes may be combined to solve the scheduling problems. This paper presents a GA-based approach with a feasible energy function to generate good-quality schedules. This work concentrates mainly on dynamic real-time scheduling problems with constraint satisfaction. In our work, we design an easy-understood genotype to generate legal schedules and induce that the proposed approach can converge rapidly to address its applicability
基于遗传算法的多处理器任务动态实时调度
随着求解时间的指数增长,作业车间调度问题被归为np完全问题。时间复杂度使得穷举搜索全局最优调度不可行甚至不可能。近年来,遗传算法已显示出求解车间作业调度问题的可行性。然而,纯粹基于遗传算法的方法容易由于交叉和变异算子而产生非法调度。通常情况下,需要对基因表达或遗传算子进行特殊调整以适应问题域,或者结合其他一些方案来解决调度问题。本文提出了一种基于遗传算法的可行能量函数生成高质量调度的方法。本文主要研究具有约束满足的动态实时调度问题。在我们的工作中,我们设计了一个易于理解的基因型来生成合法的时间表,并诱导所提出的方法可以快速收敛以解决其适用性
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