Task Scheduling in Multiprocessor System Using Genetic Algorithm

Sachi Gupta, Vikas Kumar, Gaurav Agarwal
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引用次数: 70

Abstract

The general problem of multiprocessor scheduling can be stated as scheduling a task graph onto a multiprocessor system so that schedule length can be optimized. Task scheduling in multiprocessor system is a NP-complete problem. In literature, several heuristic methods have been developed that obtain suboptimal solutions in less than the polynomial time. Recently, Genetic algorithms have received much awareness as they are robust and guarantee for a good solution. In this paper, we have developed a genetic algorithm based on the principles of evolution found in nature for finding an optimal solution. Genetic algorithm is based on three operators: Natural Selection, Crossover and Mutation. To compare the performance of our algorithm, we have also implemented another scheduling algorithm HEFT which is a heuristic algorithm. Simulation results comprises of three parts: Quality of solutions, robustness of genetic algorithm, and effect of mutation probability on performance of genetic algorithm.
基于遗传算法的多处理机系统任务调度
多处理机调度的一般问题可以描述为将任务图调度到多处理机系统上,以使调度长度可以优化。多处理机系统中的任务调度是一个np完全问题。在文献中,已经开发了几种启发式方法,可以在不到多项式时间内获得次优解。近年来,遗传算法以其鲁棒性和保证好的解而受到越来越多的关注。在本文中,我们开发了一种基于自然进化原理的遗传算法,用于寻找最优解。遗传算法基于三个算子:自然选择、交叉和变异。为了比较我们算法的性能,我们还实现了另一种启发式调度算法HEFT。仿真结果包括三部分:解的质量、遗传算法的鲁棒性、变异概率对遗传算法性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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