计算网格中能量感知调度的遗传算法

J. Kolodziej, S. Khan, F. Xhafa
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引用次数: 76

摘要

由于其庞大的规模,计算网格(cg)需要先进的方法和策略来有效地调度用户任务和应用程序到资源。当能源效率、经典的制造跨度标准和用户感知服务质量(QoS)被视为CG资源分配方法中的头等目标时,调度变得更加具有挑战性。本文以生产跨度和能量消耗为调度准则,将独立批量调度问题作为一个双目标最小化问题来研究。我们使用动态电压缩放(DVS)方法来减少系统资源所利用的累积功率能量。我们开发了两种具有精英和斗争替换机制的遗传算法(GAs)作为能量感知调度程序。在静态和动态模式下,对所提出的算法进行了四种CG尺寸场景的实验评估。仿真结果表明,我们提出的基于遗传算法的调度器相当地减少了能量使用,足以维持所需的质量水平(-s)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithms for Energy-Aware Scheduling in Computational Grids
Because of its sheer size, Computational Grids (CGs) require advanced methodologies and strategies to efficiently schedule users tasks and applications to resources. Scheduling becomes even more challenging when energy efficiency, classical make span criterion and user perceived Quality of Service (QoS) are treated as first-class objectives in CG resource allocation methodologies. In this paper we approach the independent batch scheduling in CG as a biobjective minimization problem with make span and energy consumption as the scheduling criteria. We use the Dynamic Voltage Scaling (DVS) methodology for reducing the cumulative power energy utilized by the system resources. We develop two Genetic Algorithms (GAs) with elitist and struggle replacement mechanisms as energy-aware schedulers. The proposed algorithms were experimentally evaluated for four CG size scenarios in static and dynamic modes. The simulation results showed that our proposed GA-based schedulers fairly reduce the energy usage to a level that is sufficient to maintain the desired quality level(-s)
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