基于人工蜂群方法的分布式系统任务调度能量优化

María Arsuaga-Ríos, M. A. Vega-Rodríguez
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引用次数: 5

摘要

绿色计算也被称为绿色IT,是近年来计算领域的一个热门话题。“绿色计算”指的是使机构在采用更尊重环境的技术和工作方法的同时,更合理和有效地利用其技术资源,并降低成本。执行时间和能量消耗也是相互冲突的目标,因为更快的资源通常意味着更高的能量消耗。本文从执行时间和能耗两方面对网格环境下的任务调度问题进行了优化。MOABC是一种受蜜蜂行为启发的群体算法,并与受萤火虫行为启发的群体算法MO-FA进行了比较。并将这些算法与NSGA-II算法进行了比较,评价了它们的多目标特性。此外,将最佳算法MOABC与最流行的工作流调度算法MOHEFT进行了比较,并将其与两个实际的网格调度程序WMS或DBC进行了比较。结果表明,在所有研究案例中,MOABC是最佳的方法。
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Energy optimization for task scheduling in distributed systems by an Artificial Bee Colony approach
Green Computing also known as Green IT is becoming a hot topic in the computational field during these last years. Green Computing consists of enabling organizations to make a more rational and efficient use of their technological resources and reduce costs while adopting technologies and working methods more respectful of the environment. Execution time and energy consumption are also conflicting objectives, because faster resources frequently imply higher energy consumptions. In this paper, we optimize both: execution time and energy consumption to resolve the task scheduling problem in Grid environments. MOABC is a swarm algorithm inspired in the bees behaviour and it is compared with MO-FA which is other swarm algorithm inspired in the fireflies behaviour. These algorithms are also compared with the well-known NSGA-II to evaluate their multiobjective properties. Moreover, the best algorithm, MOABC, is compared with MOHEFT, the most popular algorithm for workflow scheduling and with two real grid schedulers as WMS or DBC. The results obtained point out MOABC as the best approach in all the cases studied.
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