MOEAGAC:基于遗传算法的云计算中高效调度的能量感知模型

Nageswara Prasadhu Marri, N. Rajalakshmi
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引用次数: 3

摘要

大多数研究工作要么集中在调度时间和执行成本的优化上,要么集中在能量优化机制上。本研究旨在考虑优先级任务,提出最大完工时间、能耗和数据传输时间(DTT)的优化方案。为了提高任务调度效率,研究了基于遗传算法和能量感知模型的多目标调度方法。设计/方法/方法云计算是分布式和集群计算的最新发展。云计算根据客户的需求为客户提供不同的服务,并在虚拟化环境下工作。云环境包含地理上分布的数据中心的数量。云环境面临的主要挑战是数据中心的能源消耗。需要适当的调度机制将任务分配给虚拟机,这有助于减少完工时间。本文通过引入一种多目标能量感知遗传算法,重点研究了能量消耗和最大完工时间的最小化问题。该算法采用了考虑虚拟机CPU能耗的调度机制。建立了基于适应度函数的任务选择能量模型。仿真结果表明了该多目标模型在最大完工时间、地面距离和能耗方面的有效性。能量感知模型根据虚拟机中cpu的电压和频率分布计算能量。用有向无环图表示任务依赖关系。与MODPSO算法相比,该模型的最大完工时间减少了5%,与HEFT算法相比减少了0.7%。当所有vm都处于活动状态时,所提出的模型记录了50个vm的125焦耳能量消耗。原创性/价值本文提出了基于仿生方法的多目标模型,即遗传算法。将遗传算法与能量感知模型相结合,对云计算中的能量消耗进行优化。遗传算法采用优先级模型选择初始种群,采用轮盘选择方法选择亲本。将能量模型作为遗传算法的适应度函数,用于选择执行调度的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MOEAGAC: an energy aware model with genetic algorithm for efficient scheduling in cloud computing
PurposeMajority of the research work either concentrated on the optimization of scheduling length and execution cost or energy optimization mechanism. This research aims to propose the optimization of makespan, energy consumption and data transfer time (DTT) by considering the priority tasks. The research work is concentrated on the multi-objective approach based on the genetic algorithm (GA) and energy aware model to increase the efficiency of the task scheduling.Design/methodology/approachCloud computing is the recent advancement of the distributed and cluster computing. Cloud computing offers different services to the clients based on their requirements, and it works on the environment of virtualization. Cloud environment contains the number of data centers which are distributed geographically. Major challenges faced by the cloud environment are energy consumption of the data centers. Proper scheduling mechanism is needed to allocate the tasks to the virtual machines which help in reducing the makespan. This paper concentrated on the minimizing the consumption of energy as well as makespan value by introducing the hybrid algorithm called as multi-objective energy aware genetic algorithm. This algorithm employs the scheduling mechanism by considering the energy consumption of the CPU in the virtual machines. The energy model is developed for picking the task based on the fitness function. The simulation results show the performance of the multi-objective model with respect to makespan, DTT and energy consumption.FindingsThe energy aware model computes the energy based on the voltage and frequency distribution to the CPUs in the virtual machine. The directed acyclic graph is used to represent the task dependencies. The proposed model recorded 5% less makespan compared against the MODPSO and 0.7% less compared against the HEFT algorithms. The proposed model recorded 125 joules energy consumption for 50 VMs when all are in active state.Originality/valueThis paper proposed the multi-objective model based on bio-inspired approach called as genetic algorithm. The GA is combined with the energy aware model for optimizing the consumption of the energy in cloud computing. The GA used priority model for selecting the initial population and used the roulette wheel selection method for parent selection. The energy model is used as fitness function to the GA for selecting the tasks to perform the scheduling.
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