Energy Efficient Multi-Level Network Resources Management in Cloud Computing Data Centers

Y. Jararweh, H. Ababneh, M. Alhammouri, L. Tawalbeh
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引用次数: 13

Abstract

Energy efficiency is a major issue in Cloud computing infrastructure. The large power consumption is mainly attributed to the large number of modern data centers operating within. Developing these data centers includes dynamically expanding their infrastructures to meet the ever-increasing demand for huge computation, large storage, and massive communication. Energy conservation through optimization of resources and management policies in the Cloud are a viable solution. Using virtualization to save power and employing such practices as using Virtual Machines (VMs), Server Consolidation, and VM Live Migration. This paper investigates the opportunities for Green Cloud Computing (GCC) to obtain a more comprehensive prospect towards achieving energy efficient Cloud Computing, and presents an energy efficient network resources management approach in an Infrastructure as a Service (IaaS) Cloud model. We focus on developing an energy efficient algorithm by proposing a practical multi-level Cloud Resource-Network Management (CRNM) algorithm, which is implemented in a virtual Cloud environment using Snooze framework as the Cloud energy efficiency manager. The optimization focuses on the utilization of network bandwidth as main resource under test, while also taking into account the other resources, such as CPU and memory, to get the desired performance. We choose a fat tree topology as a common three tier architecture for Cloud data canters. We conclude that our proposed algorithm will save up to 75% of power consumption in Cloud data centers, with an observed increase in efficiency compared to Non-Power Aware (NPA), Power aware(PA), and Greedy algorithms, where network elements consume about 30% of the total power of Cloud data centers.
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云计算数据中心节能多级网络资源管理
能源效率是云计算基础设施中的一个主要问题。大量的电力消耗主要归因于大量的现代数据中心在其中运行。开发这些数据中心包括动态扩展其基础设施,以满足对巨大计算、大存储和海量通信不断增长的需求。通过优化云中的资源和管理策略来实现节能是一个可行的解决方案。使用虚拟化来节省电力,并采用诸如使用虚拟机(VM)、服务器整合和虚拟机热迁移等实践。本文研究了绿色云计算(GCC)在实现节能云计算方面获得更全面前景的机会,并在基础设施即服务(IaaS)云模型中提出了一种节能网络资源管理方法。我们通过提出一种实用的多级云资源网络管理(CRNM)算法,专注于开发一种节能算法,该算法使用snoze框架作为云能效管理器在虚拟云环境中实现。优化的重点是将网络带宽作为主要被测资源的利用率,同时也考虑到其他资源,如CPU和内存,以获得理想的性能。我们选择胖树拓扑作为云数据中心的通用三层架构。我们得出的结论是,我们提出的算法将在云数据中心节省高达75%的功耗,与非功率感知(NPA)、功率感知(PA)和贪婪算法相比,效率有所提高,其中网络元素消耗约占云数据中心总功耗的30%。
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