利用基于模仿的优化技术实现数据中心的节能资源管理

Q2 Energy Energy Informatics Pub Date : 2024-10-15 DOI:10.1186/s42162-024-00370-y
V. Dinesh Reddy, G. Subrahmanya V. R. K. Rao, Marco Aiello
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引用次数: 0

摘要

云计算是一种通过互联网提供流媒体内容、办公应用程序、软件功能、计算能力、存储等服务的模式。它为服务消费者提供了弹性和可扩展性,也为提供商带来了利润。这种模式的成功导致提供商的基础设施不断增加,其中最主要的是数据中心。数据中心是能源密集型设施,硬件和网络设备的运行及其冷却都需要电力。为满足云计算需求,数据中心将工作组织为放置在物理服务器上的虚拟机。为在服务器上放置虚拟机而选择的策略对于管理数据中心资源至关重要,同时还需要考虑工作负载的可变性。无效率的放置会导致资源浪费、过度耗电和通信成本增加。在本研究中,我们针对虚拟机摆放问题,提出了一种基于模仿的优化(IBO)方法,该方法的灵感来源于人类对动态摆放的模仿。为了解所提方法的意义,我们与最先进的方法进行了对比分析。结果表明,与混合元启发式、扩展粒子群优化、粒子群优化、遗传算法、整数线性规划和混合最佳拟合相比,所提出的 IBO 能耗平均分别降低 7%、10%、11%、28%、17% 和 35%。随着工作负荷的增加,所提出的方法每月可节约成本 201.4 欧元,每月可节约 460.92 磅(\hbox {CO}_2)。
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Energy efficient resource management in data centers using imitation-based optimization

Cloud computing is the paradigm for delivering streaming content, office applications, software functions, computing power, storage, and more as services over the Internet. It offers elasticity and scalability to the service consumer and profit to the provider. The success of such a paradigm has resulted in a constant increase in the providers’ infrastructure, most notably data centers. Data centers are energy-intensive installations that require power for the operation of the hardware and networking devices and their cooling. To serve cloud computing needs, the data center organizes work as virtual machines placed on physical servers. The policy chosen for the placement of virtual machines over servers is critical for managing the data center resources, and the variability of workloads needs to be considered. Inefficient placement leads to resource waste, excessive power consumption, and increased communication costs. In the present work, we address the virtual machine placement problem and propose an Imitation-Based Optimization (IBO) method inspired by human imitation for dynamic placement. To understand the implications of the proposed approach, we present a comparative analysis with state-of-the-art methods. The results show that, with the proposed IBO, the energy consumption decreases at an average of 7%, 10%, 11%, 28%, 17%, and 35% compared to Hybrid meta-heuristic, Extended particle swarm optimization, particle swarm optimization, Genetic Algorithm, Integer Linear Programming, and Hybrid Best-Fit, respectively. With growing workloads, the proposed approach can achieve monthly cost savings of €201.4 euro and \(\hbox {CO}_2\) Savings of 460.92 lbs \(\hbox {CO}_2\)/month.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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