SMA-LinR:一种能量和sla感知的虚拟机自治管理

V. Barthwal, M. Rauthan, R. Varma
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引用次数: 3

摘要

云数据中心消耗大量能源并产生热量,从而影响环境。因此,必须对数据中心中的资源进行适当的管理,以实现能源的最佳使用。在这些参数方面,支持虚拟化的计算提高了数据中心的性能。因此,虚拟机管理是数据中心的一项必要活动,包括从过载的主机中选择虚拟机迁移,从未充分利用的主机中选择虚拟机迁移,以及将虚拟机放置在合适的主机中。本文采用简单移动平均(SMA)与线性回归(LinR)相结合的方法,开发了一种预测CPU利用率并确定主机过载的方法(SMA-LinR)。此外,这个预测值用于将vm放置在适当的PM中。本研究的主要目的是减少能源消耗(EC)和服务水平协议违反(SLAV)。在实际工作负载数据上进行了大量的仿真,仿真结果表明SMA-LinR提供了更好的EC和服务质量改进。
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SMA-LinR: An Energy and SLA-Aware Autonomous Management of Virtual Machines
Cloud datacenters consume enormous energy and generate heat, which affects the environment. Hence, there must be proper management of resources in the datacenter for optimum usage of energy. Virtualization enabled computing improves the performance of the datacenters in terms of these parameters. Therefore, Virtual Machines (VMs) management is a required activity in the datacenter, which selects the VMs from the overloaded host for migration, VM migration from the underutilized host, and VM placement in the suitable host. In this paper, a method (SMA-LinR) has been developed using the Simple Moving Average (SMA) integrated with Linear Regression (LinR), which predicts the CPU utilization and determines the overloading of the host. Further, this predicted value is used to place the VMs in the appropriate PM. The main aim of this research is to reduce energy consumption (EC) and service level agreement violations (SLAV). Extensive simulations have been performed on real workload data, and simulation results indicate that SMA-LinR provides better EC and service quality improvements.
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来源期刊
International Journal of Cloud Applications and Computing
International Journal of Cloud Applications and Computing COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
6.40
自引率
0.00%
发文量
58
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