Optimized PSO-EFA Algorithm for Energy Efficient Virtual Machine Migrations

K. Kaur, Inderjit Singh Dhanoa, P. Bhambri
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引用次数: 2

Abstract

The expansion of cloud infrastructure follows with increase in number of data centers hosting number of computing nodes and then, it becomes the reason for huge amount of energy consumption across the world. However, benefits of cloud computing industry with its low-price and high productivity keep diverting the attention of organizations from environmental mess and high energy cost incurred by the data centers. Therefore, it becomes very urgent to curtail the increase in requirement of energy for cloud service providers with the provision of sufficient quality of service to end users. The best way to achieve the balance between energy usage and quality of service is workload aware energy efficient Virtual Machine (VM) consolidation. The various parameters are managed to strike the trade-off between energy consumption and cloud services. This paper presents the optimized PSO-EFA algorithm for energy efficiency with workload management in terms of number of migrations and number of systems shut down during migration process of consolidation. This study paved the way forward for energy efficient cloud environment during migration process. The simulation conducted in constrained environment indicated that workload variation has significant impact on different energy consumption allied parameters. The PSO-EFA algorithm outperformed existing base algorithm for energy consumption and other parameters. The proposed algorithm worked in sync with sustainability efforts.
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节能虚拟机迁移的优化PSO-EFA算法
云基础设施的扩展伴随着承载计算节点的数据中心数量的增加,从而成为全球范围内大量能源消耗的原因。然而,云计算产业以其低廉的价格和高生产率的优势不断转移组织对数据中心造成的环境混乱和高能源成本的关注。因此,在为最终用户提供足够的服务质量的同时,遏制云服务提供商能源需求的增长变得非常紧迫。实现能源使用和服务质量之间平衡的最佳方法是工作负载感知的节能虚拟机(VM)整合。管理各种参数以在能源消耗和云服务之间进行权衡。本文从整合迁移过程中迁移的数量和系统关闭的数量两方面,提出了一种优化的PSO-EFA算法,用于能源效率和工作负载管理。本研究为迁移过程中高效节能的云环境铺平了道路。在约束环境下进行的仿真表明,工作负荷变化对不同能耗相关参数有显著影响。PSO-EFA算法在能耗等参数上优于现有基算法。提出的算法与可持续发展的努力是同步的。
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