CACEV: A Cost and Carbon Emission-Efficient Virtual Machine Placement Method for Green Distributed Clouds

E. Ahvar, S. Ahvar, Z. Mann, N. Crespi, Joaquín García, R. Glitho
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引用次数: 26

Abstract

Distributed clouds have recently attracted many cloud providers and researchers as a topic of intensive interest. High energy costs and carbon emissions are two significant problems in distributed clouds. Due to the geographic distribution of data centers (DCs), there are a variety of resources, energy prices and carbon emission rates to consider in a distributed cloud, which makes the placement of virtual machines (VMs) for cost and carbon efficiency even more critical than in centralized clouds. Most previous work in this field investigated either optimizing cost without considering the amount of produced carbon or vice versa. This paper presents a cost and carbon emission-efficient VM placement method (CACEV) in distributed clouds. CACEV considers geographically varying energy prices and carbon emission rates as well as optimizing both network and server resources at the same time. By combining prediction-based A* algorithm with Fuzzy Sets technique, CACEV makes an intelligent decision to optimize cost and carbon emission for providers. Simulation results show the applicability and performance of CACEV.
CACEV:一种成本和碳排放效率高的绿色分布式云虚拟机放置方法
分布式云作为一个备受关注的话题,最近吸引了许多云提供商和研究人员。高能源成本和碳排放是分布式云的两个重要问题。由于数据中心(dc)的地理分布,在分布式云中需要考虑各种资源、能源价格和碳排放率,这使得虚拟机(vm)的成本和碳效率的放置比在集中式云中更为关键。该领域以前的大多数研究要么是在不考虑碳产量的情况下优化成本,要么是相反。提出了一种成本低、碳排放低的分布式云虚拟机放置方法(CACEV)。CACEV考虑了地理上不同的能源价格和碳排放率,同时优化了网络和服务器资源。CACEV通过将基于预测的A*算法与模糊集技术相结合,对供应商的成本和碳排放进行优化决策。仿真结果表明了CACEV的适用性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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