Resource Allocation on a Hybrid Cloud for Smart Grids

Alan Briones, R. Pozuelo, Joan Navarro, A. Zaballos
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引用次数: 5

Abstract

The use of hybrid clouds enables companies to cover their demands of IT resources saving costs and gaining flexibility in the deployment of infrastructures by paying under demand these resources. However, considering a scenario with various services to be allocated in more than one cloud, it is necessary to find the distribution of services that minimizes the overall operating costs. This paper researches on the resource allocation methodology to be applied in a multi-cloud scenario based on the findings derived from the framework used for the FINESCE project. The purpose of this work is to define a methodology to assist on the hybrid cloud selection and configuration in the Smart Grid for both generic and highly-constrained scenarios in terms of latency and availability. Specifically, the presented method is aimed to determine which is the best cloud to allocate a resource by (1) optimizing the system with the information of the network and (2) minimizing the occurrence of collapsed or underused virtual machines. Also, to assess the performance of this method and any alternative proposals, a general set of metrics has been defined. These metrics have been refined taking into account the expertise of FINESCE partners in order to shape Smart Grid clouds and reduce the complexity of computation. Finally, using the data extracted from the FINESCE testbed, a decision tree is used to come up with the best resource allocation scheme.
面向智能电网的混合云资源分配
混合云的使用使公司能够满足其对IT资源的需求,节省成本,并通过按需支付这些资源来获得基础设施部署的灵活性。但是,考虑到要在多个云中分配各种服务的场景,有必要找到使总体运营成本最小化的服务分布。本文基于FINESCE项目框架的研究结果,研究了应用于多云场景的资源分配方法。这项工作的目的是定义一种方法,以帮助智能电网在延迟和可用性方面为通用和高度受限的场景进行混合云选择和配置。具体来说,所提出的方法旨在通过(1)使用网络信息优化系统和(2)最大限度地减少崩溃或未充分使用的虚拟机的发生来确定哪一个云是分配资源的最佳云。此外,为了评估该方法的性能和任何替代建议,已经定义了一组通用的度量标准。考虑到FINESCE合作伙伴的专业知识,为了塑造智能电网云和降低计算的复杂性,这些指标已经得到了改进。最后,利用FINESCE测试平台提取的数据,采用决策树的方法得出最佳资源分配方案。
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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