CloudIQ:用于处理数据中心基站的框架

Sourjya Bhaumik, Shoban Preeth Chandrabose, Manjunath Kashyap Jataprolu, G.Manoj kumar, A. Muralidhar, P. Polakos, V. Srinivasan, Thomas Y. C. Woo
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引用次数: 248

摘要

蜂窝行业正在评估在无线接入网络中分配信号处理的体系结构。其中一种选择是在一个中心位置的共享计算资源池上处理所有基站的信号。在这种集中式架构中,现有的基站将被天线和其他一些有源射频组件所取代,而包括物理层在内的其余数字处理将在中心位置进行。这种模式具有潜在的好处,包括由于较少的站点访问而降低网络运营成本,易于升级和降低站点租赁成本,以及通过跨多个基站的联合信号处理技术提高网络性能。此外,还可以利用基站处理负载的变化,将基站集中到更少的计算资源中,从而允许运营商通过关闭剩余的处理器来减少能耗,或者通过提供更少的计算资源来降低成本。本文就这方面进行了研究。具体而言,我们在本文中做出了以下贡献。基于真实世界的数据,我们描述了在集中式架构中使用共享的同质计算资源来处理来自多个基站的信号所带来的潜在节省。我们表明,集中式架构可以通过利用跨基站处理负载的变化,潜在地节省至少22%的计算资源。通过对成功处理基站信号的统计保证,可以实现这些节省。我们还设计了一个框架,该框架有两个目标:(i)将基站集划分为组,这些组在给定的统计保证的共享同构计算平台上同时进行处理,以及(ii)调度分配给平台的基站集,以满足其实时处理要求。这种分区和调度框架为一亿分之一的故障概率节省了高达19%的计算资源。我们将此解决方案称为CloudIQ。最后,我们使用符合3GPP标准的5mhz LTE实现实现并广泛评估了CloudIQ框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CloudIQ: a framework for processing base stations in a data center
The cellular industry is evaluating architectures to distribute the signal processing in radio access networks. One of the options is to process the signals of all base stations on a shared pool of compute resources in a central location. In this centralized architecture, the existing base stations will be replaced with just the antennas and a few other active RF components, and the remainder of the digital processing including the physical layer will be carried out in a central location. This model has potential benefits that include a reduction in the cost of operating the network due to fewer site visits, easy upgrades, and lower site lease costs, and an improvement in the network performance with joint signal processing techniques that span multiple base stations. Further there is a potential to exploit variations in the processing load across base stations, to pool the base stations into fewer compute resources, thereby allowing the operator to either reduce energy consumption by turning the remaining processors off or reducing costs by provisioning fewer compute resources. We focus on this aspect in this paper. Specifically, we make the following contributions in the paper. Based on real-world data, we characterise the potential savings if shared homogeneous compute resources are used to process the signals from multiple base stations in the centralized architecture. We show that the centralized architecture can potentially result in savings of at least 22 % in compute resources by exploiting the variations in the processing load across base stations. These savings are achievable with statistical guarantees on successfully processing the base station's signals. We also design a framework that has two objectives: (i) partitioning the set of base stations into groups that are simultaneously processed on a shared homogeneous compute platform for a given statistical guarantee, and (ii) scheduling the set of base stations allocated to a platform in order to meet their real-time processing requirements. This partitioning and scheduling framework saves up to 19 % of the compute resources for a probability of failure of one in 100 million. We refer to this solution as CloudIQ. Finally we implement and extensively evaluate the CloudIQ framework with a 3GPP compliant implementation of 5 MHz LTE.
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