边缘数据中心的位置感知负载预测

Chanh Nguyen Le Tan, C. Klein, E. Elmroth
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引用次数: 33

摘要

移动边缘云(MEC)是一个补充传统集中式云的平台,包括将计算和存储容量移动到离用户更近的地方——例如,作为基站中的边缘数据中心(EDC)——以减少应用程序级延迟和网络带宽。基站的有限覆盖半径和每个EDC的有限容量与用户移动性交织在一起,对运营商进行容量调整和规划的能力提出了挑战。为了应对这一挑战,可以执行主动的资源供应。预先估计每个EDC的资源使用情况,为决策提供参考,有效地确定各种管理动作,确保EDC持续满足服务质量(QoS),同时最大限度地提高资源利用率。在本文中,我们提出了位置感知负荷预测。对于每个EDC,不仅可以使用其自身的历史负载时间序列来预测负载(就像集中式云那样),还可以使用邻近EDC的历史负载时间序列来预测负载。我们采用向量自回归模型(VAR),利用相邻EDCs负载时间序列之间的相关性。我们使用真实世界的移动轨迹来评估我们的方法,以模拟每个EDC中的负载,并进行各种实验来评估提出的算法。结果表明,我们提出的算法能够在具有大量平均负载的edc上实现高达93%的平均精度,与最先进的方法相比,预测精度略微提高4.3%。考虑到MEC的预期规模,这意味着大量的成本节约,例如,服务器可以在不违反QoS的情况下关闭。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location-aware load prediction in Edge Data Centers
Mobile Edge Cloud (MEC) is a platform complementing traditional centralized clouds, consisting in moving computing and storage capacity closer to users - e.g., as Edge Data Centers (EDC) in base stations - in order to reduce application-level latency and network bandwidth. The bounded coverage radius of base station and limited capacity of each EDC intertwined with user mobility challenge the operator's ability to perform capacity adjustment and planning. To face this challenge, proactive resource provisioning can be performed. The resource usage in each EDC is estimated in advance, which is made available for the decision making to efficiently determine various management actions and ensure that EDCs persistently satisfies the Quality of Service (QoS), while maximizing resource utilization. In this paper, we propose location-aware load prediction. For each EDC, load is not only predicted using its own historical load time series - as done for centralized clouds - but also those of its neighbor EDCs. We employ Vector Autoregression Model (VAR) in which the correlation among adjacent EDCs load time series are exploited. We evaluate our approach using real world mobility traces to simulate load in each EDC and conduct various experiments to evaluate the proposed algorithm. Result shows that our proposed algorithm is able to achieve an average accuracy of up to 93% on EDCs with substantial average load, which slightly improves prediction by 4.3% compared to the state-of-the-art approach. Considering the expected scale of MEC, this translates to substantial cost savings e.g., servers can be shutdown without QoS violation.
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