Uncertainty-driven ensemble forecasting of QoS in Software Defined Networks

Kostas Kolomvatsos, C. Anagnostopoulos, Angelos K. Marnerides, Q. Ni, S. Hadjiefthymiades, D. Pezaros
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引用次数: 7

Abstract

Software Defined Networking (SDN) is the key technology for combining networking and Cloud solutions to provide novel applications. SDN offers a number of advantages as the existing resources can be virtualized and orchestrated to provide new services to the end users. Such a technology should be accompanied by powerful mechanisms that ensure the end-to-end quality of service at high levels, thus, enabling support for complex applications that satisfy end users needs. In this paper, we propose an intelligent mechanism that agglomerates the benefits of SDNs with real-time “Big Data” forecasting analytics. The proposed mechanism, as part of the SDN controller, supports predictive intelligence by monitoring a set of network performance parameters, forecasting their future values, and deriving indications on potential service quality violations. By treating the performance measurements as time-series, our mechanism employs a novel ensemble forecasting methodology to estimate their future values. Such predictions are fed to a Type-2 Fuzzy Logic system to deliver, in real-time, decisions related to service quality violations. Such decisions proactively assist the SDN controller for providing the best possible orchestration of the virtualized resources. We evaluate the proposed mechanism w.r.t. precision and recall metrics over synthetic data.
软件定义网络中QoS的不确定性驱动集成预测
软件定义网络(SDN)是将网络和云解决方案相结合以提供新颖应用的关键技术。SDN提供了许多优势,因为可以对现有资源进行虚拟化和编排,以向最终用户提供新的服务。这种技术应该伴随着强大的机制,以确保高水平的端到端服务质量,从而支持满足最终用户需求的复杂应用程序。在本文中,我们提出了一种智能机制,将sdn的优势与实时“大数据”预测分析结合起来。提议的机制,作为SDN控制器的一部分,通过监视一组网络性能参数,预测它们的未来值,并得出潜在服务质量违规的指示,来支持预测智能。通过将绩效测量视为时间序列,我们的机制采用了一种新颖的集合预测方法来估计其未来值。这样的预测被输入到2型模糊逻辑系统中,以实时地提供与服务质量违规相关的决策。这样的决策主动地帮助SDN控制器提供虚拟化资源的最佳编排。我们评估了所提出的机制w.r.t.精度和召回指标在合成数据。
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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