A Link-Quality Anomaly Detection Framework for Software-Defined Wireless Mesh Networks

Sotiris Skaperas;Lefteris Mamatas;Vassilis Tsaoussidis
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Abstract

Software-defined wireless mesh networks are being increasingly deployed in diverse settings, such as smart cities and public Wi-Fi access infrastructures. The signal propagation and interference issues that typically characterize these environments can be handled by employing SDN controller mechanisms, effectively monitoring link quality and triggering appropriate mitigation strategies, such as adjusting link and/or routing protocols. In this paper, we propose an unsupervised machine learning (ML) online framework for link quality detection consisting of: 1) improved preprocessing clustering algorithm, based on elastic similarity measures, to efficiently characterize wireless links in terms of reliability, and 2) a novel change point (CP) detector for the real-time identification of anomalies in the quality of selected links, which minimizes the overestimation error through the incorporation of a rank-based test and a recursive max-type procedure. In this sense, considering the communication constraints of such environments, our approach minimizes the detection overhead and the inaccurate decisions caused by overestimation. The proposed detector is validated, both on its individual components and as an overall mechanism, against synthetic but also real data traces; the latter being extracted from real wireless mesh network deployments.
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软件定义无线网格网络的链路质量异常检测框架
软件定义的无线网格网络正越来越多地部署在各种环境中,如智能城市和公共 Wi-Fi 接入基础设施。信号传播和干扰问题是这些环境的典型特征,可通过采用 SDN 控制器机制来处理,有效监控链路质量并触发适当的缓解策略,如调整链路和/或路由协议。在本文中,我们提出了一种用于链路质量检测的无监督机器学习(ML)在线框架,该框架由以下部分组成:1) 基于弹性相似度量的改进型预处理聚类算法,可有效描述无线链路的可靠性特征;以及 2) 用于实时识别选定链路质量异常的新型变化点(CP)检测器,该检测器通过基于等级的测试和递归最大值类型程序将高估误差降至最低。从这个意义上说,考虑到此类环境的通信限制,我们的方法最大限度地减少了检测开销和高估造成的不准确决策。我们对所提出的检测器进行了验证,无论是对其单个组件还是作为一个整体机制,都进行了合成和真实数据追踪;后者是从真实的无线网状网络部署中提取的。
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