基于主成分分析(PCA)的无线Mesh网络异常检测与识别

Z. Zaidi, Sara Hakami, T. Moors, B. Landfeldt
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引用次数: 20

摘要

随着无线网络的普及,异常检测正成为一个强大而必要的组成部分。在本文中,我们评估了基于PCA的无线网状网络异常检测的有效性。PCA最初是为有线网络开发的。我们的实验表明,在易受干扰的无线环境中检测不同类型的异常是可能的。然而,PCA对流量中的微小变化的敏感性促使我们开发了一种异常识别方案,该方案可以自动识别导致检测到的异常的流及其在数据包数量方面的贡献。我们的结果表明,该识别方案能够区分假警报和真实异常,并在发生真实故障或威胁的情况下查明罪魁祸首。实验在悉尼城市街道布置的8节点网格测试台上进行,在不同的现实交通场景下进行。我们的识别方案便于使用基于PCA的方法在无线网络中进行实时异常检测,因为它可以在监测节点本地过滤假警报,而不会产生过多的计算开销。
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Detection and Identification of Anomalies in Wireless Mesh Networks Using Principal Component Analysis (PCA)
Anomaly detection is becoming a powerful and necessary component as wireless networks gain popularity. In this paper, we evaluate the efficacy of PCA based anomaly detection for wireless mesh networks. PCA was originally developed for wired networks. Our experiments show that it is possible to detect different types of anomalies in an interference prone wireless environment. However, the sensitivity of PCA to small changes in flows prompted us to develop an anomaly identification scheme which automatically identifies the flow(s) causing the detected anomaly and their contributions in terms of number of packets. Our results show that the identification scheme is able to differentiate false alarms from real anomalies and pinpoint the culprit(s) in case of a real fault or threat. The experiments were performed over an 8 node mesh testbed deployed in an urban street layout in Sydney, under different realistic traffic scenarios. Our identification scheme facilitates the use of PCA based method for real-time anomaly detection in wireless networks as it can filter the false alarms locally at the monitoring nodes without excessive computational overhead.
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