奇异谱分析在CRNs在线异常检测中的应用

Qi Dong, Zekun Yang, Yu Chen, Xiaohua Li, K. Zeng
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引用次数: 8

摘要

认知无线网络(crn)被认为是一种很有前途的技术,它允许辅助用户(su)广泛地探索频谱资源的使用效率,同时不会给许可用户带来干扰。由于无线网络环境的不规范,crn容易受到各种恶意实体的攻击。因此,首先检测异常是至关重要的。然而,从crn的内在特征来看,几乎没有一种普遍适用的异常检测方案。奇异谱分析(SSA)在理论上已被证明是一种准确、快速检测运行(随机)过程特征变化的最佳方法。此外,SSA是一种无模型的方法,对于不同类型的异常不需要假设参数模型,这使其成为一种通用的异常检测方案。本文引入了一种基于相干性的自适应SSA方法参数和分量选择机制,并在此基础上建立了CRNs滑动窗口在线异常检测器。实验结果表明,基于ssa的异常检测器对多种异常具有较高的检测精度。
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Exploration of Singular Spectrum Analysis for Online Anomaly Detection in CRNs
Cognitive radio networks (CRNs) have been recognized as a promising technology that allows secondary users (SUs) extensively explore spectrum resource usage efficiency, while not introducing interference to licensed users. Due to the unregulated wireless network environment, CRNs are susceptible to various malicious entities. Thus, it is critical to detect anomalies in the first place. However, from the perspective of intrinsic features of CRNs, there is hardly in existence of an universal applicable anomaly detection scheme. Singular Spectrum Analysis (SSA) has been theoretically proven an optimal approach for accurate and quick detection of changes in the characteristics of a running (random) process. In addition, SSA is a model-free method and no parametric models have to be assumed for different types of anomalies, which makes it a universal anomaly detection scheme. In this paper, we introduce an adaptive parameter and component selection mechanism based on coherence for basic SSA method, upon which we built up a sliding window online anomaly detector in CRNs. Our experimental results indicate great accuracy of the SSA-based anomaly detector for multiple anomalies.
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