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Real-Time Misbehavior Detection in IEEE 802.11-Based Wireless Networks: An Analytical Approach

机译:基于IEEE 802.11的无线网络中的实时不良行为检测:一种分析方法

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The distributed nature of the CSMA/CA-based wireless protocols, for example, the IEEE 802.11 distributed coordinated function (DCF), allows malicious nodes to deliberately manipulate their backoff parameters and, thus, unfairly gain a large share of the network throughput. In this paper, we first design a real-time backoff misbehavior detector, termed as the fair share detector (FS detector), which exploits the nonparametric cumulative sum (CUSUM) test to quickly find a selfish malicious node without any a priori knowledge of the statistics of the selfish misbehavior. While most of the existing schemes for selfish misbehavior detection depend on heuristic parameter configuration and experimental performance evaluation, we develop a Markov chain-based analytical model to systematically study the performance of the FS detector in real-time backoff misbehavior detection. Based on the analytical model, we can quantitatively compute the system configuration parameters for guaranteed performance in terms of average false positive rate, average detection delay, and missed detection ratio under a detection delay constraint. We present thorough simulation results to confirm the accuracy of our theoretical analysis as well as demonstrate the performance of the developed FS detector.
机译:基于CSMA / CA的无线协议的分布式性质(例如,IEEE 802.11分布式协调功能(DCF))允许恶意节点故意操纵其退避参数,因此,不公平地获得了很大一部分网络吞吐量。在本文中,我们首先设计了一种实时退避不当行为检测器,称为公平份额检测器(FS检测器),该检测器利用非参数累积和(CUSUM)测试来快速找到自私的恶意节点,而无需任何先验知识。自私行为的统计数据。虽然大多数现有的自私行为不良检测方案都依赖于启发式参数配置和实验性能评估,但我们开发了基于马尔可夫链的分析模型来系统地研究FS检测器在实时补偿行为异常检测中的性能。基于分析模型,我们可以根据平均误报率,平均检测延迟和检测延迟约束下的漏检率,定量计算系统配置参数,以确保性能。我们提供了详尽的仿真结果,以确认我们理论分析的准确性,并证明了开发的FS检测器的性能。

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