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首页> 外文期刊>IEEE Transactions on Parallel and Distributed Systems >An Error-Minimizing Framework for Localizing Jammers in Wireless Networks
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An Error-Minimizing Framework for Localizing Jammers in Wireless Networks

机译:用于在无线网络中本地化干扰器的最小化错误框架

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摘要

Jammers can severely disrupt the communications in wireless networks, and jammers' position information allows the defender to actively eliminate the jamming attacks. Thus, in this paper, we aim to design a framework that can localize one or multiple jammers with a high accuracy. Most of existing jammer-localization schemes utilize indirect measurements (e.g., hearing ranges) affected by jamming attacks, which makes it difficult to localize jammers accurately. Instead, we exploit a direct measurement--the strength of jamming signals (JSS). Estimating JSS is challenging as jamming signals may be embedded in other signals. As such, we devise an estimation scheme based on ambient noise floor and validate it with real-world experiments. To further reduce estimation errors, we define an evaluation feedback metric to quantify the estimation errors and formulate jammer localization as a nonlinear optimization problem, whose global optimal solution is close to jammers' true positions. We explore several heuristic search algorithms for approaching the global optimal solution, and our simulation results show that our error-minimizing-based framework achieves better performance than the existing schemes. In addition, our error-minimizing framework can utilize indirect measurements to obtain a better location estimation compared with prior work.
机译:干扰器会严重破坏无线网络中的通信,并且干扰器的位置信息使防御者可以主动消除干扰攻击。因此,在本文中,我们旨在设计一种可以高精度定位一个或多个干扰器的框架。现有的大多数干扰器定位方案利用受干扰攻击影响的间接测量值(例如,听觉范围),这使得难以准确定位干扰器。相反,我们采用直接测量-干扰信号(JSS)的强度。由于干扰信号可能会嵌入到其他信号中,因此估算JSS具有挑战性。因此,我们设计了一种基于环境本底噪声的估计方案,并通过实际实验对其进行了验证。为了进一步减少估计误差,我们定义了一个评估反馈度量来量化估计误差,并将干扰器定位公式化为非线性优化问题,其全局最优解接近干扰器的真实位置。我们探索了几种启发式搜索算法来逼近全局最优解,我们的仿真结果表明,基于错误最小化的框架比现有方案具有更好的性能。此外,与先前的工作相比,我们的错误最小化框架可以利用间接测量来获得更好的位置估计。

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