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Robust Tracking of Small-Scale Mobile Primary User in Cognitive Radio Networks

机译:认知无线电网络中小规模移动主要用户的鲁棒跟踪

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In cognitive radio networks (CRNs), secondary users must be able to accurately and reliably track the location of small-scale mobile primary users/devices (e.g., wireless microphones) in order to efficiently utilize spatial spectrum opportunities, while protecting primary communications. However, accurate tracking of the location of mobile primary users is difficult due mainly to the CR-unique constraint, i.e., localization must rely solely on reported sensing results (i.e., measured primary signal strengths), which can easily be compromised by malicious sensors (or attackers). To cope with this challenge, we propose a new framework, called $(S)$equential m$(O)$nte car$(L)$o comb$(I)$ned with shadow-fa$(D)$ing estimation (SOLID), for accurate, attack/fault-tolerant tracking of small-scale mobile primary users. The key idea underlying SOLID is to exploit the temporal shadow fading correlation in sensing results induced by the primary user's mobility. Specifically, SOLID augments conventional Sequential Monte Carlo (SMC)-based target tracking with shadow-fading estimation. By examining the shadow-fading gain between the primary transmitter and CRs/sensors, SOLID 1) significantly improves the accuracy of primary tracking regardless of the presence/absence of attack, and 2) successfully masks the abnormal sensing reports due to sensor faults or attacks, preserving localization accuracy and improving spatial spectrum efficiency. Our extensive evaluation in realistic wireless fading environments shows that SOLID lowers localization error by up to 88 percent in the absence of attacks, and 89 percent in the presence of the challenging "slow-poisoning” attack, compared to the conventional SMC-based tracking.
机译:在认知无线电网络(CRN)中,次要用户必须能够准确而可靠地跟踪小规模移动主要用户/设备(例如无线麦克风)的位置,以便有效地利用空间频谱机会,同时保护主要通信。但是,主要由于CR独特的约束,很难精确地跟踪移动主要用户的位置,即定位必须完全依赖于报告的传感结果(即测得的主要信号强度),这很容易受到恶意传感器的损害(或攻击者)。为了应对这一挑战,我们提出了一个新的框架,称为$(S)$等价m $(O)$ nte car $(L)$ o comb $(I)$ ned与shadow-fa $(D)$ ing估计(SOLID),用于对小型移动主要用户进行准确的,具有攻击/容错功能的跟踪。 SOLID的基本思想是在感知主要用户移动性导致的结果时利用时间阴影衰落相关性。具体地说,SOLID通过阴影淡入淡出估计来增强基于常规序列蒙特卡洛(SMC)的目标跟踪。通过检查主发射机与CR /传感器之间的阴影衰减增益,SOLID 1)显着提高了主跟踪的准确性,无论是否存在攻击,并且2)成功掩盖了由于传感器故障或攻击而引起的异常传感报告,保持定位精度并提高空间频谱效率。与传统的基于SMC的跟踪相比,我们在逼真的无线衰落环境中进行的广泛评估表明,在没有攻击的情况下,SOLID可以将定位错误降低多达88%,在具有挑战性的“慢中毒”攻击的情况下,可以将定位错误降低89%。

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