Location based services are expected to play a major role in future generation cellular networks, starting from the incoming 5G systems. At the same time, localization technologies may be severely affected by attackers capable to deploy low cost fake base stations and use them to alter localization signals. In this paper, we concretely focus on two classes of threats: noise-like jammers, whose objective is to reduce the signal-to-noise ratio, and spoofing/meaconing attacks, whose objective is to inject false or erroneous information into the receiver. Then, we formulate the detection problems as binary hypothesis tests and solve them resorting to the generalized likelihood ratio test design procedure as well as the Latent Variable Models, which involves the expectation-maximization algorithm to estimate the unknown data distribution parameters. The proposed techniques can be applied to a large class of location data regardless the subsumed network architecture. The performance analysis is conducted over simulated data generated by using measurement models from the literature and highlights the effectiveness of the proposed approaches in detecting the aforementioned classes of attacks.
翻译:定位服务预计将在下一代蜂窝网络中发挥重要作用,从5G系统开始。与此同时,地方化技术可能会受到有能力部署低成本假基站并利用它们改变本地化信号的攻击者的严重影响。在本文件中,我们具体侧重于两类威胁:类似噪音的干扰器,其目标是减少信号对噪音的比例,以及嘲笑/测相攻击,目的是向接收者输入虚假或错误的信息。然后,我们将探测问题作为二元假设测试,并用通用概率比测试设计程序以及冷冻变量模型来解决,这涉及对未知数据分布参数进行预期-最大化算法估计。提议的技术可以适用于大型定位数据,而不论网络结构的组合。对通过使用文献的测量模型产生的模拟数据进行绩效分析,并突出拟议方法在检测上述攻击类别方面的有效性。