When users exchange data with Unmanned Aerial vehicles - (UAVs) over air-to-ground (A2G) wireless communication networks, they expose the link to attacks that could increase packet loss and might disrupt connectivity. For example, in emergency deliveries, losing control information (i.e data related to the UAV control communication) might result in accidents that cause UAV destruction and damage to buildings or other elements in a city. To prevent these problems, these issues must be addressed in 5G and 6G scenarios. This research offers a deep learning (DL) approach for detecting attacks in UAVs equipped with orthogonal frequency division multiplexing (OFDM) receivers on Clustered Delay Line (CDL) channels in highly complex scenarios involving authenticated terrestrial users, as well as attackers in unknown locations. We use the two observable parameters available in 5G UAV connections: the Received Signal Strength Indicator (RSSI) and the Signal to Interference plus Noise Ratio (SINR). The prospective algorithm is generalizable regarding attack identification, which does not occur during training. Further, it can identify all the attackers in the environment with 20 terrestrial users. A deeper investigation into the timing requirements for recognizing attacks show that after training, the minimum time necessary after the attack begins is 100 ms, and the minimum attack power is 2 dBm, which is the same power that the authenticated UAV uses. Our algorithm also detects moving attackers from a distance of 500 m.
翻译:当用户在空对地无线通信网络上与无人驾驶航空飞行器(无人驾驶航空飞行器)交换数据时,他们暴露了与可能增加包损失和可能破坏连通性的攻击之间的联系,例如,在紧急交付时,失去控制信息(即与无人驾驶航空控制通信有关的数据)可能导致事故,造成无人驾驶航空飞行器的破坏,并损坏城市的建筑物或其他组成部分;为防止这些问题,必须在5G和6G情景中处理这些问题。这一研究提供了一种深层次学习(DL)方法,用以发现装备有或地心频率分数多轴(OFDM)的超频接收器的无人驾驶飞行器在集束延迟线(CDL)接收器上进行的攻击。例如,在紧急情况下交付时,失去控制信息(即与无人驾驶航空控制通信通信有关的数据)可能导致事故造成无人驾驶飞行器的破坏,导致城市建筑物或建筑物损坏。为了防止这些问题,这些问题必须在5G和6G情景中加以解决。这种潜在算法可以概括地识别攻击,在训练期间不会发生。此外,它可以辨别出环境内所有攻击者在经认证的远程传输的远程接收者,在20个地面用户之后开始进行最起码的调查。