The damage to cellular towers during natural and man-made disasters can disturb the communication services for cellular users. One solution to the problem is using unmanned aerial vehicles to augment the desired communication network. The paper demonstrates the design of a UAV-Assisted Imitation Learning (UnVAIL) communication system that relays the cellular users' information to a neighbor base station. Since the user equipment (UEs) are equipped with buffers with limited capacity to hold packets, UnVAIL alternates between different UEs to reduce the chance of buffer overflow, positions itself optimally close to the selected UE to reduce service time, and uncovers a network pathway by acting as a relay node. UnVAIL utilizes Imitation Learning (IL) as a data-driven behavioral cloning approach to accomplish an optimal scheduling solution. Results demonstrate that UnVAIL performs similar to a human expert knowledge-based planning in communication timeliness, position accuracy, and energy consumption with an accuracy of 97.52% when evaluated on a developed simulator to train the UAV.
翻译:在发生自然和人为灾害期间,蜂窝塔的损坏会扰乱蜂窝用户的通信服务。问题的一个解决办法是使用无人驾驶飞行器来扩大所希望的通信网络。文件展示了无人驾驶飞行器来扩大所希望的通信网络。文件展示了无人驾驶飞行器辅助模拟学习(UVAIL)通信系统的设计,将蜂窝用户的信息传送到邻近基地站。由于用户设备配备的缓冲器能力有限,持有包的能力有限,UniVAIL在不同的用户界面之间进行交替,以减少缓冲溢出的机会,最佳地接近选定的UE以缩短服务时间,并通过作为中继节点发现网络路径。UVAIL利用模拟学习(IL)作为数据驱动的行为克隆方法,以实现最佳的时间安排解决方案。结果显示UVAIL在通信及时性、定位准确性和能源消耗方面与人类专家知识规划相似,在对开发模拟器培训UAVA时,精确度为97.52%。