论文标题

空中的联合学习:与无人机群的联合电力分配和日程安排

Federated Learning in the Sky: Joint Power Allocation and Scheduling with UAV Swarms

论文作者

Zeng, Tengchan, Semiari, Omid, Mozaffari, Mohammad, Chen, Mingzhe, Saad, Walid, Bennis, Mehdi

论文摘要

无人驾驶飞机(UAV)群必须利用机器学习(ML),以执行从协调的轨迹计划到合作目标识别的各种任务。但是,由于无人机群和地面基站(BSS)之间缺乏连续的连接,因此使用集中式ML将具有挑战性,尤其是在处理大量数据时。在本文中,提出了一个新颖的框架,以在无人机群中实施分布式联合学习(FL)算法,该算法由领先的无人机和几个无人机组成。每个以下无人机都会根据其收集的数据训练本地FL模型,然后将此训练有素的本地模型发送给领先的无人机,该模型将汇总接收到的模型,生成全局FL模型并将其传输给关注者,从而通过内部干扰网络将其传输给关注者。为了确定无线因素(如风向和机械振动导致的褪色,传输延迟和无人机天线角度偏差)如何影响FL的性能,对FL进行了严格的合并分析。然后,提出了联合功率分配和调度设计,以优化FL的收敛速率,同时考虑到收敛期间的能量消耗以及群体控制系统施加的延迟要求。仿真结果验证了FL收敛分析的有效性,并表明与基线设计相比,联合设计策略可以将收敛所需的通信回合数量减少多达35%。

Unmanned aerial vehicle (UAV) swarms must exploit machine learning (ML) in order to execute various tasks ranging from coordinated trajectory planning to cooperative target recognition. However, due to the lack of continuous connections between the UAV swarm and ground base stations (BSs), using centralized ML will be challenging, particularly when dealing with a large volume of data. In this paper, a novel framework is proposed to implement distributed federated learning (FL) algorithms within a UAV swarm that consists of a leading UAV and several following UAVs. Each following UAV trains a local FL model based on its collected data and then sends this trained local model to the leading UAV who will aggregate the received models, generate a global FL model, and transmit it to followers over the intra-swarm network. To identify how wireless factors, like fading, transmission delay, and UAV antenna angle deviations resulting from wind and mechanical vibrations, impact the performance of FL, a rigorous convergence analysis for FL is performed. Then, a joint power allocation and scheduling design is proposed to optimize the convergence rate of FL while taking into account the energy consumption during convergence and the delay requirement imposed by the swarm's control system. Simulation results validate the effectiveness of the FL convergence analysis and show that the joint design strategy can reduce the number of communication rounds needed for convergence by as much as 35% compared with the baseline design.

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