Federated learning (FL) is a promising distributed learning technique particularly suitable for wireless learning scenarios since it can accomplish a learning task without raw data transportation so as to preserve data privacy and lower network resource consumption. However, current works on FL over wireless networks do not profoundly study the fundamental performance of FL over wireless networks that suffers from communication outage due to channel impairment and network interference. To accurately exploit the performance of FL over wireless networks, this paper proposes a novel intermittent FL model over a cellular-connected unmanned aerial vehicle (UAV) network, which characterizes communication outage from UAV (clients) to their server and data heterogeneity among the datasets at UAVs. We propose an analytically tractable framework to derive the uplink outage probability and use it to devise a simulation-based approach so as to evaluate the performance of the proposed intermittent FL model. Our findings reveal how the intermittent FL model is impacted by uplink communication outage and UAV deployment. Extensive numerical simulations are provided to show the consistency between the simulated and analytical performances of the proposed intermittent FL model.
翻译:联邦学习(FL)是一种有希望的分布式学习技术,特别适合于无线学习,因为它可以在没有原始数据传输的情况下完成学习任务,从而保护数据隐私和降低网络资源消耗;然而,目前对无线网络的FL工程并没有深入研究FL对无线网络的基本表现,这种网络由于频道受损和网络干扰而出现通信中断;为准确利用FL在无线网络上的性能,本文件提议在蜂窝连接的无人驾驶飞行器(UAV)网络上采用一个新的间歇性FL模型,这种模型将UAV(客户)到其服务器的通信中断和UAV数据集之间的数据异质性特征定性为特征。我们提出了一个可分析的可移动框架,以得出连接的概率,并利用它设计一个模拟法方法来评价拟议的间歇性FL模型的性能。我们的调查结果揭示了间歇性FL模型如何受到连接断时和UAV部署的影响。我们提供了广泛的数字模拟,以显示拟议的间歇性FL模型的模拟和分析性能的一致性。