Federated Learning Empowered Resource Allocation in UAV-Assisted Edge Intelligent Systems

Bintao Hu, Matilda Isaac, Olukunle Mobolaji Akinola, H. Hafizh, Wenzhang Zhang
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Abstract

Mobile edge computing (MEC) has been considered a promising advanced technology to support delay-sensitive tasks of user equipment (UE) in the internet of things (IoT) systems, it is necessary to allow multiple UEs to offload their computationally intensive tasks to a flexible edge computing server, such as an unmanned aerial vehicle (UAV)-assisted edge computing server. However, most existing works mainly focused on minimising energy consumption under the transmission and/or processing delay constraints while ignoring privacy-preserving, which will be challenging when dealing with large volumes of raw data. In this paper, we consider a federated learning (FL) empowered UAV-assisted edge intelligent system to minimise the maximum utility cost (which indicates the relationship between latency and energy consumption) to the selected UE for task processing. We propose to jointly optimise the FL task offloading decisions among all UEs and the communication resource allocation under each epoch. This is achieved by devising a federated learning-based edge intelligence offloading decision optimisation algorithm (FEOA). Simulation results show that our proposed schemes outperform the benchmarks in terms of the maximum cost efficiency among all UEs.
无人机辅助边缘智能系统中的联邦学习授权资源分配
移动边缘计算(MEC)被认为是支持物联网(IoT)系统中用户设备(UE)延迟敏感任务的一种有前途的先进技术,有必要允许多个UE将其计算密集型任务卸载到灵活的边缘计算服务器上,例如无人机(UAV)辅助的边缘计算服务器。然而,大多数现有的工作主要集中在传输和/或处理延迟约束下最小化能源消耗,而忽略了隐私保护,这在处理大量原始数据时将是具有挑战性的。在本文中,我们考虑了一个联邦学习(FL)授权的无人机辅助边缘智能系统,以最小化所选UE的最大效用成本(这表明延迟和能耗之间的关系)以进行任务处理。我们提出联合优化所有ue之间的FL任务卸载决策和每个epoch下的通信资源分配。这是通过设计一个基于联邦学习的边缘智能卸载决策优化算法(FEOA)来实现的。仿真结果表明,在所有ue中,我们提出的方案在最大成本效率方面优于基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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