Fair Resource Allocation for Hierarchical Federated Edge Learning in Space-Air-Ground Integrated Networks via Deep Reinforcement Learning With Hybrid Control

Chong Huang;Gaojie Chen;Pei Xiao;Jonathon A. Chambers;Wei Huang
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Abstract

The space-air-ground integrated network (SAGIN) has become a crucial research direction in future wireless communications due to its ubiquitous coverage, rapid and flexible deployment, and multi-layer cooperation capabilities. However, integrating hierarchical federated learning (HFL) with edge computing and SAGINs remains a complex open issue to be resolved. This paper proposes a novel framework for applying HFL in SAGINs, utilizing aerial platforms and low Earth orbit (LEO) satellites as edge servers and cloud servers, respectively, to provide multi-layer aggregation capabilities for HFL. The proposed system also considers the presence of inter-satellite links (ISLs), enabling satellites to exchange federated learning models with each other. Furthermore, we consider multiple different computational tasks that need to be completed within a limited satellite service time. To maximize the convergence performance of all tasks while ensuring fairness, we propose the use of the distributional soft-actor-critic (DSAC) algorithm to optimize resource allocation in the SAGIN and aggregation weights in HFL. Moreover, we address the efficiency issue of hybrid action spaces in deep reinforcement learning (DRL) through a decoupling and recoupling approach, and design a new dynamic adjusting reward function to ensure fairness among multiple tasks in federated learning. Simulation results demonstrate the superiority of our proposed algorithm, consistently outperforming baseline approaches and offering a promising solution for addressing highly complex optimization problems in SAGINs.
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通过具有混合控制功能的深度强化学习为天空地一体化网络中的分层联合边缘学习分配公平资源
天空地一体化网络(SAGIN)以其无所不在的覆盖、快速灵活的部署和多层次的协同能力,成为未来无线通信的重要研究方向。然而,将分层联邦学习(HFL)与边缘计算和SAGINs相结合仍然是一个有待解决的复杂问题。本文提出了一种新的高通量通量应用框架,利用空中平台和低地球轨道卫星分别作为边缘服务器和云服务器,为高通量通量提供多层聚合能力。该系统还考虑了卫星间链路(ISLs)的存在,使卫星能够相互交换联邦学习模型。此外,我们考虑了需要在有限的卫星服务时间内完成的多个不同的计算任务。为了在保证公平性的同时最大限度地提高所有任务的收敛性能,我们提出了使用分布式软actor-critic (DSAC)算法来优化SAGIN中的资源分配和HFL中的聚合权值。此外,我们通过解耦和重耦合的方法解决了深度强化学习(DRL)中混合动作空间的效率问题,并设计了一种新的动态调整奖励函数,以确保联邦学习中多个任务之间的公平性。仿真结果证明了我们提出的算法的优越性,始终优于基线方法,并为解决SAGINs中高度复杂的优化问题提供了一个有希望的解决方案。
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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