4.7 Article

Semi-Distributed Resource Management in UAV-Aided MEC Systems: A Multi-Agent Federated Reinforcement Learning Approach

Journal

IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
Volume 70, Issue 12, Pages 13162-13173

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TVT.2021.3118446

Keywords

Unmanned aerial vehicle (UAV); multi-access edge computing (MEC); deep reinforcement learning (DRL); federated learning (FL); resource allocation

Funding

  1. National Natural Science Foundation of China [U2001213, 61971191]
  2. Beijing Natural Science Foundation [L182018, L201011]
  3. National Key Research and Development project [2020YFB1807204]
  4. open project of Shanghai Institute of Microsystem and Information Technology [20190910]
  5. Key Project of Natural Science Foundation of Jiangxi Province [20202ACBL202006]

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In this paper, an algorithm aimed at solving the sum power minimization problem in UAV-enabled edge computing systems is proposed. Centralized MARL algorithm and semi-distributed MAFRL algorithm are introduced, with simulation results demonstrating the performance advantages of the semi-distributed MAFRL algorithm.
Recently, unmanned aerial vehicle (UAV)-enabled multi-access edge computing (MEC) has been introduced as a promising edge paradigm for the future space-aerial-terrestrial integrated communications. Due to the high maneuverability of UAVs, such a flexible paradigm can improve the communication and computation performance for multiple user equipments (UEs). In this paper, we consider the sum power minimization problem by jointly optimizing resource allocation, user association, and power control in an MEC system with multiple UAVs. Since the problem is nonconvex, we propose a centralized multi-agent reinforcement learning (MARL) algorithm to solve it. However, the centralized method ignores essential issues like distributed framework and privacy concern. We then propose a multi-agent federated reinforcement learning (MAFRL) algorithm in a semi-distributed framework. Meanwhile, we introduce the Gaussian differentials to protect the privacy of all UEs. Simulation results show that the semi-distributed MAFRL algorithm achieves close performances to the centralized MARL algorithm and significantly outperform the benchmark schemes. Moreover, the semi-distributed MAFRL algorithm costs 23% lower opeartion time than the centralized algorithm.

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