Multi-Agent Federated Reinforcement Learning Strategy for Mobile Virtual Reality Delivery Networks

被引:5
|
作者
Liu, Zhikai [1 ]
Garg, Navneet [2 ]
Ratnarajah, Tharmalingam [1 ]
机构
[1] Univ Edinburgh, Edinburgh EH8 9YL, Scotland
[2] Univ Edinburgh, Inst Digital Commun, Edinburgh EH8 9YL, Scotland
基金
英国工程与自然科学研究理事会;
关键词
Servers; Delays; Three-dimensional displays; Energy consumption; Edge computing; Task analysis; Base stations; 3C strategy; multi-agent reinforcement learning; federated learning; VR delivery; massive MIMO; RESOURCE-ALLOCATION; JOINT OPTIMIZATION; EDGE; COMPUTATION; COMMUNICATION; MANAGEMENT; PLACEMENT; SYSTEMS; CACHE;
D O I
10.1109/TNSE.2023.3292570
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Virtual reality (VR) services have become increasingly popular but presented challenges for wireless communications due to the large amounts of data requirements. In this work, we consider a dynamic changing VR scenario and propose a joint caching, computing, and communication (3 C) strategy, subject to bounded latency, power, caching, and computing constraints, to minimize long-term discounted delay and energy consumption for VR projection. Our approach involves a three-layer communication system consisting of a cloud server, UAV (Unmanned Aerial Vehicle) base stations with mMIMO (massive Multiple-Input Multiple-Output) acting as edge servers, and mobile user devices. To satisfy different users' requirements, we design eight service routes for 3 C decisions. We then employ federated multi-agent deep reinforcement learning (RL) to help users obtain optimal service routes influenced by their location, orientation, and content preference, with edge servers acting as learning agents. For the RL part, we design multi-input and output actor and critic networks deployed on edge servers. For the Federated Learning (FL) part, we present the federated average process and mathematically prove its convergence. Simulation results demonstrate our proposed algorithm can effectively reduce training loss, converge smoothly, and significantly reduce both delay and energy consumption by approximately 17.2% and 23.5%, respectively.
引用
收藏
页码:100 / 114
页数:15
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