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Multi-agent reinforcement learning for edge information sharing in vehicular networks 被引量:3

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摘要 To guarantee the heterogeneous delay requirements of the diverse vehicular services,it is necessary to design a full cooperative policy for both Vehicle to Infrastructure(V2I)and Vehicle to Vehicle(V2V)links.This paper investigates the reduction of the delay in edge information sharing for V2V links while satisfying the delay requirements of the V2I links.Specifically,a mean delay minimization problem and a maximum individual delay minimization problem are formulated to improve the global network performance and ensure the fairness of a single user,respectively.A multi-agent reinforcement learning framework is designed to solve these two problems,where a new reward function is proposed to evaluate the utilities of the two optimization objectives in a unified framework.Thereafter,a proximal policy optimization approach is proposed to enable each V2V user to learn its policy using the shared global network reward.The effectiveness of the proposed approach is finally validated by comparing the obtained results with those of the other baseline approaches through extensive simulation experiments.
出处 《Digital Communications and Networks》 SCIE CSCD 2022年第3期267-277,共11页 数字通信与网络(英文版)
基金 supported in part by the National Natural Science Foundation of China under grants 61901078,61771082,61871062,and U20A20157 in part by the Science and Technology Research Program of Chongqing Municipal Education Commission under grant KJQN201900609 in part by the Natural Science Foundation of Chongqing under grant cstc2020jcyj-zdxmX0024 in part by University Innovation Research Group of Chongqing under grant CXQT20017 in part by the China University Industry-University-Research Collaborative Innovation Fund(Future Network Innovation Research and Application Project)under grant 2021FNA04008.
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