TY - EJOU
AU - Duan, Xuting
AU - Zhao, Yuanhao
AU - Zheng, Kunxian
AU - Tian, Daxin
AU - Zhou, Jianshan
AU - Gao, Jian
TI - Cooperative Channel Assignment for VANETs Based on Dual Reinforcement Learning
T2 - Computers, Materials \& Continua
PY - 2021
VL - 66
IS - 2
SN - 1546-2226
AB - Dynamic channel assignment (DCA) is significant for extending vehicular ad hoc network (VANET) capacity and mitigating congestion. However, the un-known global state information and the lack of centralized control make channel assignment performances a challenging task in a distributed vehicular direct communication scenario. In our preliminary field test for communication under V2X scenario, we find that the existing DCA technology cannot fully meet the communication performance requirements of VANET. In order to improve the communication performance, we firstly demonstrate the feasibility and potential of reinforcement learning (RL) method in joint channel selection decision and access fallback adaptation design in this paper. Besides, a dual reinforcement learning (DRL)-based cooperative DCA (DRL-CDCA) mechanism is proposed. Specifically, DRL-CDCA jointly optimizes the decision-making behaviors of both the channel selection and back-off adaptation based on a multi-agent dual reinforcement learning framework. Besides, nodes locally share and incorporate their individual rewards after each communication to achieve regional consistency optimization. Simulation results show that the proposed DRL-CDCA can better reduce the one-hop packet delay, improve the packet delivery ratio on average when compared with two other existing mechanisms.
KW - Vehicular ad hoc networks; reinforcement learning; dynamic channel assignment
DO - 10.32604/cmc.2020.014484