TY - JOUR
T1 - Multiple Reconfigurable Intelligent Surfaces Aided V2X Offloading Networks
T2 - a Federated Reinforcement Learning-Based Approach
AU - Zeng, Ming
AU - Zhao, Yanbin
AU - Wang, Jing
AU - Fei, Zesong
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2025
Y1 - 2025
N2 - —With the emergence of a large number of computation intensive and delay sensitive on-vehicle applications, vehicle edge computing (VEC), as an emerging computing paradigm, aims to enhance computing performance by offloading computation tasks to vehicles and edge servers. However, the mobility of vehicles and obstacles which hamper the propagation of electromagnetic signals may result in poor vehicle-to-everything (V2X) channel quality. In this paper, we consider improving the wireless propagation environment by deploying reconfigurable intelligent surface (RIS) devices and study a task offloading strategy in VEC networks assisted by RIS. Under the constraints of vehicle-to-vehicle link reliability and minimum transmission rate requirement, we jointly optimize the RIS reflection coefficient matrix, task vehicle offloading mode and beamforming vector to minimize the average offloading delay of the entire system. Considering the non-convexity of the optimization problem and the isomorphism of task vehicle agents, we propose a feasible joint optimization algorithm based on multi-agent proximal policy optimization with federated learning framework (F-MAPPO). Additionally, this paper further develops a low-complexity F-MAPPO algorithm (LF-MAPPO) to address the large multidimensional state space problem in F-MAPPO algorithm. Numerical simulation results show that compared with centralized and decentralized MAPPO algorithms, the proposed algorithm achieves performance boost in convergence. Moreover, the proposed LF-MAPPO algorithm reduces the average task processing latency by 44.05% and 48.91% compared to the schemes without RIS devices and without vehicle-to-vehicle (V2V) link, which indicate the crucial role of introducing RIS and V2V task offloading in improving the system performance.
AB - —With the emergence of a large number of computation intensive and delay sensitive on-vehicle applications, vehicle edge computing (VEC), as an emerging computing paradigm, aims to enhance computing performance by offloading computation tasks to vehicles and edge servers. However, the mobility of vehicles and obstacles which hamper the propagation of electromagnetic signals may result in poor vehicle-to-everything (V2X) channel quality. In this paper, we consider improving the wireless propagation environment by deploying reconfigurable intelligent surface (RIS) devices and study a task offloading strategy in VEC networks assisted by RIS. Under the constraints of vehicle-to-vehicle link reliability and minimum transmission rate requirement, we jointly optimize the RIS reflection coefficient matrix, task vehicle offloading mode and beamforming vector to minimize the average offloading delay of the entire system. Considering the non-convexity of the optimization problem and the isomorphism of task vehicle agents, we propose a feasible joint optimization algorithm based on multi-agent proximal policy optimization with federated learning framework (F-MAPPO). Additionally, this paper further develops a low-complexity F-MAPPO algorithm (LF-MAPPO) to address the large multidimensional state space problem in F-MAPPO algorithm. Numerical simulation results show that compared with centralized and decentralized MAPPO algorithms, the proposed algorithm achieves performance boost in convergence. Moreover, the proposed LF-MAPPO algorithm reduces the average task processing latency by 44.05% and 48.91% compared to the schemes without RIS devices and without vehicle-to-vehicle (V2V) link, which indicate the crucial role of introducing RIS and V2V task offloading in improving the system performance.
KW - deep reinforcement learning
KW - Internet of vehicles
KW - task offload
KW - vehicular edge computing
UR - http://www.scopus.com/pages/publications/105012156418
U2 - 10.1109/TVT.2025.3592718
DO - 10.1109/TVT.2025.3592718
M3 - Article
AN - SCOPUS:105012156418
SN - 0018-9545
JO - IEEE Transactions on Vehicular Technology
JF - IEEE Transactions on Vehicular Technology
ER -