Smart City Gnosys

Smart city article details

Title Cooperative Reinforcement Learning Based Adaptive Resource Allocation In V2V Communication
ID_Doc 16160
Authors Sharma S.; Singh B.
Year 2019
Published 2019 6th International Conference on Signal Processing and Integrated Networks, SPIN 2019
DOI http://dx.doi.org/10.1109/SPIN.2019.8711578
Abstract Platooning is one of the key applications of Intelligent Transportation System (ITS) for the smart cities. Various wireless technologies have been proposed for meeting the stringent requirements of platooning. 3GPP has initiated standardization work for LTE based V2V communication. It offers potential means to support transmission of safety critical messages among platoon vehicles with high reliability, security and ultra low latency. However, efficient resource allocation has been a challenge in LTE based networks. In this paper, we propose a Cooperative-Reinforcement Learning (C-RL) based resource selection algorithm for communication among connected vehicles utilizing LTE-Direct technology. The proposal outperforms the distributed resource selection scheme in terms of actual time required for Cooperative Awareness Messages (CAM) dissemination among vehicles forming the platoon and performance of other vehicular links sharing the similar Resource Blocks (RBs). Simulation results shows the efficacy of the proposed algorithm in terms of efficient resource utilization and faster dissemination of messages among the connected vehicles. © 2019 IEEE.
Author Keywords Cooperative Reinforcement Learning; Device-to-Device Communication; Resource Selection


Similar Articles


Id Similarity Authors Title Published
4083 View0.882Hong S.; Kim J.; Kim G.; Cho S.A Research Trends Of Reinforcement Learning Algorithms For C-V2X Network Resource AllocationInternational Conference on Ubiquitous and Future Networks, ICUFN (2024)
43045 View0.878Shakir A.T.; Masini B.M.; Khudhair N.R.; Nordin R.; Amphawan A.Priority-Aware Multi-Agent Deep Reinforcement Learning For Resource Scheduling In C-V2X Mode 4 CommunicationIEEE Access (2025)
5420 View0.876Al-Najjar A.N.; Rasid M.F.A.; Hashim F.; Ahmad F.A.; Jamalipour A.A Systematic Literature Review In Distributed Resource Allocation For C-V2XIngenierie des Systemes d'Information, 29, 3 (2024)
34403 View0.864Liu Z.; Han Y.; Fan J.; Zhang L.; Lin Y.Joint Optimization Of Spectrum And Energy Efficiency Considering The C-V2X Security: A Deep Reinforcement Learning ApproachIEEE International Conference on Industrial Informatics (INDIN), 2020-July (2020)
3221 View0.864Mande S.; Ramachandran N.A Novel Approach For Efficient Resource Allocation In 6G V2V Networks Using Neighbor-Aware Greedy Algorithm And Sweep Line ModelEgyptian Informatics Journal, 30 (2025)
44881 View0.86Teixeira L.H.; Huszák Á.Reinforcement Learning Environment For Advanced Vehicular Ad Hoc Networks Communication SystemsSensors, 22, 13 (2022)
46073 View0.86Sehla K.; Nguyen T.M.T.; Pujolle G.; Velloso P.B.Resource Allocation Modes In C-V2X: From Lte-V2X To 5G-V2XIEEE Internet of Things Journal, 9, 11 (2022)
21064 View0.858Nguyen H.T.T.; Nguyen M.T.; Do H.T.; Hua H.T.; Nguyen C.V.Drl-Based Intelligent Resource Allocation For Diverse Qos In 5G And Toward 6G Vehicular Networks: A Comprehensive SurveyWireless Communications and Mobile Computing, 2021 (2021)
1390 View0.851Wei H.; Peng Y.; Yue M.; Long J.; AL-Hazemi F.; Mirza M.M.A Deep Reinforcement Learning Scheme For Spectrum Sensing And Resource Allocation In ItsMathematics, 11, 16 (2023)