AoI-Aware Resource Allocation for Platoon-Based C-V2X Networks via Multi-Agent Multi-Task Reinforcement Learning

被引:30
|
作者
Parvini, Mohammad [1 ]
Javan, Mohammad Reza [2 ]
Mokari, Nader [1 ]
Abbasi, Bijan [1 ]
Jorswieck, Eduard A. [3 ]
机构
[1] Tarbiat Modares Univ, Dept Elect & Comp Engn, Tehran 1411713116, Iran
[2] Shahrood Univ Technol, Fac Elect Engn, Shahrood 3619995161, Iran
[3] TU Braunschweig, Inst Commun Technol, D-2338106 Braunschweig, Germany
关键词
Resource management; Cams; Long Term Evolution; Wireless communication; Vehicle dynamics; Task analysis; Interference; V2X; AoI; Platoon cooperation; MARL; MANAGEMENT; COMMUNICATION; VEHICLES;
D O I
10.1109/TVT.2023.3259688
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This paper investigates the problem of age of information (AoI) aware radio resource management for a platooning system. Multiple autonomous platoons exploit the cellular wireless vehicle-to-everything (C-V2X) communication technology to disseminate the cooperative awareness messages (CAMs) to their followers while ensuring timely delivery of safety-critical messages to the Road-Side Unit (RSU). To lower the computational load at the RSU and cope with the challenges of dynamic channel conditions, we exploit a distributed resource allocation framework based on multi-agent reinforcement learning (MARL), where each platoon leader (PL) acts as an agent and interacts with the environment to learn its optimal policy. Motivated by the existing literature in RL, we propose two novel MARL frameworks based on the multi-agent deep deterministic policy gradient (MADDPG), named Modified MADDPG, and Modified MADDPG with task decomposition. Both algorithms train two critics with the following goals: A global critic which estimates the global expected reward and motivates the agents toward a cooperating behavior and an exclusive local critic for each agent that estimates the local individual reward. Furthermore, based on the tasks each agent has to accomplish, in the second algorithm, the holistic individual reward of each agent is decomposed into multiple sub-reward functions where task-wise value functions are learned separately. Numerical results indicate our proposed algorithms' effectiveness compared with other contemporary RL frameworks, e.g., federated reinforcement learning (FRL) in terms of AoI performance and CAM message transmission probability.
引用
收藏
页码:9880 / 9896
页数:17
相关论文
共 50 条
  • [31] Multi-Agent Reinforcement Learning- Based Resource Management for V2X Communication
    Zhao, Nan
    Wang, Jiaye
    Jin, Bo
    Wang, Ru
    Wu, Minghu
    Liu, Yu
    Zheng, Lufeng
    INTERNATIONAL JOURNAL OF MOBILE COMPUTING AND MULTIMEDIA COMMUNICATIONS, 2023, 14 (01)
  • [32] QoS based Multi-Agent vs. Single-Agent Deep Reinforcement Learning for V2X Resource Allocation
    Bhadauria, Shubhangi
    Ravichandran, Lavanya
    Roth-Mandutz, Elke
    Fischer, Georg
    2021 IEEE SYMPOSIUM ON FUTURE TELECOMMUNICATION TECHNOLOGIES (SOFTT), 2021, : 39 - 45
  • [33] A Task Offloading and Resource Allocation Strategy Based on Multi-Agent Reinforcement Learning in Mobile Edge Computing
    Jiang, Guiwen
    Huang, Rongxi
    Bao, Zhiming
    Wang, Gaocai
    FUTURE INTERNET, 2024, 16 (09)
  • [34] AoI-Oriented Resource Allocation for NOMA-Based Wireless Powered Cognitive Radio Networks Based on Multi-Agent Deep Reinforcement Learning
    He, Tao
    Peng, Yingsheng
    Liu, Yong
    Song, Hui
    IEEE ACCESS, 2024, 12 : 69738 - 69752
  • [35] A Real-World-Oriented Multi-Task Allocation Approach Based on Multi-Agent Reinforcement Learning in Mobile Crowd Sensing
    Han, Junying
    Zhang, Zhenyu
    Wu, Xiaohong
    INFORMATION, 2020, 11 (02)
  • [36] QoE-Based Semantic-Aware Resource Allocation for Multi-Task Networks
    Yan, Lei
    Qin, Zhijin
    Li, Chunfeng
    Zhang, Rui
    Li, Yongzhao
    Tao, Xiaoming
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2024, 23 (09) : 11958 - 11971
  • [37] Sustainable Task Offloading in UAV Networks via Multi-Agent Reinforcement Learning
    Sacco, Alessio
    Esposito, Flavio
    Marchetto, Guido
    Montuschi, Paolo
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2021, 70 (05) : 5003 - 5015
  • [38] Multi-Agent Reinforcement Learning for Network Selection and Resource Allocation in Heterogeneous Multi-RAT Networks
    Allahham, Mhd Saria
    Abdellatif, Alaa Awad
    Mhaisen, Naram
    Mohamed, Amr
    Erbad, Aiman
    Guizani, Mohsen
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2022, 8 (02) : 1287 - 1300
  • [39] Vehicle Speed Aware Computing Task Offloading and Resource Allocation Based on Multi-Agent Reinforcement Learning in a Vehicular Edge Computing Network
    Huang, Xinyu
    He, Lijun
    Zhang, Wanyue
    2020 IEEE INTERNATIONAL CONFERENCE ON EDGE COMPUTING (EDGE 2020), 2020, : 1 - 8
  • [40] AoI-Aware Energy-Efficient Vehicular Edge Computing Using Multi-Agent Reinforcement Learning With Actor-Attention-Critic
    Xiao, Liqin
    Lin, Yan
    Zhang, Yijin
    Li, Jun
    Shu, Feng
    2024 IEEE 99TH VEHICULAR TECHNOLOGY CONFERENCE, VTC2024-SPRING, 2024,