Joint Resource Allocation for UAV-Assisted V2X Communication With Mean Field Multi-Agent Reinforcement Learning

IF 7.1 2区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Vehicular Technology Pub Date : 2024-09-23 DOI:10.1109/TVT.2024.3466116
Yue Xu;Linjiang Zheng;Xiao Wu;Yi Tang;Weining Liu;Dihua Sun
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Abstract

The Vehicle-to-Everything (V2X) communication, as the fundamental part of intelligent transport system, has the potential to increase road safety and traffic efficiency. However, conventional static infrastructures like roadside units (RSUs) often encounter overload issues due to the uneven spatiotemporal distribution of vehicles. Although the line-of-sight (LoS) propagation characteristics and high mobility of autonomois aerial vehicles (AAVs) have brought about UAV-assisted vehicular communication. The scarce spectrum resources, complex interference, restricted energy budgets, and the mobility of automobiles still pose significant challenges. In this paper, we combine mean-field game (MFG) theory with multi-agent reinforcement learning (MARL) to allocate resources for RSUs and UAVs in non-orthogonal multiple access (NOMA) V2X communication networks. To find rational and reasonable global solutions for infrastructures under power and QoS constraints, a joint sub-band scheduling and transmit power allocation problem is addressed. The MARL technique is utilized to endow agents with the capability of self-learning. MFG theory is employed to tackle the tremendous overhead in agent interactions. The integration of MFG and MARL enables infrastructures to act as agents, engaging in mutual interactions and considering the impact of the surrounding environment, to achieve maximum global energy efficiency. Simulation results demonstrate the effectiveness of UAV-assisted V2X communication and prove that the proposed method outperforms a state-of-the-art resource allocation scheme in both average energy efficiency and probability of failure.
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利用均值场多代理强化学习为无人机辅助 V2X 通信分配联合资源
车联网(V2X)通信作为智能交通系统的基础部分,具有提高道路安全和交通效率的潜力。然而,由于车辆的时空分布不均匀,传统的静态基础设施如路边单元(rsu)经常遇到过载问题。虽然自主飞行器(aav)的视距(LoS)传播特性和高机动性带来了无人机辅助车载通信。频谱资源稀缺、干扰复杂、能源预算有限以及汽车的移动性仍然构成重大挑战。本文将平均场博弈(MFG)理论与多智能体强化学习(MARL)相结合,为非正交多址(NOMA) V2X通信网络中的rsu和无人机分配资源。为了在功率和QoS约束下为基础设施寻找合理的全局解决方案,研究了联合子带调度和发射功率分配问题。利用MARL技术赋予智能体自学习能力。MFG理论用于解决智能体交互中的巨大开销。MFG和MARL的整合使基础设施充当代理,参与相互作用并考虑周围环境的影响,以实现最大的全球能源效率。仿真结果证明了无人机辅助V2X通信的有效性,并证明了该方法在平均能源效率和故障概率方面优于最先进的资源分配方案。
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来源期刊
CiteScore
6.00
自引率
8.80%
发文量
1245
审稿时长
6.3 months
期刊介绍: The scope of the Transactions is threefold (which was approved by the IEEE Periodicals Committee in 1967) and is published on the journal website as follows: Communications: The use of mobile radio on land, sea, and air, including cellular radio, two-way radio, and one-way radio, with applications to dispatch and control vehicles, mobile radiotelephone, radio paging, and status monitoring and reporting. Related areas include spectrum usage, component radio equipment such as cavities and antennas, compute control for radio systems, digital modulation and transmission techniques, mobile radio circuit design, radio propagation for vehicular communications, effects of ignition noise and radio frequency interference, and consideration of the vehicle as part of the radio operating environment. Transportation Systems: The use of electronic technology for the control of ground transportation systems including, but not limited to, traffic aid systems; traffic control systems; automatic vehicle identification, location, and monitoring systems; automated transport systems, with single and multiple vehicle control; and moving walkways or people-movers. Vehicular Electronics: The use of electronic or electrical components and systems for control, propulsion, or auxiliary functions, including but not limited to, electronic controls for engineer, drive train, convenience, safety, and other vehicle systems; sensors, actuators, and microprocessors for onboard use; electronic fuel control systems; vehicle electrical components and systems collision avoidance systems; electromagnetic compatibility in the vehicle environment; and electric vehicles and controls.
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