论文标题

机器学习授权的轨迹和无线无线网络中的被动横梁形成设计

Machine Learning Empowered Trajectory and Passive Beamforming Design in UAV-RIS Wireless Networks

论文作者

Liu, Xiao, Liu, Yuanwei, Chen, Yue

论文摘要

提出了一个新颖的框架,以在无人驾驶汽车(UAV)启用无线网络中集成可重构的智能表面(RIS),其中部署了RIS以提高无人机的服务质量。调用非正交多访问(NOMA)技术以进一步提高网络的频谱效率,而移动用户(MUS)被认为是连续漫游的。通过共同设计无人机的运动,RIS的相位移动,从无人机到MUS到MUS的功率分配政策以及确定动态解码顺序,可以将能源消耗最小化。提出了一种腐烂的深Q网络(D-DQN)算法来解决这个相关问题。在拟议的基于D-DQN的算法中,选择中央控制器作为定期观察无人机启用无线无线网络状态的代理,并执行操作以适应动态环境。与常规的DQN算法相反,在拟议的基于D-DQN的算法中利用了衰减的学习率,以实现加速训练速度与融合到当地最佳最佳之间的权衡。数值结果表明:1)与常规的Q学习算法相反,该算法在解决法式问题时无法收敛,因此提出的基于D-DQN的算法能够与较小的约束收敛; 2)通过将RISS集成在无人机的无线网络中,可以显着降低无人机的能量耗散; 3)通过设计动态解码顺序和功率分配政策,RIS-NOMA案例的消耗比RIS-soma案件少11.7%。

A novel framework is proposed for integrating reconfigurable intelligent surfaces (RIS) in unmanned aerial vehicle (UAV) enabled wireless networks, where an RIS is deployed for enhancing the service quality of the UAV. Non-orthogonal multiple access (NOMA) technique is invoked to further improve the spectrum efficiency of the network, while mobile users (MUs) are considered as roaming continuously. The energy consumption minimizing problem is formulated by jointly designing the movement of the UAV, phase shifts of the RIS, power allocation policy from the UAV to MUs, as well as determining the dynamic decoding order. A decaying deep Q-network (D-DQN) based algorithm is proposed for tackling this pertinent problem. In the proposed D-DQN based algorithm, the central controller is selected as an agent for periodically observing the state of UAV-enabled wireless network and for carrying out actions to adapt to the dynamic environment. In contrast to the conventional DQN algorithm, the decaying learning rate is leveraged in the proposed D-DQN based algorithm for attaining a tradeoff between accelerating training speed and converging to the local optimal. Numerical results demonstrate that: 1) In contrast to the conventional Q-learning algorithm, which cannot converge when being adopted for solving the formulated problem, the proposed D-DQN based algorithm is capable of converging with minor constraints; 2) The energy dissipation of the UAV can be significantly reduced by integrating RISs in UAV-enabled wireless networks; 3) By designing the dynamic decoding order and power allocation policy, the RIS-NOMA case consumes 11.7% less energy than the RIS-OMA case.

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