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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Downlink Transmit Power Control in Ultra-Dense UAV Network Based on Mean Field Game and Deep Reinforcement Learning
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Downlink Transmit Power Control in Ultra-Dense UAV Network Based on Mean Field Game and Deep Reinforcement Learning

机译:基于平均田间游戏和深度加强学习的超密集UAV网络中的下行链路传输功率控制

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摘要

As an emerging technology in 5G, ultra-dense unmanned aerial vehicles (UAVs) network can significantly improve the system capacity and networks coverage. However, it is still a challenge to reduce interference and improve energy efficiency (EE) of UAVs. In this paper, we investigate a downlink power control problem to maximize the EE in an ultra-dense UAV network. Firstly, the power control problem is formulated as a discrete mean field game (MFG) to imitate the interactions among a large number of UAVs, and then the MFG framework is transformed into a Markov decision process (MDP) to obtain the equilibrium solution of the MFG due to the dense deployment of UAVs. Specifically, a deep reinforcement learning-based MFG (DRL-MFG) algorithm is proposed to suppress the interference and maximize the EE by using deep neural networks (DNN) to explore the optimal power strategy for UAVs. The numerical results show that the UAVs can effectively interact with the environment to obtain the optimal power control strategy. Compared with the benchmarks algorithms, the DRL-MFG algorithm converges faster to the solution of MFG and improves the EE of UAVs. Moreover, the impact of the transmit power on EE under the different heights of the UAVs is also analyzed.
机译:作为5G的新兴技术,超密集的无人机(UAVS)网络可以显着提高系统容量和网络覆盖范围。然而,减少干扰和提高无人机的能效(EE)仍然是一项挑战。在本文中,我们调查了一个下行链路功率控制问题,以最大化超密度UAV网络中的EE。首先,功率控制问题被制定为离散的平均场比赛(MFG),以模仿大量无人机之间的相互作用,然后将MFG框架转换为马尔可夫决策过程(MDP)以获得均衡解决方案MFG由于无人机的密集部署。具体地,提出了一种基于深度加强基于学习的MFG(DRL-MFG)算法来抑制干扰并通过使用深神经网络(DNN)来最大化EE,以探索无人机的最佳功率策略。数值结果表明,无人机可以有效地与环境交互以获得最佳功率控制策略。与基准算法相比,DRL-MFG算法会收敛于MFG的解决方案,并改善了UVS的EE。此外,还分析了在无人机的不同高度下对EE上的发射功率对EE的影响。

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