基于深度强化学习的毫米波波束对准,实现 V2I 通信

Yuanyuan Qiao;Yong Niu;Lan Su;Shiwen Mao;Ning Wang;Zhangdui Zhong;BO Ai
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引用次数: 0

摘要

毫米波(mmWave)通信可以满足车辆到基础设施(V2I)系统对高吞吐量和超低延迟的要求。然而,在高度动态的环境中搜索最佳波束成形向量会产生相当大的训练开销。而且,在接收器和发射器之间实现波束对准也是一个巨大的挑战。本文提出了一种基于车辆位置信息的波束对准算法,以实现 V2I 网络中的快速波束对准。在本文提出的算法中,路侧单元(RSU)通过车辆位置信息和双深 Q 网络(DDQN)算法获得一组候选波束。然后,根据系统频谱效率最大化的准则,通过穷举搜索获得候选波束集中的最优波束,从而实现快速波束对准。本文利用 DeepMIMO 数据集充分考虑了 V2I 的实际场景,并在数学模型中考虑了多普勒扩展的影响。仿真结果表明,不同位置车辆的接收信噪比(SNR)均大于信噪比阈值,从而避免了通信中断,提高了 V2I 通信的可靠性。同时,我们还评估了车辆速度的影响。与其他搜索方案相比,所提出的方案能获得更高的传输速率,有效地平衡了训练开销和可实现速率,适用于毫米波 V2I 网络。
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Deep Reinforcement Learning-Based mmWave Beam Alignment for V2I Communications
Millimeter wave (mmWave) communication can meet the requirements of vehicle-to-infrastructure (V2I) systems, for high throughput and ultra-low latency. However, searching for the optimal beamforming vectors in highly dynamic environments, incurs considerable training overhead. And it is a huge challenge to achieve beam alignment between receivers and transmitters. This paper proposes a beam alignment algorithm based on vehicle position information, to achieve fast beam alignment in the V2I network. In the proposed algorithm, a roadside unit (RSU) obtains a set of candidate beams by the vehicle position information and the double deep Q network (DDQN) algorithm. Then, according to the criterion of maximizing the system spectral efficiency, the optimal beam of the candidate beam set is obtained by the exhaustive search, to achieve fast beam alignment. In this paper, the DeepMIMO dataset is utilized to fully consider the actual scene of V2I, and the effect of Doppler expansion is taken into account in the mathematical model. The simulation results show that the received signal-noise ratio (SNR) of vehicle at different positions is greater than the SNR threshold, which avoids communication interruption and improves the reliability of V2I communications. Meanwhile, we also evaluates the effect of vehicle speed. Compared with other search schemes, the proposed scheme attains higher transmission rates, effectively balances the training overhead and achievable rate, and is suitable for mmWave V2I networks.
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