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Intelligent Beam Training for Millimeter-Wave Communications via Deep Reinforcement Learning

机译:通过深度强化学习进行毫米波通信的智能波束训练

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Millimeter wave (mmwave) communication has attracted increasing attention owing to its abundant spectrum resource. The short wave-length of mmwave signals facilitates exploiting large antenna arrays to achieve large array gains and combat large path-loss. However, the use of large antenna arrays and narrow beams leads to a large overhead in beam training for obtaining channel state information, especially in dynamic environments. To reduce the overhead of beam training, in this paper we propose an environment sensing based beam training algorithm via deep reinforcement learning. The proposed algorithm can sense the change of the environment and learn required latent probability information from the environment, and intelligently trains beams with a low overhead. In addition, the proposed algorithm does not require any priori knowledge of dynamic channel modeling, and thus is applicable to a variety of complicated scenarios. Simulation results demonstrate the effectiveness and superiority of the proposed intelligent beam training algorithm.
机译:毫米波(mmwave)通信由于其丰富的频谱资源而引起了越来越多的关注。毫米波信号的短波长有助于利用大型天线阵列来获得较大的阵列增益并应对较大的路径损耗。然而,大天线阵列和窄波束的使用导致波束训练中用于获得信道状态信息的大量开销,特别是在动态环境中。为了减少波束训练的开销,本文提出了一种通过深度强化学习的基于环境感知的波束训练算法。所提出的算法可以感知环境的变化并从环境中学习所需的潜在概率信息,并以低开销智能地训练波束。另外,所提出的算法不需要动态信道建模的任何先验知识,因此适用于各种复杂的场景。仿真结果证明了所提出的智能波束训练算法的有效性和优越性。

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