In this paper, we propose a deep learning-based beam tracking method for millimeter-wave (mmWave)communications. Beam tracking is employed for transmitting the known symbols using the sounding beams and tracking time-varying channels to maintain a reliable communication link. When the pose of a user equipment (UE) device varies rapidly, the mmWave channels also tend to vary fast, which hinders seamless communication. Thus, models that can capture temporal behavior of mmWave channels caused by the motion of the device are required, to cope with this problem. Accordingly, we employa deep neural network to analyze the temporal structure and patterns underlying in the time-varying channels and the signals acquired by inertial sensors. We propose a model based on long short termmemory (LSTM) that predicts the distribution of the future channel behavior based on a sequence of input signals available at the UE. This channel distribution is used to 1) control the sounding beams adaptively for the future channel state and 2) update the channel estimate through the measurement update step under a sequential Bayesian estimation framework. Our experimental results demonstrate that the proposed method achieves a significant performance gain over the conventional beam tracking methods under various mobility scenarios.
翻译:在本文中,我们建议对毫米波(毫米瓦维)通信采用基于深学习的波束跟踪方法。 光束跟踪用于使用测音光束和跟踪时间变化的频道传输已知符号,以维持可靠的通信链接。 当用户设备(UE)装置的外形变化迅速时, 毫米瓦维频道也往往变化很快, 从而阻碍无缝通信。 因此, 要解决这个问题, 需要模型来捕捉毫米波道的瞬时行为。 因此, 我们使用深神经网络来分析时间变化频道所隐藏的时间结构和模式以及惯性传感器所获取的信号。 我们提议了一个基于长期短期模拟(LSTM)的模型, 以预测未来频道行为的分布, 其依据是乌克兰现有的输入信号序列。 这种频道分布用于 (1) 控制对未来频道状态进行适应的声波束; (2) 通过连续的Bayesian估计框架的测量步骤更新频道估计结果。 我们的实验结果显示,拟议方法在常规假设下取得显著的性能。