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Deep learning-based channel estimation and tracking for millimeter-wave vehicular communications

机译:基于深度学习的信道估计与毫米波车辆通信跟踪

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The application of millimeter-wave (mmWave) frequencies is a potential technology for satisfying the continuously increasing need for handling data traffic in highly advanced wireless communications. A substantial challenge presented in mmWave communications is the high path loss. mmWave systems adopt beamforming techniques to overcome this issue. These require robust channel estimation and tracking algorithm for maintenance of an adequate quality of service. In this study, we propose a deep learning-based channel estimation and tracking algorithm for vehicular mmWave communications. More specifically, a deep neural network is leveraged to learn the mapping function between the received omni-beam patterns and mmWave channel with negligible overhead. Following the channel estimation, long short-term memory is leveraged to track the channel. The simulation results demonstrate that the proposed algorithm estimates and tracks the mmWave channel efficiently with negligible training overhead.
机译:毫米波(MMWAVE)频率的应用是一种满足在高级无线通信中处理数据流量的不断增加的潜在技术。在MMWAVE通信中呈现的大量挑战是高路径损耗。 MMWAVE Systems采用波束成形技术来克服这个问题。这些需要强大的信道估计和跟踪算法,用于维护足够的服务质量。在本研究中,我们提出了一种基于深度学习的信道估计和车辆MMWAVE通信跟踪算法。更具体地,利用深度神经网络以学习接收的全光束图案和MMWAVE信道之间的映射函数,其开销可忽略不计。在信道估计之后,利用长短短期存储器跟踪通道。仿真结果表明,所提出的算法估计和跟踪MMWAVE通道,其培训开销可忽略不计。

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