论文标题
深通道预测:在随着时变的褪色频道中的接收器设计的DNN框架
Deep Channel Prediction: A DNN Framework for Receiver Design in Time-Varying Fading Channels
论文作者
论文摘要
在随着时间变化的褪色通道中,使用每个相干间隔传输的试验符号来估计通道系数。对于具有较高多普勒传播的通道,随着时间的推移,快速通道的变化将需要大量的带宽来进行试验,从而导致吞吐量差。在本文中,我们建议使用深层复发的神经网络(RNN)提出一种新颖的接收器体系结构,该架构了解通道变化,从而减少通道估计所需的试验符号的数量。具体而言,我们设计和训练RNN以学习时间变化的通道中的相关性,并在多个多普勒和信噪比(SNR)中以良好的精度预测未来的通道系数。提出的培训方法可以通过使用诸如教师力量培训,早期和降低高原学习率之类的技术来实现准确的渠道预测。同样,通过根据多普勒和SNR调整预测数来实现对不同多普勒和SNR的预测的鲁棒性。数值结果表明,在随着时变的褪色通道中,提议的接收器实现了良好的位错误性能。我们还使用RNN提出了一个数据决策驱动的接收器体系结构,该接收器架构进一步降低了飞行员的开销,同时保持良好的位错误性能。
In time-varying fading channels, channel coefficients are estimated using pilot symbols that are transmitted every coherence interval. For channels with high Doppler spread, the rapid channel variations over time will require considerable bandwidth for pilot transmission, leading to poor throughput. In this paper, we propose a novel receiver architecture using deep recurrent neural networks (RNNs) that learns the channel variations and thereby reduces the number of pilot symbols required for channel estimation. Specifically, we design and train an RNN to learn the correlation in the time-varying channel and predict the channel coefficients into the future with good accuracy over a wide range of Dopplers and signal-to-noise ratios (SNR). The proposed training methodology enables accurate channel prediction through the use of techniques such as teacher-force training, early-stop, and reduction of learning rate on plateau. Also, the robustness of prediction for different Dopplers and SNRs is achieved by adapting the number of predictions into the future based on the Doppler and SNR. Numerical results show that good bit error performance is achieved by the proposed receiver in time-varying fading channels. We also propose a data decision driven receiver architecture using RNNs that further reduces the pilot overhead while maintaining good bit error performance.