Channel Prediction for Real-Time Wireless Communication with MmWave SC-FDE in IIoT Systems

Changwei Lv, Ming Liu, Junwei Duan
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Abstract

With the application of wireless sensor-actuator networks in the Industrial Internet of Things (IIoT), it is crucially important to ensure the real-timing of data transmission. The millimeter wave (mmWave) communicating at the extremely high frequency band is a promising solution for the rapidly expanding data throughput in IIoT, due to the wide usable frequency band. In extremely high frequency band, the channel coherent time will be obviously reduced and becomes shorter than the frame duration. In this case, the channel state information (CSI) acquisition based on channel estimation will provide outdated information for coherent signal detection. Therefore, forecasting the channel variation for real-time data transmission is necessary. In this paper, we investigate the channel prediction methods in both the frequency and time domains for mmWave single-carrier frequency-domain-equalization (SC-FDE) systems. In the frequency domain, the channel prediction is conducted on each subcarrier, while the time domain predictor on each channel tap. As a number of the channel taps in the time domain are mainly composed of estimation noise, we separate these channel taps composed of estimation noise from the significant taps before building the prediction model. In this paper, the autoregressive (AR) model is employed to perform the channel prediction in the both domains. The simulation results show that the time domain predictor increases the prediction accuracy while reducing the computation complexity.
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工业物联网系统中毫米波SC-FDE实时无线通信信道预测
随着无线传感器-执行器网络在工业物联网(IIoT)中的应用,保证数据传输的实时性至关重要。在极高频段通信的毫米波(mmWave)由于具有较宽的可用频段,因此对于工业物联网中快速扩展的数据吞吐量是一个很有前途的解决方案。在极高的频带,信道相干时间会明显减少,比帧持续时间短。在这种情况下,基于信道估计的信道状态信息采集将为相干信号检测提供过时的信息。因此,对实时数据传输的信道变化进行预测是必要的。在本文中,我们研究了毫米波单载波频域均衡(SC-FDE)系统的频域和时域信道预测方法。在频域,信道预测是在每个子载波上进行的,而时域预测是在每个信道分接上进行的。由于时域内的多个信道抽头主要由估计噪声组成,在构建预测模型之前,我们将这些由估计噪声组成的信道抽头与重要的抽头分离开来。本文采用自回归(AR)模型对这两个域进行信道预测。仿真结果表明,时域预测器在降低计算复杂度的同时提高了预测精度。
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