论文标题
IRS辅助无线通信的渠道跟踪和预测
Channel Tracking and Prediction for IRS-aided Wireless Communications
论文作者
论文摘要
对于智能反射表面(IRS)辅助无线通信,通道估计是必不可少的,通常需要过度的通道训练开销,而IRS反射元素的数量很大。由于发射器和/或接收器的移动性,准确的通道状态信息(CSI)的获取变得更具挑战性。在这项工作中,我们研究了IRS辅助的无线通信系统,该系统具有随时间变化的频道模型,并提出了创新的两阶段传输协议。在第一阶段,我们根据接收的信号发送飞行员符号并跟踪直接/反射通道,然后传输数据信号。在第二阶段,我们直接预测了直接/反射的通道,而不是首先发送飞行员符号,并且所有时间插槽都用于数据传输。基于提出的传输协议,我们提出了一个两阶段的通道跟踪和预测(2SCTP)方案,以获得具有低通道训练开销的直接和反射通道,这是通过利用时间变化通道的时间相关性来实现的。具体而言,我们首先考虑了一种特殊情况,其中假定IRS访问点(AP)通道是静态的,基于Kalman滤波器(KF)的算法和长期短期记忆(LSTM)基于长期的短期内存(LSTM)的神经网络分别提出用于通道跟踪和预测。然后,对于更一般的情况,假定IRS-AP,用户IR和用户AP通道都是时间变化的,我们提出了一种广义的KF(GKF)基于基于的基于基于的通道跟踪算法,其中使用适当的近似值来处理基础的非高斯随机随机变量。提供了数值模拟,以验证与现有的传输协议和通道跟踪/预测算法的有效性。
For intelligent reflecting surface (IRS)-aided wireless communications, channel estimation is essential and usually requires excessive channel training overhead when the number of IRS reflecting elements is large. The acquisition of accurate channel state information (CSI) becomes more challenging when the channel is not quasi-static due to the mobility of the transmitter and/or receiver. In this work, we study an IRS-aided wireless communication system with a time-varying channel model and propose an innovative two-stage transmission protocol. In the first stage, we send pilot symbols and track the direct/reflected channels based on the received signal, and then data signals are transmitted. In the second stage, instead of sending pilot symbols first, we directly predict the direct/reflected channels and all the time slots are used for data transmission. Based on the proposed transmission protocol, we propose a two-stage channel tracking and prediction (2SCTP) scheme to obtain the direct and reflected channels with low channel training overhead, which is achieved by exploiting the temporal correlation of the time-varying channels. Specifically, we first consider a special case where the IRS-access point (AP) channel is assumed to be static, for which a Kalman filter (KF)-based algorithm and a long short-term memory (LSTM)-based neural network are proposed for channel tracking and prediction, respectively. Then, for the more general case where the IRS-AP, user-IRS and user-AP channels are all assumed to be time-varying, we present a generalized KF (GKF)-based channel tracking algorithm, where proper approximations are employed to handle the underlying non-Gaussian random variables. Numerical simulations are provided to verify the effectiveness of our proposed transmission protocol and channel tracking/prediction algorithms as compared to existing ones.