Peng Chengzuo, Deng Honggui, Xiao Haoqi, Qian Yuyan, Zhang Wenjuan, Zhang Yinhao
School of Physics and Electronics, Central South University, Lushan South Road, Changsha 410083, China.
Sensors (Basel). 2022 Aug 7;22(15):5908. doi: 10.3390/s22155908.
In a reconfigurable intelligent surface (RIS) assisted millimeter Wave (mmWave) communication system, the channel coefficient increases exponentially with the number of RIS elements which results in expensive pilot overhead. Most previous works have proposed some channel estimation algorithms for the estimation accuracy of cascaded channels, which have improved the estimation accuracy, but the pilot overhead is discouraging in the estimation process. To improve the channel estimation accuracy with reduced pilot overhead, we propose a two-stage channel estimation protocol by exploiting semi-passive elements and the coherent time difference of the channel, where the quasi-static channel between the base stations (BS) and RIS is estimated at the RIS, and the user (UE)-RIS time-varying channel is estimated at the BS. In the first stage, we formulate the BS-RIS channel estimation as a mathematical optimization problem by an iterative weighting method and then propose a gradient descent (GD)-based algorithm to solve it. In the second stage, we first transform the received the UE-RIS signal model into an equivalent parallel factor (PARAFAC) tensor model and estimate the UE-RIS channel by the least-squares (LS) algorithm. The simulation results show that the proposed method has better estimation accuracy than the LS, compression sensing (CS) and minimum mean square error (MMSE) methods with less pilot overhead, and the spectral efficiency is improved by at least 10.5% compared to the other three methods.
在可重构智能表面(RIS)辅助的毫米波(mmWave)通信系统中,信道系数会随着RIS元件数量呈指数增长,这导致导频开销过高。此前的大多数工作都针对级联信道的估计精度提出了一些信道估计算法,这些算法提高了估计精度,但在估计过程中的导频开销却令人却步。为了在降低导频开销的情况下提高信道估计精度,我们通过利用半无源元件和信道的相干时间差,提出了一种两阶段信道估计协议,其中基站(BS)与RIS之间的准静态信道在RIS处进行估计,而用户(UE)与RIS之间的时变信道在基站处进行估计。在第一阶段,我们通过迭代加权方法将基站 - RIS信道估计表述为一个数学优化问题,然后提出一种基于梯度下降(GD)的算法来求解。在第二阶段,我们首先将接收到的UE - RIS信号模型转换为等效平行因子(PARAFAC)张量模型,并通过最小二乘法(LS)算法估计UE - RIS信道。仿真结果表明,与LS、压缩感知(CS)和最小均方误差(MMSE)方法相比,该方法在导频开销较少的情况下具有更好的估计精度,并且与其他三种方法相比,频谱效率提高了至少10.5%。