OTFS Channel Estimation via 2D Off-grid Decomposition and SBL Combination

Qianli Wang, Bowen Jia, Zhengquan Zhang, Heng Liu, P. Fan
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引用次数: 2

Abstract

Fractional channel parameter is one of the main factors deteriorates the performance of channel estimation in orthogonal time-frequency space (OTFS) system. Several works had explored the one dimensional (1D) and two dimensional (2D) off grid methods to handle the fractional delay and Doppler shift. However, the 1D off-grid method is computationally complex and the 2D off-grid method suffers performance degradation. One reason of performance degradation in 2D off-grid method is the tandem off-grid distortion introduced during the estimation of intermediate channel matrix in its first step. To mitigate the tandem off-grid distortion, a 2D off-grid decomposition and SBL combination method is proposed in this paper. In our method, the received symbols are firstly processed by two paralleling branches, i.e., the U-branch and the V-branch, based on the decomposition of the OTFS symbols in different dimension. The two branches are used to estimate the off-grid parameters and the channel matrix simultaneously and independently, leading to complementarity in representing the received symbols. Then the obtained two channel matrices and the off-grid parameters are combined to iteratively construct the final channel matrix based on the sparse Bayesian learning (SBL) framework. Through the off-grid decomposition and SBL combination, the channel matrix is better represented and higher accuracy could be achieved. The simulation results show the effectiveness of the method.
基于2D离网分解和SBL组合的OTFS信道估计
在正交时频空间(OTFS)系统中,分数阶信道参数是影响信道估计性能的主要因素之一。一些研究探索了一维(1D)和二维(2D)的离网格方法来处理分数延迟和多普勒频移。然而,一维离网方法计算复杂,二维离网方法性能下降。二维离网方法性能下降的原因之一是在第一步估计中间信道矩阵时引入的串列离网失真。为了减轻串列离网失真,本文提出了一种二维离网分解和SBL组合方法。在我们的方法中,首先在对OTFS符号进行不同维数分解的基础上,对接收到的符号进行u支路和v支路两个并行支路的处理。这两个分支同时独立地估计离网参数和信道矩阵,从而在表示接收符号时具有互补性。通过离网分解和SBL组合,可以更好地表示信道矩阵,达到更高的精度。仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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