The flourishing low-Earth orbit (LEO) constellation communication network provides a promising solution for seamless coverage services to Internet-of-Things (IoT) terminals. However, confronted with massive connectivity and rapid variation of terrestrial-satellite link (TSL), the traditional grant-free random-access schemes always fail to match this scenario. In this paper, a new non-orthogonal multiple-access (NOMA) transmission protocol that incorporates orthogonal time frequency space (OTFS) modulation is proposed to solve these problems. Furthermore, we propose a two-stages joint active user detection and channel estimation scheme based on the training sequences aided OTFS data frame structure. Specifically, in the first stage, with the aid of training sequences, we perform active user detection and coarse channel estimation by recovering the sparse sampled channel vectors. And then, we develop a parametric approach to facilitate more accurate result of channel estimation with the previously recovered sampled channel vectors according to the inherent characteristics of TSL channel. Simulation results demonstrate the superiority of the proposed method in this kind of high-mobility scenario in the end.
翻译:兴旺的低地轨道星座通信网络为无缝地向互联网电话终端提供无缝覆盖服务提供了一个很有希望的解决办法,然而,面对地面卫星连接的大规模连通和迅速变化,传统的无赠款随机访问计划总是无法与这一设想相匹配。在本文中,提出了一个新的非横向多存取协议,将正时频空间(OTFS)调制纳入其中,以解决这些问题。此外,我们提议基于培训序列对OTFS数据框架结构的两阶段联合积极用户探测和频道估计计划。具体地说,在第一阶段,在培训序列的帮助下,我们通过恢复稀薄的采样通道矢量,积极检测用户和粗化的频道估计。然后,我们根据TSL频道的固有特征,制定一种参数性方法,以便于对频道进行更准确的估算,从而根据先前回收的采样通道矢量矢量进行测算。模拟结果显示,在最终的这种高流动性设想中,拟议的方法具有优越性。