Channel estimation for hybrid Multiple Input Multiple Output (MIMO) systems at Millimeter-Waves (mmW)/sub-THz is a fundamental, despite challenging, prerequisite for an efficient design of hybrid MIMO precoding/combining. Most works propose sequential search algorithms, e.g., Compressive Sensing (CS), that are most suited to static channels and consequently cannot apply to highly dynamic scenarios such as Vehicle-to-Everything (V2X). To address the latter ones, we leverage \textit{recurrent vehicle passages} to design a novel Multi Vehicular (MV) hybrid MIMO channel estimation suited for Vehicle-to-Infrastructure (V2I) and Vehicle-to-Network (V2N) systems. Our approach derives the analog precoder/combiner through a MV beam alignment procedure. For the digital precoder/combiner, we adapt the Low-Rank (LR) channel estimation method to learn the position-dependent eigenmodes of the received digital signal (after beamforming), which is used to estimate the compressed channel in the communication phase. Extensive numerical simulations, obtained with ray-tracing channel data and realistic vehicle trajectories, demonstrate the benefits of our solution in terms of both achievable Spectral Efficiency (SE) and Mean Square Error (MSE) compared to the Unconstrained Maximum Likelihood (U-ML) estimate of the compressed digital channel, making it suitable for both 5G and future 6G systems. Most notably, in some scenarios, we obtain the performance of the optimal Fully Digital (FD) systems.
翻译:混合多输入多重输出(MIMO)系统(MIMO)的混合多输入多输出估计(MIMO)系统是高效设计混合MIMO预编码/组合系统(MIMO预编码/组合系统)的具有挑战性的基本先决条件,尽管它具有挑战性,但大多数工作都提出顺序搜索算法,例如压缩遥感(CS),这些算法最适合静态的渠道,因此无法适用于车辆对一切(V2X)等高度动态的假设情况。为了应对后一种情况,我们利用LOut-Rank(L)频道估算方法,以了解所接收的数字信号(MV)混合混合MIM(MV)频道对车辆对内部结构(V2I)和车辆对网络(V2N)系统(V2N)系统。我们的方法是通过MVB(MVBB)校准预编码/组合程序获取模拟模拟模拟模拟(OLR-Rank(S-L)的基于定位的定位,我们所收到数字信号的定位),用于在SBAR-Rial-Sloral 5S-Syal ASyal 和SlalS-SLSlal(Slational Silental Sal Sal Sal Syal) 和Syal Syal Syal-Syal-Syal-Syal-Syal) 和Slal-Syal-S-Syal-Syal-Syal-Syal-Syal-Slational-Syal 和Syal-Syal-Syal-Syal-Syal-Syal-Syal-Syal-S-S-Syal-Sy-S-S-Sl) 和Sy-Sy-Sldal-Sy-Slal-Sl-Syal-Silal-sal-Silal-Slal-Slal-Syal-Slal-Slal-Slal-S-Slal-Slal-Slal-Sy-Syal-SL-Slation-Slal-Syal-Slal-Sl