Integrated ultra-massive multiple-input multiple-output (UM-MIMO) and intelligent reflecting surface (IRS) systems are promising for 6G and beyond Terahertz (0.1-10 THz) communications, to effectively bypass the barriers of limited coverage and line-of-sight blockage. However, excessive dimensions of UM-MIMO and IRS enlarge the near-field region, while strong THz channel sparsity in far-field is detrimental to spatial multiplexing. Moreover, channel estimation (CE) requires recovering the large-scale channel from severely compressed observations due to limited RF-chains. To tackle these challenges, a hybrid spherical- and planar-wave channel model (HSPM) is developed for the cascaded channel of the integrated system. The spatial multiplexing gains under near-field and far-field regions are analyzed, which are found to be limited by the segmented channel with a lower rank. Furthermore, a compressive sensing-based CE framework is developed, including a sparse channel representation method, a separate-side estimation (SSE) and a dictionary-shrinkage estimation (DSE) algorithms. Numerical results verify the effectiveness of the HSPM, the capacity of which is only $5\times10^{-4}$ bits/s/Hz deviated from that obtained by the ground-truth spherical-wave-model, with 256 elements. While the SSE achieves improved accuracy for CE than benchmark algorithms, the DSE is more attractive in noisy environments, with 0.8 dB lower normalized-mean-square-error than SSE.
翻译:超超大型集成多输出(UM-MIMO)和智能反射表面(IRS)系统对6G和Terahertz(0.1-10THz)以外的6G(0.1-10THz)通信而言大有希望,可以有效绕过有限覆盖范围和视距阻隔的屏障;不过,UM-MIMO和IRS的过度尺寸扩大了近地外区域,而远处的强型Thz频道宽度则不利于空间多氧化。此外,频道估计(CE)需要从有限RF链的严格压缩观测中恢复大型频道。为了应对这些挑战,正在为综合系统的升级通道开发一种混合的SeEA-和平流-波波波波频道模型(HSPM)模型(HSPM),对近地和远处地区的空间多氧化增益进行了分析,发现这种增益受到低级的分段频道的限制。此外,正在开发一个基于压缩的CEEE框架框架,包括稀释频道代表法、单独估算(SESE)以及比C-RY-Real-Ral-Risal-rassimal-rassimalisal 校平比值(SDS-S-S-S-ralxxxx-ralis-ralxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx