In this thesis, we investigate the problem of efficient data detection in large MIMO and high order MU-MIMO systems. First, near-optimal low-complexity detection algorithms are proposed for regular MIMO systems. Then, a family of low-complexity hard-output and soft-output detection schemes based on channel matrix puncturing targeted for large MIMO systems is proposed. The performance of these schemes is characterized and analyzed mathematically, and bounds on capacity, diversity gain, and probability of bit error are derived. After that, efficient high order MU-MIMO detectors are proposed, based on joint modulation classification and subspace detection, where the modulation type of the interferer is estimated, while multiple decoupled streams are individually detected. Hardware architectures are designed for the proposed algorithms, and the promised gains are verified via simulations. Finally, we map the studied search-based detection schemes to low-resolution precoding at the transmitter side in massive MIMO and report the performance-complexity tradeoffs.
翻译:在本论文中,我们研究了大型MIMO和高序MU-MIMO系统中高效数据探测的问题。首先,为常规MIMO系统提出了近乎最佳的低复杂度检测算法。然后,根据大型MIMO系统的频道矩阵穿透,提出了一套低复杂度硬输出和软输出检测办法。从数学角度对这些方案的性能进行了定性和分析,并得出了能力、多样性增益和位误差概率的界限。之后,根据联合调控分类和子空间探测,提出了高效高序MU-MIMO探测器,其中对干扰器的调制类型进行了估计,同时对多个脱钩流进行了单独检测。硬件结构是为拟议的算法设计的,通过模拟核实了所承诺的收益。最后,我们绘制了研究的基于搜索的检测办法,以大型MIMO发射方的低分辨率预编码为基础,并报告了性能兼容性交易。