This paper considers the problem of symbol detection in massive multiple-input multiple-output (MIMO) wireless communication systems. We consider hard-thresholding preceeded by two variants of the regularized least squares (RLS) decoder; namely the unconstrained RLS and the RLS with box constraint. For all schemes, we focus on the evaluation of the mean squared error (MSE) and the symbol error probability (SEP) for M-ary pulse amplitude modulation (M-PAM) symbols transmitted over a massive MIMO system when the channel is estimated using linear minimum mean squared error (LMMSE) estimator. Under such circumstances, the channel estimation error is Gaussian which allows for the use of the convex Gaussian min-max theorem (CGMT) to derive asymptotic approximations for the MSE and SER when the system dimensions and the coherence duration grow large with the same pace. The obtained expressions are then leveraged to derive the optimal power distribution between pilot and data under a total transmit energy constraint. In addition, we derive an asymptotic approximation of the goodput for all schemes which is then used to jointly optimize the number of training symbols and their associated power. Numerical results are presented to support the accuracy of the theoretical results.
翻译:本文考虑了大规模多输出多输出无线通信系统中的符号检测问题。 当频道使用直线最小平均误差(LMMSE)估计时, 我们考虑由两种变异的常规最小正方(RLS)解码器(即不受约束的 RLS ) 和带有框限制的 RLS 。 对于所有方案, 我们侧重于评估平均正方差(MSE) 和在系统尺寸和一致性持续时间以同样速度大幅增长时, M- ary 脉冲振动调制(M- PAM) 符号的符号误差概率(SEP ) 。 当频道使用直线最小正方形误差(LMMSE) 估计时, 我们考虑硬方形偏差, 在此情况下, 频道估计误差是高方方形最小正方形的正方形( Gossian) 和 RLLLLLSLSLS 值等值。 此外, 频道的测算错误允许使用正方形方形的正数, 在系统尺寸和一致的理论性培训结果中, 我们得出了最佳的模型, 。