Multiple signal classification (MUSIC) has been widely applied in multiple-input multiple-output (MIMO) receivers for direction-of-arrival (DOA) estimation. To reduce the cost of radio frequency (RF) chains operating at millimeter-wave bands, hybrid analog-digital structure has been adopted in massive MIMO transceivers. In this situation, the received signals at the antennas are unavailable to the digital receiver, and as a consequence, the spatial covariance matrix (SCM), which is essential in MUSIC algorithm, cannot be obtained using traditional sample average approach. Based on our previous work, we propose a novel algorithm for SCM reconstruction in hybrid massive MIMO systems with multiple RF chains. By switching the analog beamformers to a group of predetermined DOAs, SCM can be reconstructed through the solutions of a set of linear equations. In addition, based on insightful analysis on that linear equations, a low-complexity algorithm, as well as a careful selection of the predetermined DOAs, will be also presented in this paper. Simulation results show that the proposed algorithms can reconstruct the SCM accurately so that MUSIC algorithm can be well used for DOA estimation in hybrid massive MIMO systems with multiple RF chains.
翻译:为了降低以毫米波波段运行的无线电频率链的成本,在大型移动器中采用了混合模拟数字结构。在这种情况下,数字接收器无法获得在天线上接收到的信号,因此,无法使用传统平均样本方法获得MUSIC算法中必不可少的空间共变矩阵(SMCM),根据我们以前的工作,我们提议对具有多个RF链链的混合大型MIMO系统进行SCM重建采用新的算法。通过将模拟光束转换成一组预定的DOA,SCM可以通过一套线性方程的解决方案进行重建。此外,根据对线性方程的深刻分析,将提出低相容算法,并仔细选择预定的DOA。模拟结果显示,拟议的IMMIC系统模拟光谱光谱光谱系统,可以精确地用IMFASM 系统对IMF MIS 进行多级次等式分析。