A New Heterogeneous Hybrid Massive MIMO Receiver With an Intrinsic Ability of Removing Phase Ambiguity of DOA Estimation via Machine Learning

Feng Shu;Baihua Shi;Yiwen Chen;Jiatong Bai;Yifan Li;Tingting Liu;Zhu Han;Xiaohu You
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Abstract

Massive multiple input multiple output (MIMO) antenna arrays eventuate a huge amount of circuit costs and computational complexity. To satisfy the needs of high precision and low cost in future green wireless communication, the conventional hybrid analog and digital MIMO receive structure emerges a natural choice. But it exists an issue of the phase ambiguity in direction of arrival (DOA) estimation and requires at least two time-slots to complete one-time DOA measurement with the first time-slot generating the set of candidate solutions and the second one to find a true direction by received beamforming over this set, which will lead to a low time-efficiency. To address this problem,a new heterogeneous sub-connected hybrid analog and digital ( $\mathrm {H}^{2}$ AD) MIMO structure is proposed with an intrinsic ability of removing phase ambiguity, and then a corresponding new framework is developed to implement a rapid high-precision DOA estimation using only single time-slot. The proposed framework consists of two steps: 1) form a set of candidate solutions using existing methods like MUSIC; 2) find the class of the true solutions and compute the class mean. To infer the set of true solutions, we propose two new clustering methods: weight global minimum distance (WGMD) and weight local minimum distance (WLMD). Next, we also enhance two classic clustering methods: accelerating local weighted k-means (ALW-K-means) and improved density. Additionally, the corresponding closed-form expression of Cramer-Rao lower bound (CRLB) is derived. Simulation results show that the proposed frameworks using the above four clustering can approach the CRLB in almost all signal to noise ratio (SNR) regions except for extremely low SNR (SNR $\lt -5$ dB). Four clustering methods have an accuracy decreasing order as follows: WGMD, improved DBSCAN, ALW-K-means and WLMD.
一种基于机器学习消除DOA估计相位模糊的新型异构混合海量MIMO接收机
大规模的多输入多输出(MIMO)天线阵列带来了巨大的电路成本和计算复杂度。为了满足未来绿色无线通信对高精度和低成本的要求,传统的模拟与数字混合MIMO接收结构成为必然选择。但该方法在估计到达方向时存在相位模糊的问题,并且需要至少两个时隙才能完成一次到达方向测量,其中第一个时隙产生候选解集,第二个时隙通过接收波束形成在该集上找到真实方向,这将导致时间效率较低。针对这一问题,提出了一种具有消除相位模糊能力的新型异构子连接模数混合MIMO ($\ mathm {H}^{2}$ AD)结构,并开发了相应的框架,实现了单时隙快速高精度DOA估计。提出的框架包括两个步骤:1)使用现有方法(如MUSIC)形成一组候选解决方案;2)找到真解的类别并计算类别均值。为了推断真解的集合,我们提出了两种新的聚类方法:加权全局最小距离(WGMD)和加权局部最小距离(WLMD)。接下来,我们还对两种经典的聚类方法进行了改进:加速局部加权k-means (ALW-K-means)和改进密度。此外,还推导了相应的crmer - rao下界的封闭表达式。仿真结果表明,除了极低信噪比(SNR $\lt -5$ dB)外,采用上述四种聚类的框架几乎可以在所有信噪比(SNR)区域接近CRLB。四种聚类方法的准确率递减顺序为:WGMD、改进DBSCAN、ALW-K-means和WLMD。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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