Maximum Likelihood DOA Estimation Aided by Magnitude Measurements

Ningbo Liang, Shengchu Wang
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Abstract

This paper proposes a maximum likelihood (ML) direction of arrival (DOA) estimator for a magnitude-aided antenna array (MA-AA), which incorporates magnitude-only radio frequency (RF) chains into the traditional AA to obtain magnitude measurements. The magnitude observations are further quantized by low-resolution (2-bit) analog-to-digital converters (ADC) in quantized MA-AA (QMA-AA) to further reduce the circuit power of magnitude RF chains. In ML, the multi-signal classification (MUSIC) method is firstly used to get estimates of DOA based on complex measurements from AA. Secondly, the angle region around the MUSIC DOAs is gridded uniformly and their likelihood values are calculated based on complex-valued and (quantized) magnitude observations. Since the channel response is modeled as continuous random variables, it is impractical to search over its value range. Therefore, the channel response estimate is obtained by the least-square (LS) method before calculating the likelihood function. Finally, the DOA with the highest likelihood function value is the DOA estimate of ML. Simulation results show that both the magnitude measurements from MA-AA and low-resolution quantized magnitude measurements from QMA-AA can enhance the DOA estimation accuracy of ML. ML outperforms the traditional DOA estimators and does not require a reference source. MA-AA is more energy-efficient than the traditional AA under the ML estimator.
借助震级测量的最大似然DOA估计
本文提出了一种星等辅助天线阵列(MA-AA)的最大似然(ML)到达方向(DOA)估计方法,该方法在传统的星等辅助天线阵列(MA-AA)中加入仅星等的射频(RF)链以获得星等测量值。量化MA-AA (QMA-AA)中的低分辨率(2位)模数转换器(ADC)进一步量化幅度观测,以进一步降低幅度RF链的电路功率。在机器学习中,首先使用多信号分类(MUSIC)方法,根据AA的复杂测量值来估计DOA。其次,对MUSIC doa周围的角度区域进行均匀网格化,并基于复值(量化)震级观测值计算其似然值;由于信道响应建模为连续随机变量,因此在其取值范围内搜索是不切实际的。因此,在计算似然函数之前,先用最小二乘(LS)方法得到信道响应估计。仿真结果表明,MA-AA的震级测量和QMA-AA的低分辨率量化震级测量都可以提高ML的DOA估计精度,ML的DOA估计优于传统的DOA估计,并且不需要参考源。在ML估计器下,MA-AA比传统AA更节能。
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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