Machine-Learning-based High-resolution DOA Measurement and Robust DM for Hybrid Analog-Digital Massive MIMO Transceiver
Feng Shu, Ling Xu, Jinyong Lin, Jingsong Hu, Lingqing Gui, and Jun Li, Jiangzhou Wang

TL;DR
This paper introduces a machine-learning framework combined with an improved ESPRIT technique for high-precision DOA measurement in hybrid analog-digital massive MIMO systems, enhancing robustness and accuracy for directional modulation.
Contribution
It proposes a novel ML-based approach integrated with I-HAD-ESPRIT to improve DOA estimation accuracy and robustness in HAD transceivers, outperforming existing methods.
Findings
Achieves HAD CRLB with I-HAD-ESPRIT
ML framework significantly improves DOA measurement accuracy
Robust DM transmitter outperforms non-robust in BER and secrecy rate
Abstract
At hybrid analog-digital (HAD) transceiver, an improved HAD rotational invariance techniques (ESPRIT), called I-HAD-ESPRIT, is proposed to measure the direction of arrival (DOA) of desired user, where the phase ambiguity due to HAD structure is addressed successfully. Subsequently, a machine-learning (ML) framework is proposed to improve the precision of measuring DOA. In the training stage, the HAD transceiver works as a receiver and repeatedly measures the values of DOA via I-HAD-ESPRIT to form a slightly large training data set (TDS) of DOA. From TDS, we find that the probability density function (PDF) of DOA measurement error (DOAME) is approximated as a Gaussian distribution by the histogram method in ML. This TDS is used to learn the mean of DOA and the variance of DOAME, which are utilized to infer their values and improve their precisions in the real-time stage. The HAD…
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Taxonomy
TopicsDirection-of-Arrival Estimation Techniques · Antenna Design and Optimization · Wireless Signal Modulation Classification
