Non-Uniform Linear Antenna Array Design and Optimization for Millimeter Wave Communications
Peng Wang, Yonghui Li, Yuexing Peng, Soung Chang Liew, and Branka, Vucetic

TL;DR
This paper develops an analytical framework for optimizing non-uniform linear antenna arrays in millimeter wave MIMO systems to maximize effective multiplexing gain, proposing a groupwise Fekete-point deployment for improved capacity.
Contribution
It introduces an asymptotic analysis of NULA deployment, proving the optimality of groupwise Fekete-point distribution and extending it to practical configurations with significant capacity improvements.
Findings
Optimal NULA deployment follows groupwise Fekete-point distribution.
Numerical results show significant capacity gains over traditional ULAs.
Proposed deployment is validated for both asymptotic and realistic non-asymptotic scenarios.
Abstract
In this paper, we investigate the optimization of non-uniform linear antenna arrays (NULAs) for millimeter wave (mmWave) line-of-sight (LoS) multiple-input multiple-output (MIMO) channels. Our focus is on the maximization of the system effective multiplexing gain (EMG), by optimizing the individual antenna positions in the transmit/receive NULAs. Here the EMG is defined as the number of signal streams that are practically supported by the channel at a finite SNR. We first derive analytical expressions for the asymptotic channel eigenvalues with arbitrarily deployed NULAs when, asymptotically, the end-to-end distance is sufficiently large compared to the aperture sizes of the transmit/receive NULAs. Based on the derived expressions, we prove that, the asymptotically optimal NULA deployment that maximizes the achievable EMG should follow the groupwise Fekete-point distribution.…
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