In-sector Compressive Beam Alignment for MmWave and THz Radios
Hamed Masoumi, Michel Verhaegen, Nitin Jonathan Myers

TL;DR
This paper introduces an in-sector compressive sensing-based beam alignment method for mmWave and THz radios, reducing training overhead and improving SNR by partitioning the angle domain into sectors and optimizing channel estimation within the best sector.
Contribution
It proposes a novel in-sector CS approach compatible with IEEE 802.11ad/ay, utilizing a low-resolution beam codebook and optimized CS matrix for enhanced beam alignment.
Findings
Higher received SNR compared to existing sector sweep codebooks
Improved in-sector channel reconstruction accuracy
Reduced training overhead in beam alignment
Abstract
Beam alignment is key in enabling millimeter wave and terahertz radios to achieve their capacity. Due to the use of large arrays in these systems, the common exhaustive beam scanning results in a substantial training overhead. Prior work has addressed this issue, by developing compressive sensing (CS)-based methods which exploit channel sparsity to achieve faster beam alignment. Unfortunately, standard CS techniques employ wide beams and suffer from a low signal-to-noise ratio (SNR) in the channel measurements. To solve this challenge, we develop an IEEE 802.11ad/ay compatible technique that takes an in-sector approach for CS. In our method, the angle domain channel is partitioned into several sectors, and the channel within the best sector is estimated for beam alignment. The essence of our framework lies in the construction of a low-resolution beam codebook to identify the best sector…
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Taxonomy
TopicsAntenna Design and Analysis · Advanced MIMO Systems Optimization · Millimeter-Wave Propagation and Modeling
