TL;DR
This paper introduces a machine learning-based algorithm for efficient phase-less beam alignment in millimeter-wave multipath channels, significantly reducing overhead compared to traditional and compressive sensing methods, validated through 60 GHz experiments.
Contribution
The paper presents a novel machine learning algorithm tailored for multipath environments that operates solely on phase-less power measurements, enhancing beam alignment efficiency.
Findings
88% reduction in beam alignment overhead compared to exhaustive search
At least 62% reduction in overhead over existing compressive sensing methods
Validated with experimental data from 60 GHz phased arrays
Abstract
Communication systems at millimeter-wave (mmW) and sub-terahertz frequencies are of increasing interest for future high-data rate networks. One critical challenge faced by phased array systems at these high frequencies is the efficiency of the initial beam alignment, typically using only phase-less power measurements due to high frequency oscillator phase noise. Traditional methods for beam alignment require exhaustive sweeps of all possible beam directions, thus scale communications overhead linearly with antenna array size. For better scaling with the large arrays required at high mmW bands, compressive sensing methods have been proposed as their overhead scales logarithmically with the array size. However, algorithms utilizing machine learning have shown more efficient and more accurate alignment when using real hardware due to array impairments. Additionally, few existing phase-less…
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