Adaptive Beam Alignment using Noisy Twenty Questions Estimation with Trained Questioner
Chunsong Sun, Lin Zhou

TL;DR
This paper introduces an adaptive beam alignment method for 6G systems using noisy twenty questions estimation with a trained questioner, improving feasibility, interpretability, and performance over existing algorithms.
Contribution
It proposes a novel adaptive beam alignment algorithm employing noisy twenty questions estimation with trained questioners, addressing feasibility and interpretability issues of prior methods.
Findings
Outperforms benchmark algorithms in simulations
Eliminates reliance on ideal assumptions
Enhances interpretability and feasibility
Abstract
The 6G communication systems use mmWave and MIMO technologies to achieve wide bandwidth and high throughout, leading to indispensable need for beam alignment to overcome severe signal attenuation. Traditional sector-search-based beam alignment algorithms rely on sequential sampling to identify the best sector, resulting in a significant latency burden on 6G communication systems. Recently proposed adaptive beam alignment algorithms based on the active learning framework address the problem, aiming to identify the optimal sector with the fewest possible samples under an identical sector partition. Nevertheless, these algorithms either lack feasibility (Chiu, Ronquillo and Javidi, JSAC 2019) due to ideal assumptions or lack interpretability (Sohrabi, Chen and Yu, JSAC 2021) due to the use of end-to-end black-box neural networks. To avoid ideal assumptions and maintain interpretability, we…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · Wireless Signal Modulation Classification · Speech and Audio Processing
