Beam Alignment in Multipath Environments for Integrated Sensing and Communication using Bandit Learning
Akanksha Sneh, Shobha Sundar Ram, Sumit J Darak, Aakanksha Tewari

TL;DR
This paper introduces an integrated sensing and communication approach using bandit learning to optimize beam alignment in multipath environments, significantly reducing exploration time and increasing throughput in mmWave systems.
Contribution
The work combines radar-based sensing with bandit algorithms to efficiently narrow down beam choices, improving alignment speed and communication performance.
Findings
35% reduction in exploration time
1.4 times higher throughput
Effective in complex multipath scenarios
Abstract
Prior works have explored multi-armed bandit (MAB) algorithms for the selection of optimal beams for millimeter-wave (mmW) communications between base station and mobile users. However, when the number of beams is large, the existing MAB algorithms are characterized by long exploration times, resulting in poor overall communication throughput. In this work, we propose augmenting the upper confidence bound (UCB) based MAB with integrated sensing and communication (ISAC) to address this limitation. The premise of the work is that the radar and communication functionalities share the same field-of-view and that communication mobile users are detected by the radar as mobile targets. The radar information is used for significantly reducing the number of candidate beams for the UCB, resulting in an overall reduction in the exploration time. Further, the radar information is used to estimate…
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Taxonomy
TopicsRadar Systems and Signal Processing · Sparse and Compressive Sensing Techniques · Wireless Signal Modulation Classification
