Prototyping and Experimental Results for Environment-Aware Millimeter Wave Beam Alignment via Channel Knowledge Map
Channel knowledge map (CKM), which aims to directly reflect the intrinsic channel properties of the local wireless environment, is a novel technique for achieving environmentaware communication. In this paper, to alleviate the large training overhead in millimeter wave (mmWave) beam alignment, an en...
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Zusammenfassung: | Channel knowledge map (CKM), which aims to directly reflect the intrinsic
channel properties of the local wireless environment, is a novel technique for
achieving environmentaware communication. In this paper, to alleviate the large
training overhead in millimeter wave (mmWave) beam alignment, an
environment-aware and training-free beam alignment prototype is established
based on a typical CKM, termed beam index map (BIM). To this end, a general CKM
construction method is first presented, and an indoor BIM is constructed
offline to learn the candidate transmit and receive beam index pairs for each
grid in the experimental area. Furthermore, based on the location information
of the receiver (or the dynamic obstacles) from the ultra-wide band (UWB)
positioning system, the established BIM is used to achieve training-free beam
alignment by directly providing the beam indexes for the transmitter and
receiver. Three typical scenarios are considered in the experiment, including
quasi-static environment with line-of-sight (LoS) link, quasistatic environment
without LoS link and dynamic environment. Besides, the receiver orientation
measured from the gyroscope is also used to help CKM predict more accurate beam
indexes. The experiment results show that compared with the benchmark
location-based beam alignment strategy, the CKM-based beam alignment strategy
can achieve much higher received power, which is close to that achieved by
exhaustive beam search, but with significantly reduced training overhead. |
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DOI: | 10.48550/arxiv.2403.08200 |