Guard Beam: Protecting mmWave Communication through In-Band Early Blockage Prediction
Rizqi Hersyandika, Yang Miao, Sofie Pollin

TL;DR
This paper introduces a guard beam technique for early detection of human-induced blockages in mmWave communication, enabling proactive handover and reducing data loss in dynamic environments.
Contribution
It proposes a novel in-band guard beam method for pre-shadowing detection, extending the prediction range and improving reliability of mmWave links.
Findings
Guard beam extends blockage prediction up to 360 ms before shadowing.
The proposed method improves early detection accuracy in dynamic environments.
Theoretical and experimental evaluations validate the effectiveness of the approach.
Abstract
Human blockage is one of the main challenges for mmWave communication networks in dynamic environments. The shadowing by a human body results in significant received power degradation and could occur abruptly and frequently. A shadowing period of hundred milliseconds might interrupt the communication and cause significant data loss, considering the huge bandwidth utilized in mmWave communications. An even longer shadowing period might cause a long-duration link outage. Therefore, a blockage prediction mechanism has to be taken to detect the moving blocker within the vicinity of mmWave links. By detecting the potential blockage as early as possible, a user equipment can anticipate by establishing a new connection and performing beam training with an alternative base station before shadowing happens. This paper proposes an early moving blocker detection mechanism by leveraging an extra…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · Advanced MIMO Systems Optimization · Wireless Body Area Networks
MethodsBalanced Selection
