Coded Beam Training for RIS Assisted Wireless Communications
Yuhao Chen, Linglong Dai

TL;DR
This paper introduces a coded beam training framework for RIS-assisted wireless communications that enhances beam training accuracy in low SNR conditions by leveraging error correction capabilities and novel codeword design schemes.
Contribution
It extends coded beam training to RIS systems, proposing a new codeword design criterion and a dimension-reduced encoder scheme for improved accuracy and error correction.
Findings
Effective beam training in low SNR scenarios.
Improved beam shape and error correction with the proposed schemes.
Simulation results confirm enhanced performance over existing methods.
Abstract
Reconfigurable intelligent surface (RIS) is considered as one of the key technologies for future 6G communications. To fully unleash the performance of RIS, accurate channel state information (CSI) is crucial. Beam training is widely utilized to acquire the CSI. However, before aligning the beam correctly to establish stable connections, the signal-to-noise ratio (SNR) at UE is inevitably low, which reduces the beam training accuracy. To deal with this problem, we exploit the coded beam training framework for RIS systems, which leverages the error correction capability of channel coding to improve the beam training accuracy under low SNR. Specifically, we first extend the coded beam training framework to RIS systems by decoupling the base station-RIS channel and the RIS-user channel. For this framework, codewords that accurately steer to multiple angles is essential for fully unleashing…
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Taxonomy
TopicsAntenna Design and Optimization
