LLM Enabled Beam Training for Pinching Antenna Systems (PASS)
Deqiao Gan, Xiaoxia Xu, Xiaohu Ge, Yuanwei Liu

TL;DR
This paper introduces an LLM-enabled beam training framework for pinching antenna systems in MIMO communications, significantly reducing overhead and improving beamforming and sum rate performance.
Contribution
It develops a novel LLM-based supervised learning mechanism for environment-adaptive beam training in PASS, applicable to both single-user and multi-user scenarios.
Findings
Achieves over 95% Top-1 accuracy in single-user beam selection.
Improves beamforming gains by 51.92% over conventional methods.
Enhances sum rate by up to 57.14% in multi-user scenarios.
Abstract
To enable intelligent beam training, a large language model (LLM)-enabled beam training framework is proposed for the pinching antenna system (PASS) in downlink multi-user multiple-input multiple-output (MIMO) communications. A novel LLM-based beam training supervised learning mechanism is developed, allowing context-aware and environment-adaptive probing for PASS to reduce overheads. Both single-user and multi-user cases are considered. 1) For single-user case, the LLM-based pinching beamforming codebook generation problem is formulated to maximize the beamforming gain. Then, the optimal transmit beamforming is obtained by maximum ratio transmission (MRT). 2) For multi-user case, a joint codebook generation and beam selection problem is formulated based on the system sum rate under the minimum mean square error (MMSE) transmit beamforming. The training labels for pinching beamforming…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Communication Technologies · Millimeter-Wave Propagation and Modeling
