Robust Hybrid Beamforming with Liquid Crystal Antennas and Liquid Neural Networks
Xinquan Wang, Mingjun Ying, Hongren Chen, Guanyue Qian, Xingchen Liu, Peijie Ma, Dipankar Shakya, Christos Argyropoulos, Theodore S. Rappaport

TL;DR
This paper introduces a hybrid beamforming approach combining liquid crystal antennas and liquid neural networks to enhance sub-THz wireless communication performance, addressing hardware and channel estimation challenges.
Contribution
It proposes a novel hybrid beamforming framework utilizing LC antennas and LNNs, demonstrating significant spectral efficiency gains and robustness in simulated urban sub-THz channels.
Findings
Achieves 88.6% spectral efficiency gain over baseline methods.
Provides higher robustness to imperfect channel estimation.
Outperforms standard antenna models by 1.9 times in spectral efficiency.
Abstract
Sub-terahertz (sub-THz) multi-user multiple-input multiple-output (MU-MIMO) systems unlock immense bandwidth for 6G wireless communications. However, practical deployment of wireless systems in sub-THz bands faces critical challenges such as increased atmospheric absorption, reduced channel coherence time due to increased Doppler spread at higher carrier frequencies, and hardware bottlenecks as low-loss sub-THz phase shifters are difficult to realize. To overcome the hardware and channel estimation challenges of sub-THz systems, this paper proposes a hybrid beamforming (BF) framework that integrates reconfigurable liquid crystal (LC) antennas with a liquid neural network (LNN) for transmitter. Specifically, we employ an LC antenna as the analog BF stage of a hybrid BF architecture, exploiting its voltage-driven permittivity tunability to achieve high-gain beam steering without the need…
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