Hybrid Architecture Gets Fluid: A New Paradigm for Direction-of-arrival Estimation in 6G Networks
Ye Tian, Jiaji Ren, Tuo Wu, Wei Liu, Maged Elkashlan, Matthew C. Valenti, Naofal Al-Dhahir, and Hing Cheung So

TL;DR
This paper introduces a hybrid fluid antenna architecture for 6G DOA estimation, combining innovative sampling and covariance reconstruction methods to achieve high accuracy with reduced hardware complexity.
Contribution
It proposes a novel fluid antenna-enabled hybrid architecture with real-time sampling, covariance reconstruction, and a low-cost MUSIC estimator for scalable 6G DOA sensing.
Findings
Achieves near-digital DOA accuracy with less hardware
Develops a real-time spatial-phase sampling strategy
Provides performance bounds via CRLB analysis
Abstract
High-precision direction-of-arrival (DOA) estimation, as a key sensing capability for 6G-enabled applications such as autonomous driving and extended reality, is increasingly dependent on the effective exploitation of spatial degrees of freedom (DOFs). This paper integrates two frontier DOFs-oriented paradigms and proposes a fluid antenna-enabled hybrid analog-digital (FA-HAD) architecture, which features an extremely lightweight front-end configuration mechanism and efficient spatial DOFs exploitation. Within this architecture, a collaborative spatial-phase sampling strategy is first developed to enable real-time 2-D DOA estimation under compressive observations, and a single-source CRLB analysis is provided to quantify the achievable performance limit, offering quantitative guidance for accuracy-overhead trade-offs. Furthermore, an efficient virtual-array spatial covariance matrix…
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