Beyond Covariance: Generative Spatial Correlation Modeling and Channel Interpolation for Fluid Antenna Systems
Zhentian Zhang, Hao Jiang, Kai-Kit Wong, Hyundong Shin, Ross Murch

TL;DR
This paper introduces a generative spatial correlation model for fluid antenna systems, enabling efficient channel interpolation with theoretical performance bounds and a scalable Kalman filtering approach.
Contribution
It proposes a novel AR-based generative modeling framework that characterizes channel correlation and derives optimal interpolation bounds for fluid antenna systems.
Findings
Derived the fundamental limits of channel interpolation accuracy.
Developed a Kalman filtering algorithm achieving linear complexity.
Established a tight lower bound on the number of observations needed.
Abstract
Fluid antenna systems (FAS) enable unprecedented spatial diversity within a compact form factor by flexibly switching among high-density antenna ports. To activate this capability, channel state information (CSI) over the ports is required, which implies high estimation overhead because the number of ports is usually very large. Conventional estimation schemes tend to first estimate the CSI for a small number of ports and then infer the CSI for the remaining antenna ports by interpolation exploiting correlation characteristics. However, existing correlation-based techniques lack generalization ability, and the fundamental limits of interpolating the CSI from sparse observations remain poorly understood. This paper adopts a generative modeling framework for characterizing the channel correlation among the FAS ports that departs fundamentally from covariance-descriptive models.…
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