Near-field Channel Estimation for XL-RIS-aided mmWave MIMO Systems
Erkang Dong, Taihao Zhang, Cunhua Pan, Hong Ren, Jiangzhou Wang

TL;DR
This paper proposes a low-overhead two-stage near-field channel estimation scheme for XL-RIS-assisted mmWave MIMO systems, addressing the hybrid far-field and near-field channel modeling challenges.
Contribution
It introduces a joint estimation method exploiting common BS-RIS links and polar-domain sparsity, with an alternating least-squares refinement for improved accuracy.
Findings
Achieves competitive estimation performance with reduced pilot overhead.
Effectively models hybrid far-field and near-field channels.
Demonstrates robustness in simulation results.
Abstract
Extremely large-scale reconfigurable intelligent surfaces (XL-RISs) have emerged as a promising technology for millimeter-wave (mmWave) communications. However, the exceedingly large aperture of XL-RISs renders the RIS-user links likely to operate in the near-field region, where the conventional planar-wave assumption and angular-domain sparse representation become invalid, thus making channel estimation significantly more challenging. In this paper, we investigate cascaded channel estimation for an XL-RIS-aided multi-user multiple-input multiple-output (MU-MIMO) system, in which the BS-RIS channel is modeled in the far field, while the RIS-user channels exhibit near-field spherical-wave characteristics. To tackle the resulting hybrid-field estimation problem, we propose a low-overhead two-stage channel estimation scheme by jointly exploiting the common BS-RIS link shared by all users…
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