Reducing the Control Overhead of Intelligent Reconfigurable Surfaces Via a Tensor-Based Low-Rank Factorization Approach
Bruno Sokal, Paulo R. B. Gomes, Andr\'e L. F. de Almeida, Behrooz, Makki, and Gabor Fodor

TL;DR
This paper introduces a tensor-based low-rank factorization method to significantly reduce control overhead in intelligent reconfigurable surfaces, maintaining spectral efficiency especially in line-of-sight scenarios.
Contribution
It proposes a novel low-rank tensor approximation approach to represent IRS phase-shifts, drastically reducing feedback and control overhead compared to traditional methods.
Findings
Reduces BS-IRS control feedback by tensor low-rank modeling.
Maintains spectral efficiency similar to near-optimal phase-shifts.
Particularly effective in line-of-sight scenarios.
Abstract
Passive intelligent reconfigurable surfaces (IRS) are becoming an attractive component of cellular networks due to their ability of shaping the propagation environment and thereby improving the coverage. While passive IRS nodes incorporate a great number of phase-shifting elements and a controller entity, the phase-shifts are typically determined by the cellular base station (BS) due to its computational capability. Since the fine granularity control of the large number of phase-shifters may become prohibitive in practice, it is important to reduce the control overhead between the BS and the IRS controller. To this end, in this paper we propose a low-rank approximation of the near-optimal phase-shifts, which would incur prohibitively high communication overhead on the BS-IRS controller links. The key idea is to represent the potentially large IRS phase-shift vector using a low-rank…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Advanced Antenna and Metasurface Technologies · Underwater Vehicles and Communication Systems
MethodsBalanced Selection
