A Low-Complexity Solution for Optimizing Binary Intelligent Reflecting Surfaces towards Wireless Communication

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Date

2024

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Multidisciplinary Digital Publishing Institute (MDPI)

Abstract

Intelligent Reflecting Surfaces (IRSs) enable us to have a reconfigurable reflecting surface that can efficiently deflect the transmitted signal toward the receiver. The initial step in the IRS usually involves estimating the channel between a fixed transmitter and a stationary receiver. After estimating the channel, the problem of finding the most optimal IRS configuration is non-convex, and involves a huge search in the solution space. In this work, we propose a novel and customized technique which efficiently estimates the channel and configures the IRS with fixed transmit power, restricting the IRS coefficients to  (Formula presented.). The results from our approach are numerically compared with existing optimization techniques.The key features of the linear system model under consideration include a Reconfigurable Intelligent Surface (RIS) setup consisting of 4096 RIS elements arranged in a 64 × 64 element array; the distance from RIS to the access point measures 107 m. NLOS users are located around 40 m away from the RIS element and 100 m from the access point. The estimated variance of noise  (Formula presented.)  is 3.1614  (Formula presented.). The proposed algorithm provides an overall data rate of 126.89 (MBits/s) for Line of Sight and 66.093 (MBits/s) for Non Line of Sight (NLOS) wireless communication. © 2024 by the authors.

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Keywords

Channel estimation, Frequency division multiplexing, 5g/6g, Intelligent reflecting surface, Line of Sight, Lines-of-sight, Non line of sight, Nonline of sight, Orthogonal frequency division multiplexing, Orthogonal frequency-division multiplexing, Programmable meta-surface, Reflecting surface, Smart System, 5G mobile communication systems

Citation

Future Internet, 2024, 16, 8, pp. -

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