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Main Authors: Chen, Guangji, Wu, Qingqing, Wu, Celimuge, Jian, Mengnan, Chen, Yijian, Chen, Wen
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2304.11639
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author Chen, Guangji
Wu, Qingqing
Wu, Celimuge
Jian, Mengnan
Chen, Yijian
Chen, Wen
author_facet Chen, Guangji
Wu, Qingqing
Wu, Celimuge
Jian, Mengnan
Chen, Yijian
Chen, Wen
contents Intelligent reflecting surface (IRS) has been considered as a revolutionary technology to enhance the wireless communication performance. To cater for multiple mobile users, adjusting IRS beamforming patterns over time, i.e., dynamic IRS beamforming (DIBF), is generally needed for achieving satisfactory performance, which results in high controlling power consumption and overhead. To avoid such cost, we propose a new architecture based on the static regulated IRS for wireless coverage enhancement, where the principle of distributed multiple-input multiple-output (D-MIMO) is integrated into the system to exploite the diversity of spatial directions provided by multiple access points (APs). For this new D-MIMO empowered static IRS architecture, the total target area is partitioned into several subareas and each subarea is served by an assigned AP. We consider to maximize the worst-case received power over all locations in the target area by jointly optimizing a single set of IRS beamforming pattern and AP-subarea association. Then, a two-step algorithm is proposed to obtain its high-quality solution. Theoretical analysis unveils that the fundamental squared power gain can still be achieved over all locations in the target area. The performance gap relative to the DIBF scheme is also analytically quantified. Numerical results validate our theoretical findings and demonstrate the effectiveness of our proposed design over benchmark schemes.
format Preprint
id arxiv_https___arxiv_org_abs_2304_11639
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Static IRS Meets Distributed MIMO: A New Architecture for Dynamic Beamforming
Chen, Guangji
Wu, Qingqing
Wu, Celimuge
Jian, Mengnan
Chen, Yijian
Chen, Wen
Information Theory
Intelligent reflecting surface (IRS) has been considered as a revolutionary technology to enhance the wireless communication performance. To cater for multiple mobile users, adjusting IRS beamforming patterns over time, i.e., dynamic IRS beamforming (DIBF), is generally needed for achieving satisfactory performance, which results in high controlling power consumption and overhead. To avoid such cost, we propose a new architecture based on the static regulated IRS for wireless coverage enhancement, where the principle of distributed multiple-input multiple-output (D-MIMO) is integrated into the system to exploite the diversity of spatial directions provided by multiple access points (APs). For this new D-MIMO empowered static IRS architecture, the total target area is partitioned into several subareas and each subarea is served by an assigned AP. We consider to maximize the worst-case received power over all locations in the target area by jointly optimizing a single set of IRS beamforming pattern and AP-subarea association. Then, a two-step algorithm is proposed to obtain its high-quality solution. Theoretical analysis unveils that the fundamental squared power gain can still be achieved over all locations in the target area. The performance gap relative to the DIBF scheme is also analytically quantified. Numerical results validate our theoretical findings and demonstrate the effectiveness of our proposed design over benchmark schemes.
title Static IRS Meets Distributed MIMO: A New Architecture for Dynamic Beamforming
topic Information Theory
url https://arxiv.org/abs/2304.11639