Joint Deployment and Multiple Access Design for Intelligent Reflecting Surface Assisted Networks
Xidong Mu, Yuanwei Liu, Li Guo, Jiaru Lin, Robert Schober

TL;DR
This paper investigates optimal deployment and multiple access strategies for IRS-assisted networks, proposing algorithms that significantly improve communication performance by joint optimization of IRS placement, reflection, and power allocation.
Contribution
It introduces a joint optimization framework for IRS deployment, reflection coefficients, and power allocation across multiple access schemes, with novel algorithms and insights into deployment strategies.
Findings
Near-optimal performance with proposed algorithms
Asymmetric deployment benefits NOMA, symmetric benefits FDMA/TDMA
Optimized IRS deployment significantly enhances network performance
Abstract
The fundamental intelligent reflecting surface (IRS) deployment problem is investigated for IRS-assisted networks, where one IRS is arranged to be deployed in a specific region for assisting the communication between an access point (AP) and multiple users. Specifically, three multiple access schemes are considered, namely non-orthogonal multiple access (NOMA), frequency division multiple access (FDMA), and time division multiple access (TDMA). The weighted sum rate maximization problem for joint optimization of the deployment location and the reflection coefficients of the IRS as well as the power allocation at the AP is formulated. The non-convex optimization problems obtained for NOMA and FDMA are solved by employing monotonic optimization and semidefinite relaxation to find a performance upper bound. The problem obtained for TDMA is optimally solved by leveraging the time-selective…
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