Joint Base Station and IRS Deployment for Enhancing Network Coverage: A Graph-Based Modeling and Optimization Approach
Weidong Mei, Rui Zhang

TL;DR
This paper proposes a graph-based optimization framework for jointly deploying base stations and IRSs to maximize wireless network coverage, balancing performance with deployment costs.
Contribution
It introduces a novel joint deployment model for BSs and IRSs using graph theory and develops efficient algorithms to solve the complex optimization problem.
Findings
Effective algorithms for joint BS and IRS deployment.
Trade-offs between coverage and deployment costs.
Numerical validation of the proposed approach.
Abstract
Intelligent reflecting surface (IRS) can be densely deployed in complex environment to create cascaded line-of-sight (LoS) paths between multiple base stations (BSs) and users via tunable IRS reflections, thereby significantly enhancing the coverage performance of wireless networks. To achieve this goal, it is vital to optimize the deployed locations of BSs and IRSs in the wireless network, which is investigated in this paper. Specifically, we divide the coverage area of the network into multiple non-overlapping cells and decide whether to deploy a BS/IRS in each cell given a total number of BSs/IRSs available. We show that to ensure the network coverage/communication performance, i.e., each cell has a direct/cascaded LoS path with at least one BS, as well as such LoS paths have the average number of IRS reflections less than a given threshold, there is a fundamental trade-off with the…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Optical Wireless Communication Technologies · Satellite Communication Systems
