RIS-Aware Indoor Network Planning: The Rennes Railway Station Case

Future generations of wireless networks will offer newfangled performance via unprecedented solutions: the metasurface innovation will drive such a revolution by posing control onto the surrounding propagation environment, always portrayed as a tamper-proof black-box. The reconfigurable intelligent surface (RIS) technology, envisioned as the discrete version of a metasurface, can be dynamically configured to alter the propagation properties of the impinging signals by, e.g., steering the corresponding beams towards defined directions. This will unlock new application opportunities and deliver advanced enduser services. However, this fascinating solution comes at not negligible costs: RISs require ad-hoc design, deployment and management operations to be fully exploited. In this paper, we tackle the RISs placement problem from a theoretical viewpoint, showcasing a large-scale solution on synthetic topologies to improve communication performance while solving the “dead-zone” problem. Additionally, our mathematical framework is empirically validated within a realistic indoor scenario, the Rennes railway station, showing how a complex indoor propagation environment can be fully disciplined by an advanced RIS installation.

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