STAR-RIS-Enabled Multi-Path Beam Routing with Passive Beam Splitting
Bonan An, Weidong Mei, Yuanwei Liu, Dong Wang, Zhi Chen

TL;DR
This paper introduces a novel multi-STAR-RIS communication system that leverages full-space reflection and transmission to enhance LoS path diversity, optimizing beam routing for improved signal power in multi-user scenarios.
Contribution
The paper develops a new multi-STAR-RIS beam routing framework, providing closed-form solutions and a clique-based algorithm for efficient path selection and multi-user optimization.
Findings
STAR-RIS beam routing outperforms reflection-only RISs
Proposed algorithms effectively optimize multi-path and multi-user scenarios
Simulation confirms significant performance gains
Abstract
Reconfigurable intelligent surfaces (RISs) can be densely deployed in the environment to create multi-reflection line-of-sight (LoS) links for signal coverage enhancement. However, conventional reflection-only RISs can only achieve half-space reflection, which limits the LoS path diversity. In contrast, simultaneously transmitting and reflecting RISs (STAR-RISs) can achieve full-space reflection and transmission, thereby creating more LoS paths. Hence, in this paper, we study a new multi-STAR-RIS-aided communication system, where a multi-antenna base station (BS) transmits to multiple single-antenna users by exploiting the signal beam routing over a set of cascaded LoS paths each formed by multiple STAR-RISs. To reveal essential insights, we first consider a simplified single-user case, aiming to maximize its received signal power by jointly optimizing the active beamforming at the BS,…
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Taxonomy
TopicsPhotonic and Optical Devices · Optical Wireless Communication Technologies · Optical Coherence Tomography Applications
MethodsBalanced Selection · Sparse Evolutionary Training
