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Publicações

Publicações por CTM

2025

Evaluation of Switching Technologies for Reflective and Transmissive RISs at Sub-THz Frequencies

Autores
Inacio, SI; Ma, Y; Luo, Q; Lucci, L; Kumar, A; Jimenez, JLG; Reig, B; Siligaris, A; Mercier, D; Deuermeier, J; Kiazadeh, A; Lain Rubio, V; Cojocari, O; Phan, TD; Soh, PJ; Matos, S; Alexandropoulos, GC; Pessoa, LM; Clemente, A;

Publicação
2025 JOINT EUROPEAN CONFERENCE ON NETWORKS AND COMMUNICATIONS & 6G SUMMIT, EUCNC/6G SUMMIT

Abstract
For the upcoming 6G wireless networks, reconfigurable intelligent surfaces are an essential technology, enabling dynamic beamforming and signal manipulation in both reflective and transmissive modes. It is expected to utilize frequency bands in the millimeter-wave and THz, which presents unique opportunities but also significant challenges. The selection of switching technologies that can support high-frequency operation with minimal loss and high efficiency is particularly complex. In this work, we demonstrate the potential of advanced components such as Schottky diodes, memristor switches, liquid metal-based switches, phase change materials, and RF-SOI technology in RIS designs as an alternative to overcome limitations inherent in traditional technologies in D-band (110-170 GHz).

2025

Indoor Channel Characterization with Extremely Large Reconfigurable Intelligent Surfaces at 300 GHz

Autores
Cardoso, F; Matos, S; Pessoa, LM; Alexandropoulos, GC;

Publicação
2025 19TH EUROPEAN CONFERENCE ON ANTENNAS AND PROPAGATION, EUCAP

Abstract
The technology of Reconfigurable Intelligent Surfaces (RISs) is lately being considered as a boosting component for various indoor wireless applications, enabling wave propagation control and coverage extension. However, the incorporation of extremely large RISs, as recently being considered for ultra-high capacity industrial environments at subTHz frequencies, imposes certain challenges for indoor channel characterization. In particular, such RISs contribute additional multipath components and their large sizes with respect to the signal wavelength lead to near-field propagation. To this end, ray tracing approaches become quite cumbersome and need to be rerun for different RIS unit cell designs. In this paper, we present a novel approach for the incorporation of RISs in indoor multipath environments towards their efficient channel characterization. An 100x100 RIS design with 2-bit resolution unit cells realizing a fixed anomalous reflection at 300 GHz is presented, whose radar cross section patterns are obtained via full-wave simulations. It is showcased that the RIS behavior can be conveniently approximated by a three-ray model, which can be efficiently incorporated within available ray tracing tools, and that the far-field approximation is valid for even very small distances from the RIS.

2025

Memristors from MoS2 by liquid-liquid interface assembly

Autores
Deuermeier, J; Kiazadeh, A; Neves, D; Papanastasiou, D; Franco, M; Kelly, A; Neilson, J; Coleman, JM; Mingates, T; Vaz, J; Matos, S; Ghatas, M; Pessoa, LM; Carlos, E; Fortunato, E; Martins, R; Mendes, L;

Publicação
Proceedings of the Neuronics Conference 2025

Abstract

2025

Radio Propagation as a Service: Raytracing-Based Channel Simulation from Camera Data

Autores
Sasan Sharifipour; Tuomas Määttä; Niklas Vaara; Pekka Sangi; Lam Huynh; Janne Mustaniemi; Janne Heikkilä; Luis M. Pessoa; Filipe B. Teixeira; Miguel Bordallo López;

Publicação
2025 33rd European Signal Processing Conference (EUSIPCO)

Abstract

2025

Characterization of Indoor Reconfigurable Intelligent Surface-Assisted Channels at 304 GHz: Experimental Measurements, Challenges, and Future Directions

Autores
Alexandropoulos, GC; Jung, BK; Gavriilidis, P; Matos, S; Loeser, LHW; Elesina, V; Clemente, A; D'Errico, R; Pessoa, LM; Kürner, T;

Publicação
IEEE VEHICULAR TECHNOLOGY MAGAZINE

Abstract
Reconfigurable Intelligent Surfaces (RISs) are expected to play a pivotal role in future indoor ultra high data rate wireless communications as well as highly accurate three-dimensional localization and sensing, mainly due to their capability to provide flexible, cost- and power-efficient coverage extension, even under blockage conditions. However, when considering beyond millimeter wave frequencies where there exists GHz-level available bandwidth, realistic models of indoor RIS-parameterized channels verified by field-trial measurements are unavailable. In this article, we first present and characterize three RIS prototypes with unit cells of half-wavelength intercell spacing, which were optimized to offer a specific nonspecular reflection with 1-, 2-, and 3-bit phase quantization at 304 GHz. The designed static RISs were considered in an indoor channel measurement campaign carried out with a 304 GHz channel sounder. Channel measurements for two setups, one focusing on the transmitter-RIS-receiver path gain and the other on the angular spread of multipath components, are presented and compared with both state-of-the-art theoretical models as well as full-wave simulation results. The article is concluded with a list of challenges and research directions for RIS design and modeling of RIS-parameterized channels at THz frequencies.

2025

Human Activity Recognition with a Reconfigurable Intelligent Surface for Wi-Fi 6E

Autores
Paulino, N; Oliveira, M; Ribeiro, F; Outeiro, L; Pessoa, LM;

Publicação
2025 JOINT EUROPEAN CONFERENCE ON NETWORKS AND COMMUNICATIONS & 6G SUMMIT, EUCNC/6G SUMMIT

Abstract
Human Activity Recognition (HAR) is the identification and classification of static and dynamic human activities, which find applicability in domains like healthcare, entertainment, security, and cyber-physical systems. Traditional HAR approaches rely on wearable sensors, vision-based systems, or ambient sensing, each with inherent limitations such as privacy concerns or restricted sensing conditions. Instead, Radio Frequency (RF)-based HAR relies on the interaction of RF signals with people to infer activities. Reconfigurable Intelligent Surfaces (RISs) are significant for this use-case by allowing dynamic control over the wireless environment, enhancing the information extracted from RF signals. We present an Hand Gesture Recognition (HGR) approach using our own 6.5GHz RIS design, which we use to gather a dataset for HGR classification for three different hand gestures. By employing two Convolutional Neural Networks (CNNs) models trained on data gathered under random and optimized RIS configuration sequences, we achieved classification accuracies exceeding 90%.

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