RIS enables the construction of ubiquitous near-field wireless propagation environments for future 6G networks, presenting new challenges and opportunities.
Investigating energy-efficient hybrid beamforming design for integrated sensing, communications, and powering systems.
UMA effectively addresses challenges in physical localization of uncooperative cellular devices by manipulating uplink scheduling and boosting transmission power.
Graph Neural Networks offer a superior solution to power control in Cell-Free Massive MIMO systems, outperforming traditional methods.
Using a Graph Neural Network (GNN) approach can efficiently solve downlink max-min power control problems in Cell-Free Massive MIMO systems with superior performance and scalability.
Proposing a 6D movable antenna system to enhance wireless network capacity by adapting to user distribution.
Mobile base stations equipped with UAVs, IRSs, and RESs face energy challenges and benefits.
Both dual-functional radar-communication (DFRC) and massive MIMO are crucial for 6G wireless networks, with a focus on quantized constant-envelope (QCE) waveform design.
RISAR significantly enhances human activity recognition accuracy using Wi-Fi signals.
NeWRF is a novel deep learning framework that accurately predicts wireless channels using sparse measurements, revolutionizing wireless network optimization.