Skip to main content Skip to main navigation

Publikation

Adaptive Prediction Approach for 3D Geometry-based communication

Mervat Zarour; Qiuheng Zhou; Sergiy Melnyk; Hans Dieter Schotten
In: 2024 IEEE 100th Vehicular Technology Conference (VTC2024-Fall). IEEE Vehicular Technology Conference (VTC-2024), IEEE 100th Vehicular Technology Conference, October 7-10, Washington DC, USA, USA, IEEE Xplore, 2024.

Zusammenfassung

This paper presents an innovative approach for Channel State Information (CSI) prediction using Long-Short Term Memory (LSTM) networks in the frequency domain, addressing selective fading in mobile scenarios. Unlike models that assume perfect CSI, our method relies on realistic, estimated CSI and introduces strategies to mitigate estimation errors. We propose an adaptive prediction technique leveraging LSTM for precise 3D Downlink (DL) transmission control, alternating between previously predicted and high-accuracy estimates. Our system supports both open-loop and closed-loop predictions, enhancing resource allocation and signal reliability in Non-terrestrial Networks (NTNs). Experimental results demonstrate significant improvements in prediction accuracy, meeting the demands of complex Geometry-based Stochastic Channel Modelling (GSCM) over simpler 2D stochastic channel models with predefined temporal correlation, in compliance with the 3GPP 38.901 standard.

Projekte