Blockage Prediction for Mobile UE in RIS-assisted Wireless Networks: A Deep Learning Approach
Shakil Ahmed, Ibrahim Abdelmawla, Ahmed E. Kamal, and Mohamed Y. Selim

TL;DR
This paper introduces a deep learning-based system using RGB camera data and RIS panels to accurately predict blockages in wireless networks, significantly improving reliability in dynamic environments.
Contribution
It proposes a novel RIS-assisted blockage prediction method combining RGB camera data and deep neural networks, enhancing prediction accuracy over baseline schemes.
Findings
Achieved over 38% improvement in blockage prediction accuracy.
Utilized a residual neural network for optimal prediction.
Demonstrated effectiveness in complex, multi-path, and Doppler-affected scenarios.
Abstract
Due to significant blockage conditions in wireless networks, transmitted signals may considerably degrade before reaching the receiver. The reliability of the transmitted signals, therefore, may be critically problematic due to blockages between the communicating nodes. Thanks to the ability of Reconfigurable Intelligent Surfaces (RISs) to reflect the incident signals with different reflection angles, this may counter the blockage effect by optimally reflecting the transmit signals to receiving nodes, hence, improving the wireless network's performance. With this motivation, this paper formulates a RIS-aided wireless communication problem from a base station (BS) to a mobile user equipment (UE). The BS is equipped with an RGB camera. We use the RGB camera at the BS and the RIS panel to improve the system's performance while considering signal propagating through multiple paths and the…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Indoor and Outdoor Localization Technologies · Underwater Vehicles and Communication Systems
MethodsBalanced Selection
