Physics-driven AI for Channel Estimation in Cellular Network
Xiaoqian Qi, Haoye Chai, and Yong Li

TL;DR
This paper introduces a physics-informed diffusion model for accurate, interpretable prediction of wireless channel quality metrics like RSRP and SINR, aiding network optimization and deployment.
Contribution
It presents a novel physics-informed diffusion framework with a teacher-student architecture that improves accuracy, interpretability, and adaptability in wireless channel estimation.
Findings
Enhanced prediction accuracy over traditional methods
Improved interpretability through physics integration
Faster convergence and few-shot learning capabilities
Abstract
In cellular mobile networks, wireless channel quality (CQ) is a crucial factor in determining communication performance and user's network experience. Accurately predicting CQ based on real environmental characteristics, specific base station configurations and user trajectories can help network operators optimize base station deployment, improving coverage and capacity. The Received Signal Reference Power (RSRP) and Signal-to-Interference-plus-Noise Ratio (SINR) of user equipment (UE) are key indicators of CQ in wireless communication. However, existing researches have limitations in terms of generation accuracy. Regression methods such as statistical inference and random forests fail to effectively capture the unique characteristics of wireless environments; theoretical derivations relying on specific communication protocols lack generalization capability; data-driven machine learning…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Communication Techniques
