Wireless Channel Foundation Model with Embedded Noise-Plus-Interference Suppression Structure
Yuwei Wang, Li Sun, Tingting Yang
Published: 2025/9/19
Abstract
Wireless channel foundation model (WCFM) is a task-agnostic AI model that is pretrained on large-scale wireless channel datasets to learn a universal channel feature representation that can be used for a wide range of downstream tasks related to communications and sensing. While existing works on WCFM have demonstrated its great potentials in various tasks including beam prediction, channel prediction, localization, etc, the models are all trained using perfect (i.e., error-free and complete) channel information state (CSI) data which are generated with simulation tools. However, in practical systems where the WCFM is deployed, perfect CSI is not available. Instead, channel estimation needs to be first performed based on pilot signals over a subset of the resource elements (REs) to acquire a noisy version of the CSI (termed as degraded CSI), which significantly differs from the perfect CSI in some real-world environments with severe noise and interference. As a result, the feature representation generated by the WCFM is unable to reflect the characteristics of the true channel, yielding performance degradation in downstream tasks. To address this issue, in this paper we propose an enhanced wireless channel foundation model architecture with noise-plus-interference (NPI) suppression capability. In our approach, coarse estimates of the CSIs are first obtained. With these information, two projection matrices are computed to extract the NPI terms in the received signals, which are further processed by a NPI estimation and subtraction module. Finally, the resultant signal is passed through a CSI completion network to get a clean version of the CSI, which is used for feature extraction. Simulation results demonstrated that compared to the state-of-the-art solutions, WCFM with NPI suppression structure achieves improved performance on channel prediction task.