Context-Enhanced CSI Tracking Using Koopman-Inspired Dual Autoencoders in Dynamic Wireless Environments
Anis Hamadouche, Mathini Sellathurai

TL;DR
This paper presents a physics-informed autoencoder framework utilizing Koopman theory for accurate, real-time CSI tracking and prediction in dynamic wireless environments, integrating contextual factors for enhanced adaptability.
Contribution
It introduces a novel dual autoencoder architecture with Koopman operators to model and forecast CSI dynamics considering environmental context, improving interpretability and real-time performance.
Findings
Achieved high-fidelity CSI predictions across diverse conditions.
Enabled real-time updates to the Channel Knowledge Map (CKM).
Demonstrated effectiveness in complex, time-varying environments.
Abstract
This paper introduces a novel framework for tracking and predicting Channel State Information (CSI) by leveraging Physics-Informed Autoencoders (PIAE) integrated with a learned Koopman operator. The proposed approach models CSI as a nonlinear dynamical system governed by both intrinsic channel behavior and exogenous contextual factors such as position, temperature, and atmospheric conditions. The architecture comprises dual autoencoders-one dedicated to CSI and another to contextual inputs-linked via a shared latent state space, within which the Koopman operator captures the linear temporal evolution of CSI dynamics. This coupling enables accurate, data-driven forecasting of CSI trajectories while maintaining interpretability through a structured, physics-consistent representation. The framework supports real-time updates to the Channel Knowledge Map (CKM), enhancing the adaptability…
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