TL;DR
This study explores the potential of unsupervised GANs to accurately model RF communication signals, specifically OFDM signals, to aid in spectrum sharing and interference testing, addressing data scarcity and modeling challenges.
Contribution
The paper introduces two novel GAN architectures for RF signal modeling and evaluates their effectiveness on simulated OFDM data with varying complexity and channel conditions.
Findings
GANs can generate high-fidelity RF signals under certain conditions
Model performance degrades with increased data complexity and fading channels
First comprehensive study of GANs for OFDM RF signal synthesis
Abstract
High-quality recordings of radio frequency (RF) emissions from commercial communication hardware in realistic environments are often needed to develop and assess spectrum-sharing technologies and practices, e.g., for training and testing spectrum sensing algorithms and for interference testing. Unfortunately, the time-consuming, expensive nature of such data collections together with data-sharing restrictions pose significant challenges that limit data set availability. Furthermore, developing accurate models of real-world RF emissions from first principles is often very difficult because system parameters and implementation details are at best only partially known, and complex system dynamics are difficult to characterize. Hence, there is a need for flexible, data-driven methods that can leverage existing data sets to synthesize additional similar waveforms. One promising…
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