Deep Learning for Spectrum Prediction in Cognitive Radio Networks: State-of-the-Art, New Opportunities, and Challenges
Spectrum prediction is considered to be a promising technology that enhances spectrum efficiency by assisting dynamic spectrum access (DSA) in cognitive radio networks (CRN). Nonetheless, the highly nonlinear nature of spectrum data across time, frequency, and space domains, coupled with the intrica...
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Zusammenfassung: | Spectrum prediction is considered to be a promising technology that enhances
spectrum efficiency by assisting dynamic spectrum access (DSA) in cognitive
radio networks (CRN). Nonetheless, the highly nonlinear nature of spectrum data
across time, frequency, and space domains, coupled with the intricate spectrum
usage patterns, poses challenges for accurate spectrum prediction. Deep
learning (DL), recognized for its capacity to extract nonlinear features, has
been applied to solve these challenges. This paper first shows the advantages
of applying DL by comparing with traditional prediction methods. Then, the
current state-of-the-art DL-based spectrum prediction techniques are reviewed
and summarized in terms of intra-band and crossband prediction. Notably, this
paper uses a real-world spectrum dataset to prove the advancements of DL-based
methods. Then, this paper proposes a novel intra-band spatiotemporal spectrum
prediction framework named ViTransLSTM. This framework integrates visual
self-attention and long short-term memory to capture both local and global
long-term spatiotemporal dependencies of spectrum usage patterns. Similarly,
the effectiveness of the proposed framework is validated on the aforementioned
real-world dataset. Finally, the paper presents new related challenges and
potential opportunities for future research. |
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DOI: | 10.48550/arxiv.2412.09849 |