Spectrum Occupancy Prediction Exploiting Time and Frequency Correlations Through 2D-LSTM

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Ieee

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info:eu-repo/semantics/closedAccess

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The identification of spectrum opportunities is a pivotal requirement for efficient spectrum utilization in cognitive radio systems. Spectrum prediction offers a convenient means for revealing such opportunities based on the previously obtained occupancies. As spectrum occupancy states are correlated over time, spectrum prediction is often cast as a predictable time-series process using classical or deep learning-based models. However, this variety of methods exploits time-domain correlation and overlooks the existing correlation over frequency. In this paper, differently from previous works, we investigate a more realistic scenario by exploiting correlation over time and frequency through a 2D-long short-term memory (LSTM) model. Extensive experimental results show a performance improvement over conventional spectrum prediction methods in terms of accuracy and computational complexity. These observations are validated over the real-world spectrum measurements, assuming a frequency range between 832-862 MHz where most of the telecom operators in Turkey have private uplink bands.

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92nd IEEE Vehicular Technology Conference (IEEE VTC-Fall) -- OCT 04-07, 2020 -- ELECTR NETWORK

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Deep learning, frequency correlation, real-world spectrum measurement, spectrum occupancy prediction

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2020 Ieee 91st Vehicular Technology Conference, Vtc2020-Spring

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