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Spectrum Occupancy Prediction based on adaptive Recurrent Neural Networks

Kenta Umebayashi, Yoshiki Kasahara, Hiroki Iwata, Ahmed Al-Tahmeesschi, Johanna Vartiainen

202313 citationsDOI

Abstract

This paper investigates the prediction of spectrum usage by wireless local area networks based on recurrent neural networks (RNNs). The prediction results can be used to enhance the spectrum efficiency in dynamic spectrum sharing, and accuracy of spectrum sensing in cognitive radio networks. Observed time series of duty cycle (DC), which indicates the spectrum usage trend, is utilized to predict the future DC by the RNN. At first, we reveal a drawback of prediction by a single RNN, and this approach is denoted by a conventional approach in this paper. Specifically, the prediction results may have a significant biased error if the observed DCs are biased to either high or low values. For this problem, we propose the DC prediction with two RNNs and each of them designed for high DC case and low DC case, respectively. The prediction algorithm at first identifies the state of current DC either high or low. Then, the RNN for the identified state is performed for an accurate DC prediction. Numerical evaluations based on comprehensive measurement experiments of spectrum usage have presented that the proposed DC prediction can improve the accuracy of DC prediction compared to the conventional approach.

Topics & Concepts

Recurrent neural networkComputer scienceCognitive radioDuty cycleWirelessArtificial neural networkSeries (stratigraphy)Mean squared prediction errorSpectrum (functional analysis)Time seriesState (computer science)AlgorithmArtificial intelligenceMachine learningTelecommunicationsVoltageEngineeringPhysicsQuantum mechanicsPaleontologyElectrical engineeringBiologyCognitive Radio Networks and Spectrum SensingBlind Source Separation TechniquesAdvanced Adaptive Filtering Techniques