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Primary user characterization for cognitive radio wireless networks using long short-term memory

Acceso Abierto
ID Minciencias: ART-0000100261-13
Ranking: ART-ART_A2

Abstract:

Cognitive radio is a paradigm that proposes managing the radio electric spectrum dynamically by integrating the spectrum sensing, decision-making, sharing, and mobility stages. In the decision-making stage, the best available channel is selected for transmitting secondary user data in an opportunistic fashion, and the success of that stage depends on the efficiency of the primary user characterization model. Use of the long short-term memory technique based on the deep learning concept is proposed in order to reduce the forecasting error present in the future estimation of primary users in the GSM and WiFi frequency bands. The results show that long short-term memory has the capacity needed to improve channel use forecasting significantly more than other methods such as multilayer perceptron neural networks, Bayesian networks, and adaptive neuro-fuzzy inference systems (ANFIS-Grid). It is concluded that although long short-term memory exhibits better performance generating forecasts for time series, computing complexity is higher due to the existence of input, forget, and output gates within the neural structure; therefore, implementation is feasible in cognitive radio networks based on centralized network topologies.

Tópico:

Cognitive Radio Networks and Spectrum Sensing

Citaciones:

Citations: 10
10

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Información de la Fuente:

SCImago Journal & Country Rank
FuenteInternational Journal of Distributed Sensor Networks
Cuartil año de publicaciónNo disponible
Volumen14
Issue11
Páginas155014771881182 - 155014771881182
pISSN1550-1329
ISSNNo disponible

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