Abstract
Cognitive radio is a paradigm that proposes maximizing the utilization of the usable radio-electric spectrum, allowing licensed users (PUs) and non-licensed users (SUs) to simultaneously coexist through the dynamic management and assignment of spectrum resources, by integrating the stages of spectrum sensing, decision, sharing and mobility. Spectrum decision is one of the most important stages, but its optimal operation depends on the characterization sub-stage, which is in charge of efficiently estimating time gaps in which a PU won’t make use of the assigned spectrum, so that it can be used in an opportunistic fashion by SUs. The design and implementation of an algorithm based on the Long Short-Term Memory (LSTM) recurrent neural network is proposed in order to increase the success percentage in the forecasting (presence/absence) of PUs in spectrum channels. The accuracy level exhibited in the results indicates LSTM increases the prediction percentage as compared to the Multilayer Perceptron Neural Network (MLPNN) and the Adaptative Neuro-Fuzzy Inference System (ANFIS) learning models, which means it could be implemented in cognitive networks with centralized physical topologies.
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Adeel A, Larijani H, Ahmadinia. A (2014) Performance analysis of artificial neural network-based learning schemes for cognitive radio systems in LTE-UL. In: 28th International conference on advanced information networking and applications workshops (WAINA), May 13–16, Victoria, Canada, May 13–16
Akyildiz I, Lee W-Y, Chowdhury K (2009) CRAHNS: cognitive radio ad hoc networks. Elsevier, Ad Hoc Networks , vol 7, pp. 810–836. https://doi.org/10.1109/mnet.2009.5191140
Akyildiz I, Lee W-Y Chowdhury, K (2014) Spectrum management in cognitive radio Ad Hoc networks. IEEE Network 2009, vol 23, pp. 6–12. Available online: http://ieeexplore.ieee.org (Accessed on 15 Oct 2014)
Artiemjew P, Jiao N (2015) Data mining and machine learning. In: Yao Y, Hu Q, Yu H, Grzymala-Busse J (eds) Rough sets fussy sets in data mining and granular computing. Springer, Tianjin, pp 267–280
Banaei A, Georghiades C (2009) Throughput analysis of a randomized sensing scheme in cell-based Ad-hoc cognitive networks. In: IEEE international conference on communications, Dresden, Germany, June 14–18
Bkassiny M, Li Y, Jayaweera S (2011) A survey on machine-learning techniques in cognitive radio department of electrical and computer engineering. University of New Mexico, Mexico
Canberk B, Akyildiz I, Oktug S (2011) Primary user activity modeling using first-difference filter clustering and correlation in cognitive radio networks. IEEE/ACM Trans Netw 19:170–183. https://doi.org/10.1109/TNET.2010.2065031
Federal Communications Commission (2003) Notice of proposed rulemaking and order, Mexico D.F: Report ET Docket No: 03–332
Fortuna C, Mohorcic M (2009) Trends in the development of communication networks: cognitive networks. J Comput Netw 53:1354–1376
Gers F, Schmidhuber E (2001) LSTM recurrent networks learn simple context-free and context-sensitive languages. IEEE Trans Neural Netw 12:1333–1340. https://doi.org/10.1109/72.963769
Ghosh C, Pagadarai S, Agrawal D, Wyglinski A (2010) A framework for statistical wireless spectrum occupancy modelling. IEEE Trans Wireless Commun 1:38–44. https://doi.org/10.1109/TWC.2010.01.081701
Graves A (2012) Supervised sequence labelling with recurrent neural networks. Springer, Heidelberg, pp. 37–93. ISBN 978-3-642-24796-5
Graves A, Mohamed A, Hinton G (2013) Speech recognition with deep recurrent neural network. In: IEEE international conference on acoustics speech and signal processing, Vancouver, Canada, May 23–26
Graves A, Schmidhuber J (2005) Framewise phoneme classification with bidirectional LSTM and other neural network architectures. In: IEEE international joint conference on neural network, Montreal, Canada, June 31–August 4
Gutiérrez L, Zazo S, Murillo J, Álvarez I, Garcia A, Pérez B (2013) HF spectrum activity prediction model based on HMM for cognitive radio applications. Elsevier, Phys Commun, vol 9, pp. 199–211. https://doi.org/10.1016/j.phycom.2012.09.004
He A, Bae K, Newman T, Gaeddert J, Kim K, Menon R, Tirado L, Neel J, Zhao Y, Reed J, Tranter W (2010) A survey of artificial intelligence for cognitive radios. IEEE Trans Veh Technol 59:1578–1592. https://doi.org/10.1109/tvt.2010.2043968
Hernández C, Salgado L, López H, Rodríguez-Colina E (2015) Multivariable algorithm for dynamic channel selection in cognitive radio networks. EURASIP J Wireless Commun Netw, vol 2015, Issue 1, pp. 1–17. Available online: http://jwcn.eurasipjournals.springeropen.com/articles/10.1186/s13638-015-0445-8 https://doi.org/10.1186/s13638-015-0445-8
Hochreiter S, Schmidhuber J (1997) Long Short-Term Memory. J Neural Comput 9:1735–1780. https://doi.org/10.1162/neco.1997.9.8.1735
IEEE Standard 1900.1 (2008) IEEE standard definitions and concepts for dynamic spectrum access: terminology relating to emerging wireless network, system functionality and spectrum management
Kalkan S (2015) Special topics in Deep Learning. Middle East Technical University, Ankara, Turquia, Available online: http://www.kovan.ceng.metu.edu.tr/~sinan/DL/
Khabazian M, Aissa S, Tadayon N (2012) Performance modeling of a two-tier primary-secondary network operated with IEEE802.11 DCF mechanism. IEEE Trans Wireless Commun, pp. 3047–3057
Khalid L, Anpalagan A (2014) Emerging cognitive radio technology: principles, challenges and opportunities. Elsevier, Computers and Electrical Engineering 2010, vol 38, pp. 358–366. Available online: http://www.sciencedirect.com/science/article/pii/S0045790609000524. https://doi.org/10.1016/j.compeleceng.2009.03.004. (Accessed on 20 Oct 2014)
Kwok T-Y, Yeung D-Y (1997) Constructive algorithms for structure learning in feedforward neural networks for regresission problems. In: IEEE transactions on neural networks, vol 8, pp. 630–645. Available online: http://ieeexplore.ieee.org/Xplore/home.jsp. https://doi.org/10.1109/72.572102. (Accessed on 21 June 2013)
Lee W-Y, Akyildiz I (2011) A spectrum decision framework for cognitive radio networks. IEEE Trans Mobile Comput 10:161–174. https://doi.org/10.1109/TMC.2010.147
López D, Ordoñez J, Trujillo E (2016) User characterization through dynamic bayesian networks in cognitive radio wireless networks. Int J Eng Technol 8:1771–1783
López D, Hernández L, Rivas E (2017) SVM and ANFIS as channel selection models for the spectrum decision stage in cognitive radio networks. Contemp Eng Sci 10:475–502
López D, Trujillo E, Gualdron O (2015) Elementos fundamentales que componen la radio cognitiva y asignación de bandas espectrales. Información tecnológica. vol 26, pp. 23–40. Available online: http://www.scielo.cl/pdf/infotec/v26n1/art04.pdf. https://doi.org/10.4067/s0718-07642015000100004. (Accessed on 10 Mar 2015)
Masonta M, Mzyece M, Ntlatlapa N (2013) Spectrum decision in cognitive radio networks: a survey. IEEE Commun Soc Commun Surv Tutor, vol 15, pp. 1088–1107. Available online: http://ieeexplore.ieee.org. https://doi.org/10.1109/surv.2012.111412.00160. (Accessed on 15 Aug 2014)
Masters T (1993) Multilayer feedforward networks. In practical neural network recipes in C++. Academic Press, San Diego, pp 77–116
Palangi H, Deng L, Shen Y, Gao J, He X, Chen J, Song X, Ward R (2016) Deep sentence embedding using Long Short-Term Memory Networks: analysis and application to information retrieval. IEEE/ACM Trans Audio Speech Lang Process 24:694–707. https://doi.org/10.1109/TASLP.2016.2520371
Palangi H, Ward R, Deng L (2015) Distributed compressive sensing: a deep learning approach, Cornell University Library, arXiv. Available online: https://arxiv.org/abs/1508.04924 (Accessed on 17 Sept 2015)
Pattanayak S, Venkateswaran P, Nandi R (2013) Artificial intelligence based model for channel status prediction?: A new spectrum sensing technique for cognitive radio. Int J Commun Netw Syst Sci (IJCNS), Kolkata, April 4–7
Pedraza L, Hernández C, Galeano K, Rodriguez-Colina E (2016) Ocupación espectral y modelo de radio cognitiva para Bogotá. Universidad Distrital Francisco José de Caldas Publisher: UD Editorial
Popescu OA, Yao Y, Fiedler M, Popescu PA (2014) A management architecture for multimedia communication in cognitive radio networks. In: Fei Hu, Kumar Sunil (eds) Multimedia over cognitive radio networks. CRC Press, London, pp 3–25
Sahai A, Hoven N, Tandra R (2015) Some fundamental limits on cognitive radio. Department electrical engineering and computer science. University of California. Available online: http://www.eecs.berkeley.edu/~sahai/Papers/cognitive_radio_preliminary.pdf (Accessed on 17 Jan 2015)
Saleem Y, Rehmani M (2014) Primary radio user activity models for cognitive radio networks: a survey. J Netw Comput Appl, vol 43, pp. 1–16. Available online: http://www.sciencedirect.com/science/article/pii/S1084804514000848 https://doi.org/10.1016/j.jnca.2014.04.001
Salgado L (2014) Algoritmo multivariable para la selección dinámica del canal de backup en redes de radio cognitiva basado en el método Fuzzy Analitical Hierarchical Process. Faculty of Engineering University Distrital Francisco Jose de Caldas, Bogotá
Shared Spectrum Company (2015) Spectrum reports: spectrum occupancy measurement. General survey of radio frequency bands (30 MHz to 3 GHz): Vienna, Virginia. Available online: http://www.sharedspectrum.com/papers/spectrum-reports/ (Accessed on 7 June 2015)
Sun B, Feng H, Chen K, Zhu X (2016) A deep learning framework of quantized compressed sensing for wireless neural recording. J IEEE Access 4:5169–5178
Sundermeyer M, Ney H, Schlüter R (2016) From feedforward to recurrent LSTM neural networks for language modeling. IEEE/ACM Trans Audio Speech Lang Process 23:517–529. https://doi.org/10.1109/TASLP.2015.2400218
Tumuluru V, Wang P, Niyato D (2010) A neural network based spectrum prediction scheme for cognitive radio. IEEE International Conference on Communications (ICC), Cape Town, May pp. 23–27
Uyanik G, Canberk B, Oktug S (2012) Predictive spectrum decision mechanisms in Cognitive Radio Networks. In: IEEE Globecom Workshop, Anaheim, December 3–7
Veeriah V Zhuang N, Qi G-J (2015) Differential recurrent neural networks for action recognition. In: IEEE international conference on computer vision (ICCV), Santiago, Chile, December 7–13
Wang J, Ghosh M, Challapali K (2011) Emerging cognitive radio applications: a survey. IEEE Commun Mag 49:74–81. https://doi.org/10.1109/mcom.2011.5723803
Winston O, Thomas A, OkelloOdongo W (2014) Optimizing neural network for TV Idle channel prediction in cognitive radio using particle swarm optimization. In: Fifth international conference on computational intelligence, communication systems and networks (CICSyN), Madrid, Spain, June 5–7
Yarkan S, Arslan H (2013) Binary time series approach to spectrum prediction for cognitive radio. In: IEEE vehicular technology conference, Baltimore, September/October, 30–3
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López, D., Rivas, E. & Gualdron, O. Primary user characterization for cognitive radio wireless networks using a neural system based on Deep Learning. Artif Intell Rev 52, 169–195 (2019). https://doi.org/10.1007/s10462-017-9600-4
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DOI: https://doi.org/10.1007/s10462-017-9600-4