Let's Connect
Follow Us
Watch Us
(+385) 1 2380 262
journal.prometfpz.unizg.hr
Promet - Traffic&Transportation journal

Accelerating Discoveries in Traffic Science

Accelerating Discoveries in Traffic Science

PUBLISHED
26.03.2019
LICENSE
Copyright (c) 2024 Cheng Wang, Yiming Wang, Cheng Wu

Bayesian Sequential Learning for Railway Cognitive Radio

Authors:Cheng Wang, Yiming Wang, Cheng Wu

Abstract

Applying cognitive radio in the railway communication systems is a cutting-edge research area. The rapid motion of the train makes the spectrum access of the railway wireless environment instable. To address the issue, first we formulate the spectrum management of railway cognitive radio as a distributed sequential decision problem. Then, based on the available environmental information, we propose a multi-cognitive-base-station cascade collaboration algorithm by using naive Bayesian learning and agent theory. Finally, our experiment results reveal that the model can improve the performance of spectrum access. This cognitive-base-station multi-agent system scheme comprehensively solves the problem of low efficiency in the dynamic access of the railway cognitive radio. The article is also a typical case of artificial intelligence applied in the field of the smart city.

Keywords:railway, cognitive radio, MAC protocol, naive Bayesian method, spectrum management

References

  1. Akan, O.B., Karli, O., Ergul, O.: Cognitive radio sensor networks.Network IEEE 23(4), 34–40 (2009)

    Akyildiz, I.F., Lee, W.Y., Chowdhury, K.R.: CRAHNs: Cognitiveradio ad hoc networks. Elsevier Science Publishers B. V. (2009)

    Akyildiz, I.F., Lee, W.Y., Vuran, M.C., Mohanty, S.: Next generation dynamic spectrum access cognitive radio wireless networks:A survey. Computer Networks 50(13), 2127–2159 (2006)

    Akyildiz, I.F., Lee, W.Y., Vuran, M.C., Mohanty, S.: A survey onspectrum management in cognitive radio networks. In: IEEE Network Operations Management Symposium, p. xxix (2008)

    Amanna, A., Gadnhiok, M., Price, M.J., Reed, J.H.: Railway cognitive radio. IEEE Vehicular Technology Magazine 5(3), 82–89(2010)

    6. Berbineau, M., Masson, E., Cocheril, Y., Kalakech, A., Ghys,J.p., Dayoub, I., Kharbech, S., Zwingelstein-colin, M., Simon, E.,Bonnin, J.m., Singh, K.D., Lee, J.h., Nussbaum, D., Knopp, R.,Philippe, H., Ghannoum, H., Sanz, D., Massy, P.: Cognitive Radio for High Speed Railway through Dynamic and Opportunisticspectrum Reuse. Transport Research Arena (2014)

    Cormio, C., Chowdhury, K.R.: A survey on mac protocols for cognitive radio networks. Ad Hoc Networks 7(7), 1315–1329 (2009)

    Domenico, A.D., Strinati, E.C., Benedetto, M.G.D.: A survey onmac strategies for cognitive radio networks. IEEE Communications Surveys and Tutorials 14(1), 21–44 (2012)

    Fokum, D.T., Frost, V.S.: A survey on methods for broadband internet access on trains. IEEE Communications Surveys and Tutorials 12(2), 171–185 (2010)

    Gardner, W.A.: Signal interception: a unifying theoretical framework for feature detection. IEEE Transactions on Wireless Communications 36(8), 897–906 (1987)

    Haykin, S.: Cognitive radio: brain-empowered wireless communications. IEEE Press (2006)

    Mitola Joseph, I., Maguire Gerald Q., J.: Cognitive radio: makingsoftware radios more personal. IEEE Pers Commun 6(4), 13–18(1999)

    Peh, E., Liang, Y.C.: Optimization for cooperative sensing in cognitive radio networks pp. 27–32 (2007)

    Saleem, Y., Rehmani, M.H.: Primary radio user activity modelsfor cognitive radio networks: A survey. Journal of Network andComputer Applications 43(1), 1–16 (2014)

    Sun, D., Song, T., Gu, B., Li, X., Hu, J., Liu, M.: Spectrum sensingand the utilization of spectrum opportunity tradeoff in cognitiveradio network. IEEE Communications Letters PP(99), 2442–2445(2016). DOI 10.1109/LCOMM.2016.2605674

    Wang, J., Ghosh, M., Challapali, K.S.: Emerging cognitive radio applications: A survey. IEEE Communications Magazine 49(3), 74–81 (2011). URL http://dblp.unitrier.de/db/journals/cm/cm49.html#WangGC11

    Yang, J., Zhao, H.: Enhanced Throughput of Cognitive Radio Networks by Imperfect Spectrum Prediction. IEEECommunications Letters 19(10), 1738–1741 (2015). DOI10.1109/LCOMM.2015.2442571

    Yin, H., Han, B., Li, D., Lu, F.: Modeling and application of urban rail transit network for path finding problem 124, 689–695 (2011)

    Yucek, T., Arslan, H.: A survey of spectrum sensing algorithmsfor cognitive radio applications. IEEE Communications Surveysand Tutorials 11(1), 116–130 (2009)

Show more


Accelerating Discoveries in Traffic Science |
2024 © Promet - Traffic&Transportation journal