Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning

To mitigate the contradiction between scarcity spectrum resources and heavily wireless services, cognitive radio (CR) has been proposed to improve spectrum utilization through allowing CR users to access licensed channels opportunistically. In large-scale networks, spectrum status is not the same at...

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Main Authors: Xin-Lin Huang, Yu Gao, Xiao-Wei Tang, Shao-Bo Wang
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8334325/
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spelling doaj-79f38bd5a2a4459487e0e6ad7e415c7b2021-03-29T21:08:00ZengIEEEIEEE Access2169-35362018-01-016213502135810.1109/ACCESS.2018.28228318334325Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results LearningXin-Lin Huang0https://orcid.org/0000-0002-1098-2437Yu Gao1Xiao-Wei Tang2Shao-Bo Wang3Department of Information and Communication Engineering, Tongji University, Shanghai, ChinaDepartment of Information and Communication Engineering, Tongji University, Shanghai, ChinaDepartment of Information and Communication Engineering, Tongji University, Shanghai, ChinaHytera Communications Corporation Ltd, Shenzhen, ChinaTo mitigate the contradiction between scarcity spectrum resources and heavily wireless services, cognitive radio (CR) has been proposed to improve spectrum utilization through allowing CR users to access licensed channels opportunistically. In large-scale networks, spectrum status is not the same at different locations due to the heterogeneity of CR network (CRN). To cope with such heterogeneity, some noncooperative spectrum sensing and distributed cooperative sensing algorithms were proposed. Such spectrum decision results will be exploited in this paper, in order to draw the spectrum map of the entire largescale CRN. The proposed spectrum mapping scheme contains three processing steps, and a boundary CR users searching algorithm using kennel function based supportive vector machine is adopted to improve the performance of the proposed scheme. The simulation results show that radial basis function kennel performs the best in the proposed scheme, and when accuracy threshold &#x03B8;<sub>&#x03B1;</sub> = 0.95 and filtration threshold &#x03B8;<sub>f</sub> = 0.02, the proposed scheme can draw a spectrum map with the accuracy 99.3% using only about 28% CR users performing spectrum sensing. Furthermore, the number of CR users and energy detection threshold have little effects on the performance of the proposed scheme.https://ieeexplore.ieee.org/document/8334325/Large-scale cognitive radio networksspectrum maphistorical spectrum decision results learningleast squares support vector machinekennel function
collection DOAJ
language English
format Article
sources DOAJ
author Xin-Lin Huang
Yu Gao
Xiao-Wei Tang
Shao-Bo Wang
spellingShingle Xin-Lin Huang
Yu Gao
Xiao-Wei Tang
Shao-Bo Wang
Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
IEEE Access
Large-scale cognitive radio networks
spectrum map
historical spectrum decision results learning
least squares support vector machine
kennel function
author_facet Xin-Lin Huang
Yu Gao
Xiao-Wei Tang
Shao-Bo Wang
author_sort Xin-Lin Huang
title Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
title_short Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
title_full Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
title_fullStr Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
title_full_unstemmed Spectrum Mapping in Large-Scale Cognitive Radio Networks With Historical Spectrum Decision Results Learning
title_sort spectrum mapping in large-scale cognitive radio networks with historical spectrum decision results learning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description To mitigate the contradiction between scarcity spectrum resources and heavily wireless services, cognitive radio (CR) has been proposed to improve spectrum utilization through allowing CR users to access licensed channels opportunistically. In large-scale networks, spectrum status is not the same at different locations due to the heterogeneity of CR network (CRN). To cope with such heterogeneity, some noncooperative spectrum sensing and distributed cooperative sensing algorithms were proposed. Such spectrum decision results will be exploited in this paper, in order to draw the spectrum map of the entire largescale CRN. The proposed spectrum mapping scheme contains three processing steps, and a boundary CR users searching algorithm using kennel function based supportive vector machine is adopted to improve the performance of the proposed scheme. The simulation results show that radial basis function kennel performs the best in the proposed scheme, and when accuracy threshold &#x03B8;<sub>&#x03B1;</sub> = 0.95 and filtration threshold &#x03B8;<sub>f</sub> = 0.02, the proposed scheme can draw a spectrum map with the accuracy 99.3% using only about 28% CR users performing spectrum sensing. Furthermore, the number of CR users and energy detection threshold have little effects on the performance of the proposed scheme.
topic Large-scale cognitive radio networks
spectrum map
historical spectrum decision results learning
least squares support vector machine
kennel function
url https://ieeexplore.ieee.org/document/8334325/
work_keys_str_mv AT xinlinhuang spectrummappinginlargescalecognitiveradionetworkswithhistoricalspectrumdecisionresultslearning
AT yugao spectrummappinginlargescalecognitiveradionetworkswithhistoricalspectrumdecisionresultslearning
AT xiaoweitang spectrummappinginlargescalecognitiveradionetworkswithhistoricalspectrumdecisionresultslearning
AT shaobowang spectrummappinginlargescalecognitiveradionetworkswithhistoricalspectrumdecisionresultslearning
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