Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms

Cognitive radio (CR) enables unlicensed users to exploit the underutilized spectrum in licensed spectrum whilst minimizing interference to licensed users. Reinforcement learning (RL), which is an artificial intelligence approach, has been applied to enable each unlicensed user to observe and carry o...

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Main Authors: Kok-Lim Alvin Yau, Geong-Sen Poh, Su Fong Chien, Hasan A. A. Al-Rawi
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:The Scientific World Journal
Online Access:http://dx.doi.org/10.1155/2014/209810
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spelling doaj-214e04e384494ee9a322bfb73f3348f02020-11-24T21:45:15ZengHindawi LimitedThe Scientific World Journal2356-61401537-744X2014-01-01201410.1155/2014/209810209810Application of Reinforcement Learning in Cognitive Radio Networks: Models and AlgorithmsKok-Lim Alvin Yau0Geong-Sen Poh1Su Fong Chien2Hasan A. A. Al-Rawi3Faculty of Science and Technology, Sunway University, No. 5 Jalan Universiti, Bandar Sunway, 46150 Petaling Jaya, Selangor, MalaysiaUniversity Malaysia of Computer Science & Engineering, Jalan Alamanda 2, Presint 16, 62150 Putrajaya, Wilayah Persekutuan Putrajaya, MalaysiaDepartment of Mathematical Modeling Laboratory, Mimos Berhad, Technology Park Malaysia, 57000 Kuala Lumpur, MalaysiaFaculty of Science and Technology, Sunway University, No. 5 Jalan Universiti, Bandar Sunway, 46150 Petaling Jaya, Selangor, MalaysiaCognitive radio (CR) enables unlicensed users to exploit the underutilized spectrum in licensed spectrum whilst minimizing interference to licensed users. Reinforcement learning (RL), which is an artificial intelligence approach, has been applied to enable each unlicensed user to observe and carry out optimal actions for performance enhancement in a wide range of schemes in CR, such as dynamic channel selection and channel sensing. This paper presents new discussions of RL in the context of CR networks. It provides an extensive review on how most schemes have been approached using the traditional and enhanced RL algorithms through state, action, and reward representations. Examples of the enhancements on RL, which do not appear in the traditional RL approach, are rules and cooperative learning. This paper also reviews performance enhancements brought about by the RL algorithms and open issues. This paper aims to establish a foundation in order to spark new research interests in this area. Our discussion has been presented in a tutorial manner so that it is comprehensive to readers outside the specialty of RL and CR.http://dx.doi.org/10.1155/2014/209810
collection DOAJ
language English
format Article
sources DOAJ
author Kok-Lim Alvin Yau
Geong-Sen Poh
Su Fong Chien
Hasan A. A. Al-Rawi
spellingShingle Kok-Lim Alvin Yau
Geong-Sen Poh
Su Fong Chien
Hasan A. A. Al-Rawi
Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
The Scientific World Journal
author_facet Kok-Lim Alvin Yau
Geong-Sen Poh
Su Fong Chien
Hasan A. A. Al-Rawi
author_sort Kok-Lim Alvin Yau
title Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
title_short Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
title_full Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
title_fullStr Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
title_full_unstemmed Application of Reinforcement Learning in Cognitive Radio Networks: Models and Algorithms
title_sort application of reinforcement learning in cognitive radio networks: models and algorithms
publisher Hindawi Limited
series The Scientific World Journal
issn 2356-6140
1537-744X
publishDate 2014-01-01
description Cognitive radio (CR) enables unlicensed users to exploit the underutilized spectrum in licensed spectrum whilst minimizing interference to licensed users. Reinforcement learning (RL), which is an artificial intelligence approach, has been applied to enable each unlicensed user to observe and carry out optimal actions for performance enhancement in a wide range of schemes in CR, such as dynamic channel selection and channel sensing. This paper presents new discussions of RL in the context of CR networks. It provides an extensive review on how most schemes have been approached using the traditional and enhanced RL algorithms through state, action, and reward representations. Examples of the enhancements on RL, which do not appear in the traditional RL approach, are rules and cooperative learning. This paper also reviews performance enhancements brought about by the RL algorithms and open issues. This paper aims to establish a foundation in order to spark new research interests in this area. Our discussion has been presented in a tutorial manner so that it is comprehensive to readers outside the specialty of RL and CR.
url http://dx.doi.org/10.1155/2014/209810
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