Channel decision in cognitive radio enabled sensor networks: A reinforcement learning approach

Recent advancements in the field of cognitive radio technology have paved way for cognitive radio-based wireless sensor networks. This has been tipped to be the next generation sensor. Spectrum sensing and energy efficient channel access are two important operations in this network. In this paper, w...

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Bibliographic Details
Main Authors: Abolarinwa, Joshua A., Abdul Latiff, Nurul Mu Azzah, Syed Yusof, Sharifah Kamilah, Fisal, Norsheila
Format: Article
Published: Engg Journals Publications 2015
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Online Access:http://eprints.utm.my/id/eprint/58020/
http://www.enggjournals.com/ijet/docs/IJET15-07-04-333.pdf
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Summary:Recent advancements in the field of cognitive radio technology have paved way for cognitive radio-based wireless sensor networks. This has been tipped to be the next generation sensor. Spectrum sensing and energy efficient channel access are two important operations in this network. In this paper, we propose the use of machine learning and decision making capability of reinforcement learning to address the problem of energy efficiency associated with channel access in cognitive radio aided sensor networks. A simple learning algorithm was developed to improve network parameters such as secondary user throughput, channel availability in relation to the sensing time. Comparing the results obtained from simulations with other channel access without intelligent learning such as random channel assignment and dynamic channel assignment, the learning algorithm produced better performance in terms of throughput, energy efficiency and other quality of service requirement of the network application.