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Cooperative Channel Selection With Q-Reinforcement Learning and Power Distribution in Cognitive Radio Networks

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  • Sopan A. Talekar

    (PDA College of Engineering, India)

  • Sujatha P. Terdal

    (PDA College of Engineering, India)

Abstract

With the increasing number of wireless communication devices, there may be a shortage of non-licensed spectrum, and at the same time, licensed spectrum may be underutilized by the primary users. The utilization of licensed spectrum can be improved using cognitive radio techniques. The proposed work allows secondary users to use the correct slot period of the channel as per their need. Particle swarm optimization technique is used to optimize the resource allocation. The aim of the proposed work is to determine the optimal throughput and power of available channels between the communicating nodes and improve the routing performance by selecting the best channel. Mathematical equation is derived that represents the channel selection relationship from the Q-value, congestion throughput, and benefit value. Network simulator-2 is used to simulate the proposed work and compared with the existing work. From the simulation results, it is observed that routing performance is improved in terms of throughput, packet delivery ratio, delay, packet dropped, and normalized routing overhead.

Suggested Citation

  • Sopan A. Talekar & Sujatha P. Terdal, 2021. "Cooperative Channel Selection With Q-Reinforcement Learning and Power Distribution in Cognitive Radio Networks," International Journal of Ambient Computing and Intelligence (IJACI), IGI Global, vol. 12(4), pages 22-42, October.
  • Handle: RePEc:igg:jaci00:v:12:y:2021:i:4:p:22-42
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