Open Access Open Access  Restricted Access Subscription or Fee Access

Analysis and Comparison of Optimization Techniques for Interference Duration in Cognitive Radio

Amit kumar Vijay, Indu Saini, Ashish Raman

Abstract


Cognitive radio provides opportunity to unlicensed users to use the licensed spectrum when it is not being used. Cognitive radio has several common radio performance parameters, out of which here we analyze the interference duration. Here we used genetic algorithm, particle swarm algorithm, bat algorithm based optimization techniques for the optimization of interference duration in cognitive radio. Interference duration converges to 3.08, 1.7 and 0.1534 μs corresponding to genetic algorithm, particle swarm algorithm and bat algorithm and corresponding sensing efficiencies are 32.52821, 32.7471 and 32.97671%. The comparative study reveals that the optimization result of interference duration obtained from bat algorithm is more optimum as compared to genetic algorithm and particle swarm optimization which results into higher sensing efficiency.

Cite this Article
Amit Kumar Vijay, Indu Saini, Ashish Raman. Analysis and Comparison of Optimization Techniques for Interference Duration in Cognitive Radio. Journal of Mobile Computing, Communications & Mobile Networks. 2016; 3(3): 1–8p.


Keywords


Cognitive radio, generation, optimization

Full Text:

PDF

References


Zhao Q, Sadler BM. A Survey of Dynamic Spectrum Access: Signal Processing, Networking, and Regulatory Policy. IEEE Signal Process Mag. May 2007; 79–89p. 2. Fan Rongfei, Hai Jiang. Optimal Multi-Channel Cooperative Sensing in Cognitive Radio Networks. IEEE Trans Wireless Commun. 2010; 1128–1138p.

Tawk Y, Costantine J, Christodoulou CG. Cognitive-Radio and Antenna Functionalities: A Tutorial [Wireless Corner]. IEEE Antennas Propag Mag. Feb 2014; 231–43p.

Haykin S. Cognitive Radio: Brain-Empowered Wireless Communications. IEEE J Sel Areas Commun. 2005; 23(2): 201–220p.

Wang B, Liu KJR. Advances in Cognitive Radios: A Survey. IEEE J Sel Topics Signal Processing. 2011; 5: 5–23p. 6. Newman TR, Rajbanshi R, Wyglinski AM, et al. Population Adaptation for Genetic Algorithm-Based Cognitive Radios. Mobile Netw Appl. 2008; 13(5): 442–451p. 7. Afridi MI. Selection and Ranking of Optimal Routes through Genetic Algorithm in a Cognitive Routing System for Mobile Ad Hoc Network. In Computational Intelligence and Design (ISCID), Fifth International Symposium IEEE. Oct 2012; 1: 507–510p. 8. Sadasivam SG, Selvaraj D. A Novel Parallel Hybrid PSO-GA using MapReduce to Schedule Jobs in Hadoop Data Grids. In Nature and Biologically Inspired Computing (NaBIC), 2010 Second World Congress. Dec 2010; 377–382p.

Muhammad Imran. An Overview of PSO Variants. PROENG Journals. 2012; 53: 491–496p.

Kennedy J, Eberhart R. Particle Swarm Optimization. IEEE Int Conference on Neural Networks. 1995; 4: 1942–1948p. 11. Rashid Rozeha A, Hamid A, Fisal N, et al. Optimal User Selection for Decision Making in Cooperative Sensing. In Wireless Technology and Applications (ISWTA), IEEE Symposium on. 2012; 165–170p.

Immanuel Selvakumar A, Thanushkodi K. A New Particle Swarm Optimization Solution to No Convex Economic Dispatch

Problems. In IEEE Trans Power Syst. 2007; 22: 43p. 13. Yang, Xin-She, Amir Hossein Gandomi. Bat Algorithm: A Novel Approach for Global Engineering Optimization. Eng Computations. 2012; 29(5): 464–483p. 14. Alihodzic Adis, Milan Tuba. Improved Hybridized Bat Algorithm for Global Numerical Optimization. In Computer Modelling and Simulation (UKSim), UKSim-AMSS 16th International Conference on. IEEE. 2014; 57–62p. 15. Sudheer Kumar Reddy P, Anil Kumar P, Vaibhav GNS. Application of BAT Algorithm for Optimal Power Dispatch. Int J Innov Res Adv Eng. 2015; 2(2): 113–119p.

Kim H, Shin KG. Efficient Discovery of Spectrum Opportunities with MAC-Layer Sensing in Cognitive Radio Networks. IEEE Trans Mobile Comput. May 2008; 7: 533–545p.

Vujitic B, Cackov N, Vujicic S, et al. Modeling and Characterization of Traffic in Public Safety Wireless Networks. Proc. International Symposium on Performance Evaluation of Computer and Telecommunication Systems (SPECTS), Edinburgh, UK. Jul 2005. 18. Zhang W, Mallik RK, Letaief KB. Cooperative Spectrum Sensing Optimization in Cognitive Radio Networks. IEEE International Conference. May 2008; 3411–3415p. 19. Song J, Feng Z, Fan D, et al. Optimal Parameters for Cooperative Spectrum Sensing in Cognitive Radio Systems. In Wireless Communications and Networking Conference (WCNC), IEEE. 2010; 1–5p. 20. Rassouli, Borzoo, Ali Olfat. Periodic Spectrum Sensing Parameters Optimization in Cognitive Radio Networks. IET Commun. 2012; 6(18): 3329–3338p.


Refbacks

  • There are currently no refbacks.


This site has been shifted to https://stmcomputers.stmjournals.com/