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Computer Aided BER Performance Analysis of FBMC Cognitive Radio for Physical Layer Under the Effect of Binary Symmetric Radio Fading Channel

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Abstract

The wireless communication has undergone a revolution due to advancements in technology. For each new user or application to be a part of communication network the preliminary requirement is the allocation of frequency spectrum band. This frequency band is a limited resource and it is impossible to expand its boundaries. So the need is to employ intelligent, adaptive and reconfigurable communication systems which can investigate the requiremenmts of the end user and assign the requisite resources in contrast to the traditional communication systems which allocate a fixed amount of resource to the user under adaptive, autonomic and opportunistic cognitive radio environment. Cognitive radio technology has emerged from software defined radios wherein the key parameters of interest are frequency, power and modulation technique adopted. The role of cognitive radio is to alter these parameters under ubiquitous situations. The spectrum sensing is an important task to determine the availability of the vacant channels to be utilised by the secondary users without posing any harmful interference to the primary users. In multi carrier communication using digital signal processing techniques, filter bank multi carrier has an edge over other technologies in terms of bandwidth and spectral efficiency. The present paper deals with the multi rate FIR decimation and interpolation filter approach for physical layer of cognitive radio under binary symmetric fading channel environment.

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Acknowledgments

The first author is thankful to the Joint Research Action Group (JRAG) on intelligent information and signal processing in communication, Deptt of Electronics Technology, Guru Nanak Dev University Amritsar for valuable suggestions and discussion on Multirate–CR system. The help rendered by Dr. Jasvir Singh, Professor Communication Signal Processing Lab, GNDU Asr and Er. Hardeep Singh, Research Scholar is also acknowledged The first author is also thankful to Dr. Harjitpal Singh, Research Scholar at Dr BR Ambedkar National Institute of Technology, Jalandhar in the area of Multirate signal Processing Applications in Communication. Finally,the author wishes to acknowledge the constant inspiration and help rendered by Dr. Davinder Pal Sharma, University of the West Indies St. Augustine, Trinidad & Tobago for providing useful suggestions and comments in the field of DSP applications in Communication. Last but not the least, the motivation received from Prof. Dr. B. P. Patil, from Army Institute of Technology, AIT, Pune to carry out this research work with great zeal of enthusiasm and interest is worth to be mentioned.

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Correspondence to Ankur Singh Kang.

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Kang, A.S., Vig, R. Computer Aided BER Performance Analysis of FBMC Cognitive Radio for Physical Layer Under the Effect of Binary Symmetric Radio Fading Channel. Wireless Pers Commun 82, 1263–1278 (2015). https://doi.org/10.1007/s11277-015-2281-x

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