Studies on spectrum sensing algorithms and real-time implementation for cognitive radio
Studies on spectrum sensing algorithms and real-time implementation for cognitive radio
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Date
2018-12-01
Authors
Sunil, D.K
Journal Title
Journal ISSN
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Publisher
University of Hyderabad
Abstract
In the recent past Cognitive Radio (CR) technology has received increased at-
tention to solve the spectrum scarcity problem using the opportunistic spectrum
re-usage technique. It allows secondary users to use the unlicensed channels oppor-
tunistically without causing interference to the licensed users. It involves mainly
two functionalities namely spectrum sensing and spectrum management. Spec-
trum sensing identifies vacant spectrum bands, i.e., spectrum holes for the op-
portunistic use of secondary users in the network. Robust spectrum sensing is
essential to avoid interference to existing ’licensed’ users and maximize the spec-
trum utilization. There exist mainly two class of sensing algorithms: data aided
and blind. The data aided algorithm requires the characteristics of the signal a pri-
ori for successful detection. However, in the real-time radio environment, it is not
always possible to know the signal characteristics a priori. Hence blind algorithms
are essential for reliable spectrum sensing in the real-time environment.
In the sensing domain, although energy detection is popularly being used due
to its low computational complexity, its performance suffers due to noise uncer-
tainty. Although it is a blind technique, but it requires information about the noise
variance. The estimation accuracy of received signal noise variance affects the de-
tection performance. This thesis proposes an improved energy detection technique
where the threshold is adjusted with respect to the noise variance. The noise vari-
ance is estimated using the Linear predictor method, i.e., the Burg method. This
thesis performs a detailed performance analysis of the energy detection algorithm
with noise variance estimation in the case of a single node and multi-node sensing
under white and colored noise characteristics of the channel. Since the accuracy of
sensing depends on the accuracy of the noise variance estimator, a detailed study
of different types of noise estimator and its impact on sensing accuracy is also
carried out.