Abstract

Television White Spaces (TVWS)-based cognitive radio systems can improve spectrum efficiency by facilitating opportunistic usage of television broadcasting spectrum by secondary users without interfering with primary users. Previously applied models introduce missed detection errors, giving a limited estimation of the spectrum occupancy, which does not correspond to the reality of its usage, hence resulting in a partial waste of this resource. Considering jointly parameters like false alarm probability and detection probability, this article proposes a probabilistic model that can identify TVWS with improved accuracy. The proposed model considers energy detection criteria, combined with simultaneous sensing of the noise and of the signal from primary users. In order to demonstrate the model effectiveness, a low-cost Mobile Spectrum Sensing Station prototype was designed, implemented, and subsequently mounted on a vehicle. More than eight million spatio-temporally variant data samples were collected by scanning the UHF-TV spectrum of 500–698 MHz in the city of Windsor, ON, Canada. Analysis of the collected data showed that the proposed model achieves an accuracy improvement of about 9.6% compared to existing models, demonstrating that TVWS vary with spatial displacement and increasing significantly in the rural areas. Even in the most crowded spectrum zone, about 28% of the channels are identified as TVWS, and this number increases to a maximum of 60% in less crowded regions in urban areas. We conclude that the proposed model improves the TVWS detection compared with other used models, and also that the elements considered in this research contribute to reduce the complexity of the mathematical calculations while maintaining the accuracy. A low-cost open-source sensing station has been designed and tested, which represents an operative and useful data source in this setting.

Highlights

  • Technologies for data-centric wireless communications have experienced an incredible development in the last decade, resulting in huge demands for electromagnetic spectrum.Present spectrum scenarios show a peculiar characteristic, as some bands of the spectrum are extremely crowded, whereas some others are underused

  • We propose an accurate statistical model to identify the presence of Television White Spaces (TVWS) based on the False Alarm Probability (Pf a ) and on the Detection Probability (Pd )

  • In Lab, we found the existence of Primary Users (PU) in 23 channels, so it shows 72% of TV spectrum used and 28% idle spectrum

Read more

Summary

Introduction

Technologies for data-centric wireless communications have experienced an incredible development in the last decade, resulting in huge demands for electromagnetic spectrum. TV spectrum bands often show underutilization by PU and the use of TVWS in CR is a promising solution to spectrum scarcity. We propose an accurate statistical model to identify the presence of TVWS based on the False Alarm Probability (Pf a ) and on the Detection Probability (Pd ). These parameters are obtained by simultaneous sensing the noise intensity (W ( f )) and the signal of the PU (X ( f )) in the environmental spectrum.

Background
Cognitive Radio Fundamentals
TVWS Basics
Prototype Description
Proposed Probabilistic Model
Sensing the TV Signal and the Noise
Threshold Considerations
Working with Normal Distributions
Obtaining pdf and Performance Metrics
Calculation of Threshold T
Adaptive Threshold
Data Characteristics
Spectrum Sensed Results
Variability of the Sensed Signals
Results presentation
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.