1 / 35

Channel Sensing for Cognitive Radio

A discussion on channel sensing techniques. Channel Sensing for Cognitive Radio . By James Xu Supervised by Dr. Fakhrul Alam. Presentation overview. Introduction to wireless communications What is Cognitive Radio (CR)? Why do we need CR? What is channel sensing Our workbench setup

Jimmy
Download Presentation

Channel Sensing for Cognitive Radio

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. A discussion on channel sensing techniques Channel Sensingfor Cognitive Radio By James Xu Supervised by Dr. FakhrulAlam

  2. Presentation overview • Introduction to wireless communications • What is Cognitive Radio (CR)? • Why do we need CR? • What is channel sensing • Our workbench setup • Our research • Our major contributions • Conclusion

  3. Wireless communications

  4. What is Cognitive Radio (CR) • Able to sense spectral environment • Able to provide opportunistic access • Find gaps in the spectrum • Adjust system parameters to utilize it

  5. Why do we need CR? • Unlicensed spectrum is rare • Almost none available under 3GHz

  6. Why do we need CR? • Licensed to primary user only (Incumbent) • We are running out of space, and higher frequency has problems • We are under utilizing licensed space • CR is allowed usage (guarantee interference free)

  7. What is channel sensing • The first step of CR is to identify free spectrum • Channel sensing is one of the most fundamental part of CR

  8. What is channel sensing

  9. Our research • Our research focus • Energy detection • Cyclostationary feature extraction

  10. Our CR workbench

  11. Energy detection • Easy to implement • Fast • Not effective under low SNR

  12. What is energy detection? • All radio transmission have energy • Based on hypothesis testing

  13. Energy detector

  14. Energy detector

  15. Problems with the detector • Misdetection on Narrowband signals

  16. Problems with the detector • Misdetection on partial signals

  17. Adaptive energy detection • We proposed an improvement • Introduced adaptive detection

  18. Improved detection

  19. Adaptive ED characteristics

  20. Adaptive ED characteristics

  21. Cyclostationary Features • Another channel sensing strategy • Digital communication systems have built in periodicity • A signal is a first order cyclostationary if it’s mean is periodic • A signal is second order cyclostationary it it’s auto-correlation is periodic

  22. Cyclostationary Features • Auto-correlation how much a signal has in common with itself, against delay • Alpha = Cyclic frequency • S = Spectrum Correlation Function (SCF)

  23. Cyclostationary Features

  24. Work in Progress • This is preliminary, a proof of concept • Could be done in future research

  25. Our major contributions • Xu J. Y., Alam, F., Adaptive Energy Detection for Cognitive Radio: An Experimental Study, ICCIT, 2009 • IET PATW Competition, Regional winner • cr.jamesyxu.com • Svn://cr.jamesyxu.com/svn • CRLibs

  26. CRLibs • A library for cognitive radio research

  27. Conclusion • Workbench setup • Investigated various channel sensing techniques (ED, SCF, Spectral Entropy) • Proposed and implemented improvements (AED) • Consolidated library (CRLibs), examples and codebase (SVN) • Full progress documentation (SVN, CR)

  28. Acknowledgement • Dr FakhrulAlam • Dr James Chang • Dr Tom Moir • Everyone in our lab

  29. Thank you for listening • You are invited to visit our CR workbench at Building 80 • Much more details in the project report • Adaptive energy detection model will be on IEEEXplore end of December • Any questions?

More Related