1 / 15

Spectrum Sensing Marjan Hadian

Spectrum Sensing Marjan Hadian. Outline. Cognitive Cycle Enrgy Detection Matched filter cyclostationary feature detector Interference Temperature Spectral Estimation Hidden node problem Cooperative detection detection methods log-likelihood combining weighted gain combining.

sidonie
Télécharger la présentation

Spectrum Sensing Marjan Hadian

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. Spectrum Sensing Marjan Hadian

  2. Outline • Cognitive Cycle • Enrgy Detection • Matched filter • cyclostationary feature detector • Interference Temperature • Spectral Estimation • Hidden node problem • Cooperative detection • detection methods • log-likelihood combining • weighted gain combining

  3. Cognitive Cycle Mitola calls cognitive radio cycle: cognitive radio continually observes the environment, orients itself, creates plans, decides, and then acts

  4. Spectrum Sensing: A cognitive radio monitors the available spectral bands,captures their information, and detects the spectrum holes. • frequencies usage. • mode identification.

  5. Enrgy Detection Where T calculated from: most important problem of this, is which one called SNR wall. This problem comes from uncertainty. SNR wall is a minimum SNR below which signal cannot be detected and formulas no longer holds

  6. Matched filter it maximizes SNR. For implementation of matched filter cognitive radio has a priori knowledge of modulation type, pulse shaping. • cyclostationary feature detector The main advantage of the spectral correlation function is that it differentiates the noise energy from modulated signal energy.

  7. Interference Temperature As additional interfering signals appear the noise floor increases and then unlicensed devices could use that particular band as long as their energy is under mention noise floor where Joules per Kelvin

  8. Spectral Estimation • parametric spectral estimation • Non-parametric spectral estimation • Periodogram Spectral Estimator (PSE) • Blackman-Tukey Spectral Estimator (BTSE) • Minimum Variance Spectral Estimator (MVSE) • Multi taper Method (MTM) • Filter Bank Spectral Estimator (FBSE)

  9. Hidden node problem Traditional detection problem: (a) Receiver uncertainty and (b) shadowing uncertainty[5]

  10. Cooperative detection • prevent the hidden terminal problem also mitigate the multipath fading and shadowing effect • Information from multiple SUs are incorporated for primary user detection. • Implementation • Centralized manner • distributed manner

  11. How SU provide its observation to other nodes?! • This transmission can overlap to the air interfaces already present in the environment, so it can change the nature of observations and make new problems. In order to solve this problem several solutions suggested : • two distinct networks are deployed separately the sensor network for cooperative spectrum sensing and the operational network for data transmission. This method implemented in central manner[5] • Sharing the analysis model in an off-line method when in the environment no SUs is observing the radio scene[1]

  12. Without consideration of exchanging method, we assume that the observation of SU i is due to its position and to the state of radio source, but not to the observation of other SU j and .Thus we assume that, independent measurements for each SUs is presented either in a centralized or distributed manner. Now we review two detection methods: • log-likelihood combining • weighted gain combining

  13. log-likelihood combining Assume that is the vector of SUs energy detector output, then we can write likelihood ratio test(LRT) as: • weighted gain combining: where and

  14. Thanks for your attention. Questions?

More Related