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Two-Stage Spectrum Sensing for Cognitive Radio Using Eigenvalues Detection

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  • Faten Mashta

    (Higher Institute for Applied Sciences and Technology, Syria)

  • Wissam Altabban

    (Higher Institute for Applied Sciences and Technology, Syria)

  • Mohieddin Wainakh

    (Higher Institute for Applied Sciences and Technology, Syria)

Abstract

Spectrum sensing in cognitive radio has difficult and complex requirements, requiring speed and good detection performance at low SNR ratios. As suggested in IEEE 802.22, the primary user signal needs to be detected at SNR = -21dB with a probability of detection exceeds 0.9. Conventional spectrum sensing methods such as the energy detector, which is characterized by simplicity with good detection performance at high SNR values, are ineffective at low SNR values, whereas eigenvalues detection methods have good detection performance at low SNR ratios, but they have high complexity. In this paper, the authors investigate the process of spectrum sensing in two stages: in the first stage (coarse sensing), the energy detector is adopted, while in the second stage (fine sensing), eigenvalues detection methods are used. This method improves performance in terms of probability of detection and computational complexity, as the authors compared the performance of two-stage sensing scheme with ones where only energy detection or eigenvalues detection is performed.

Suggested Citation

  • Faten Mashta & Wissam Altabban & Mohieddin Wainakh, 2020. "Two-Stage Spectrum Sensing for Cognitive Radio Using Eigenvalues Detection," International Journal of Interdisciplinary Telecommunications and Networking (IJITN), IGI Global, vol. 12(4), pages 18-36, October.
  • Handle: RePEc:igg:jitn00:v:12:y:2020:i:4:p:18-36
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