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Article Details

  • Article Code : FIRAT-AKADEMI-8413-3932
  • Article Type : Araştırma Makalesi
  • Publication Number : 1A0477
  • Page Number : 1-8
  • Doi : 10.12739/NWSA.2022.17.1.1A0477
  • Abstract Reading : 824
  • Download : 207
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Issue Details

  • Year : 2022
  • Volume : 17
  • Issue : 1
  • Number of Articles Published : 1
  • Published Date : 1.01.2022

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Engineering Sciences

Serial Number : 1A
ISSN No. : 1308-7231
Release Interval (in a Year) : 4 Issues

SPECTRUM SENSING ALGORITHM BASED ON SHAPIRO WILK TEST

Fatih Yavuz ILGIN1

In this study, spectrum algorithm based on Shapiro Wilk test is discussed and a spectrum detection method is proposed for Cognitive Radios with Shapiro Wilk test. In this method, it is tested whether the energy of the received signal has a Gauss distribution. Simulation studies were carried out with different parameters to evaluate the performance of the proposed detection method. It has been compared with the Energy detector in simulation studies. Under some conditions, the proposed method was found to be more successful than ED.

Keywords
Cognitive Radio, Normality Test, Shapiro Wilk Test, Spectrum Sensing, Spectrum Efficiency ,

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Authors

Fatih Yavuz ILGIN (1) (Corresponding Author)

Erzincan Binali Yildirim University
fyilgin@erzincan.edu.tr | 0000-0002-7449-4811

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References
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