A Novel Goodness of Fit Test Spectrum Sensing Using Extreme EigenvaluesInspec keywordsOther keywordsKey words

  • Li, He
  • Zhao, Wenjing
  • Liu, Chang
  • Jin, Minglu
  • Yoo, Sang-Jo
Citations

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3

초록

The existing Goodness of fit (GoF) test based spectrum sensing algorithms mostly use samples or energies as observations to make decisions, which can hardly achieve satisfactory performance especially when the Primary user (PU) signals are highly correlated. Meanwhile, the eigenvalue of covariance matrix can reflect signal correlations well. Motivated by this, we study the distribution of eigenvalue and propose an eigenvalue based GoF spectrum sensing algorithm. In the proposed scheme, we use the ratios of maximum to minimum eigenvalue as observations and thus it can bring performance improvements through capturing correlation of PU signals. We also provide the related theoretical analysis for the proposed method. Simulation results show that the proposed method overcomes the problem of noise uncertainty and achieves performance improvement over the classical samples-based GoF test.

키워드

correlation methodscovariance matriceseigenvalues and eigenfunctionsradio spectrum managementsignal denoisingsignal detectionsignal samplingeigenvalue based GoF spectrum sensing algorithmgoodness of fit test spectrum sensing algorithmGoF test based spectrum sensing algorithmprimary user signalcovariance matrix eigenvaluesignal correlationCognitive radiospectrum sensinggoodness of fit testeigenvalueCOGNITIVE RADIO NETWORKS
제목
A Novel Goodness of Fit Test Spectrum Sensing Using Extreme EigenvaluesInspec keywordsOther keywordsKey words
저자
Li, HeZhao, WenjingLiu, ChangJin, MingluYoo, Sang-Jo
DOI
10.1049/cje.2020.10.007
발행일
2020-11
유형
Article
저널명
Chinese Journal of Electronics
29
6
페이지
1201 ~ 1206