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Extreme Eigenvalues-Based Detectors for Spectrum Sensing in Cognitive Radio Networks
- Zhao, Wenjing;
- Ali, Syed Sajjad;
- Jin, Minglu;
- Cui, Guolong;
- Zhao, Nan;
- ... Yoo, Sang-Jo
WEB OF SCIENCE
17SCOPUS
23초록
This paper focuses on the design of the optimal or near-optimal detector resorting to extreme eigenvalues. A general framework for detector design involving model-driven and data-driven approaches is introduced. Specifically, the extreme eigenvalues based likelihood ratio test (LRT) is derived via the model-driven approach. Merging the model-driven and datadriven approaches, the Naive Bayesian detector is proposed based on the extreme eigenvalues, which converts the design of test statistic into a two-class decision boundary construction problem, and a solution is provided by the Naive Bayesian classifier. To render the detectors more practical, two near-optimal detectors called alpha-sum and a-product of maximum and minimum eigenvalues (alpha-SMME, alpha-PMME) are further designed, in which alpha is a weight coefficient. Furthermore, the theoretical performance analysis of the alpha-SMME and alpha-PMME algorithms is provided, and the optimal weight selection is further obtained by solving an optimization problem under the Neyman-Pearson criterion. Finally, simulation experiments demonstrate that the proposed detectors achieve performance improvements over the state-of-the-art detectors using extreme eigenvalues, and almost coincide with the detection performance of the LRT detector.
키워드
- 제목
- Extreme Eigenvalues-Based Detectors for Spectrum Sensing in Cognitive Radio Networks
- 저자
- Zhao, Wenjing; Ali, Syed Sajjad; Jin, Minglu; Cui, Guolong; Zhao, Nan; Yoo, Sang-Jo
- 발행일
- 2022-01
- 유형
- Article
- 권
- 70
- 호
- 1
- 페이지
- 538 ~ 551