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A robust power spectrum split cancellation-based spectrum sensing method for cognitive radio systems |
Qi Pei-Han (齐佩汉), Li Zan (李赞), Si Jiang-Bo (司江勃), Gao Rui (高锐) |
State Key Laboratory of Integrated Service Networks, Xidian University, Xi'an 710071, China |
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Abstract Spectrum sensing is an essential component to realize the cognitive radio, and the requirement for real-time spectrum sensing in the case of lacking prior information, fading channel, and noise uncertainty, indeed poses a major challenge to the classical spectrum sensing algorithms. Based on the stochastic properties of scalar transformation of power spectral density (PSD), a novel spectrum sensing algorithm, referred to as the power spectral density split cancellation method (PSC), is proposed in this paper. The PSC makes use of a scalar value as a test statistic, which is the ratio of each subband power to the full band power. Besides, by exploiting the asymptotic normality and independence of Fourier transform, the distribution of the ratio and the mathematical expressions for the probabilities of false alarm and detection in different channel models are derived. Further, the exact closed-form expression of decision threshold is calculated in accordance with Neyman–Pearson criterion. Analytical and simulation results show that the PSC is invulnerable to noise uncertainty, and can achive excellent detection performance without prior knowledge in additive white Gaussian noise and flat slow fading channels. In addition, the PSC benefits from a low computational cost, which can be completed in microseconds.
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Received: 17 April 2014
Revised: 26 June 2014
Accepted manuscript online:
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PACS:
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84.40.Ua
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(Telecommunications: signal transmission and processing; communication satellites)
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Fund: Project supported by the National Natural Science Foundation of China (Grant No. 61301179), the Doctorial Program Foundation of the Ministry of Education, China (Grant No. 20110203110011), and the 111 Project, China (Grant No. B08038). |
Corresponding Authors:
Qi Pei-Han
E-mail: qipeihan@126.com
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Cite this article:
Qi Pei-Han (齐佩汉), Li Zan (李赞), Si Jiang-Bo (司江勃), Gao Rui (高锐) A robust power spectrum split cancellation-based spectrum sensing method for cognitive radio systems 2014 Chin. Phys. B 23 128401
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