Online detection and SNR estimation in cooperative spectrum sensing
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Pérez Arriaga, Jesús


Fecha
2022-04Derechos
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Publicado en
IEEE Transactions on Wireless Communications, 2022, 21(4), 2521-2533
Editorial
Institute of Electrical and Electronics Engineers Inc.
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Palabras clave
Cooperative spectrum sensing
Energy detection
Expectation-maximization (EM) algorithms
Maximum likelihood
Probabilistic mixture models
Resumen/Abstract
ABSTRACT: Cooperative spectrum sensing has proved to be an effective method to improve the detection performance in cognitive radio systems. This work focuses on centralized cooperative schemes based on the soft fusion of the energy measurements at the cognitive radios (CRs). In these systems, the likelihood ratio test (LRT) is the optimal detection rule, but the sufficient statistic depends on the local signal-to-noise ratio (SNR) at the CRs, which are unknown in most practical cases. Therefore, the detection problem becomes a composite hypothesis test. The generalized LRT is the most popular approach in those cases. Unfortunately, in mobile environments, its performance is well below the LRT because the local energies are measured under varying SNRs. In this work, we present a new algorithm that jointly estimates the instantaneous SNRs and detects the presence of primary signals. Due to its adaptive nature, the algorithm is well suited for mobile scenarios where the local SNRs are time-varying. Simulation results show that its detection performance is close to the LRT in realistic conditions.
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