Cita:
A. Pries, D. Ramírez and P. J. Schreier, "LMPIT-Inspired Tests for Detecting a Cyclostationary Signal in Noise With Spatio–Temporal Structure," in IEEE Transactions on Wireless Communications, vol. 17, no. 9, pp. 6321-6334, Sept. 2018
ISSN:
1536-1276
DOI:
10.1109/TWC.2018.2859314
Patrocinador:
Comunidad de Madrid Ministerio de Economía y Competitividad (España)
Agradecimientos:
The work of A. Pries and P. J. Schreierwas supported by the German Research Foundation (DFG) under grant SCHR1384/6-1. The work of D. Ramírez has been partly supported by Ministerio de Economía of Spain under projects: OTOSIS (TEC2013-41718-R) and the COMONSENS Network (TEC2015-69648-REDC), by the Ministerio de Economía of Spain jointly with the European Commission (ERDF) under projects ADVENTURE (TEC2015-69868-C2-1-R) and CAIMAN(TEC2017-86921-C2-2-R), by the Comunidad de Madrid under projectCASI-CAM-CM (S2013/ICE-2845), and by the German Research Foun-dation (DFG) under Project RA 2662/2-1.
Proyecto:
Gobierno de España. TEC2013-41718-R Comunidad de Madrid. S2013/ICE-2845 Gobierno de España. TEC2015-69868-C2-1-R Gobierno de España. TEC2017-86921-C2-2-R
Palabras clave:
Cyclostationarity
,
Detection
,
Generalized likelihood ratio test (GLRT)
,
Interweave cognitive radio
,
Locally most powerful invariant test (LMPIT)
,
Spectrum sensing
In spectrum sensing for cognitive radio, the presence of a primary user can be detected by making use of the cyclostationarity property of digital communication signals. For the general scenario of a cyclostationary signal in temporally colored and spatially cIn spectrum sensing for cognitive radio, the presence of a primary user can be detected by making use of the cyclostationarity property of digital communication signals. For the general scenario of a cyclostationary signal in temporally colored and spatially correlated noise, it has previously been shown that an asymptotic generalized likelihood ratio test (GLRT) and locally most powerful invariant test (LMPIT) exist. In this paper, we derive detectors for the presence of a cyclostationary signal in various scenarios with structured noise. In particular, we consider noise that is temporally white and/or spatially uncorrelated. Detectors that make use of this additional information about the noise process have enhanced performance. We have previously derived GLRTs for these specific scenarios; here, we examine the existence of LMPITs. We show that these exist only for detecting the presence of a cyclostationary signal in spatially uncorrelated noise. For white noise, an LMPIT does not exist. Instead, we propose tests that approximate the LMPIT, and they are shown to perform well in simulations. Finally, if the noise structure is not known in advance, we also present hypothesis tests using our framework.[+][-]